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<h1 class="title not-for-contents"><a class="title_link" href="/">ClickHouse</a></h1>
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<h2 class="subtitle not-for-contents">Reference Manual</h2>
<div class="signature"> — Alexey Milovidov</div>
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</div>

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<div class="island">
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<h1>Contents</h1>
<br />
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<div id="contents"></div>
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</div>

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<div class="island">
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<h1>Introduction</h1>
</div>

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<div class="island content">
==What is ClickHouse?==
ClickHouse is a columnar DBMS for OLAP.

In a &quot;normal&quot; row-oriented DBMS, data is stored in this order:

%%
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5123456789123456789     1       Eurobasket - Greece - Bosnia and Herzegovina - example.com      1       2011-09-01 01:03:02     6274717   1294101174      11409   612345678912345678      0       33      6       http://www.example.com/basketball/team/123/match/456789.html http://www.example.com/basketball/team/123/match/987654.html       0       1366    768     32      10      3183      0       0       13      0\0     1       1       0       0                       2011142 -1      0               0       01321     613     660     2011-09-01 08:01:17     0       0       0       0       utf-8   1466    0       0       0       5678901234567890123               277789954       0       0       0       0       0
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5234985259563631958     0       Consulting, Tax assessment, Accounting, Law       1       2011-09-01 01:03:02     6320881   2111222333      213     6458937489576391093     0       3       2       http://www.example.ru/         0       800     600       16      10      2       153.1   0       0       10      63      1       1       0       0                       2111678 000       0       588     368     240     2011-09-01 01:03:17     4       0       60310   0       windows-1251    1466    0       000               778899001       0       0       0       0       0
...
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%%

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In other words, all the values related to a row are stored next to each other. Examples of a row-oriented DBMS are MySQL, Postgres, MS SQL Server, and others.
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In a column-oriented DBMS, data is stored like this:
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<pre class="text-example" style="white-space: pre; overflow-x: hidden">
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<b>WatchID:</b>    5385521489354350662     5385521490329509958     5385521489953706054     5385521490476781638     5385521490583269446     5385521490218868806     5385521491437850694   5385521491090174022      5385521490792669254     5385521490420695110     5385521491532181574     5385521491559694406     5385521491459625030     5385521492275175494   5385521492781318214      5385521492710027334     5385521492955615302     5385521493708759110     5385521494506434630     5385521493104611398
<b>JavaEnable:</b> 1       0       1       0       0       0       1       0       1       1       1       1       1       1       0       1       0       0       1       1
<b>Title:</b>      Yandex  Announcements - Investor Relations - Yandex     Yandex — Contact us — Moscow    Yandex — Mission        Ru      Yandex — History — History of Yandex    Yandex Financial Releases - Investor Relations - Yandex Yandex — Locations      Yandex Board of Directors - Corporate Governance - Yandex       Yandex — Technologies
<b>GoodEvent:</b>  1       1       1       1       1       1       1       1       1       1       1       1       1       1       1       1       1       1       1       1
<b>EventTime:</b>  2016-05-18 05:19:20     2016-05-18 08:10:20     2016-05-18 07:38:00     2016-05-18 01:13:08     2016-05-18 00:04:06     2016-05-18 04:21:30     2016-05-18 00:34:16     2016-05-18 07:35:49     2016-05-18 11:41:59     2016-05-18 01:13:32
...
</pre>

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These examples only show the order that data is arranged in.
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The values from different columns are stored separately, and data from the same column is stored together.
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Examples of a column-oriented DBMS: Vertica, Paraccel (Actian Matrix) (Amazon Redshift), Sybase IQ, Exasol, Infobright, InfiniDB, MonetDB (VectorWise) (Actian Vector), LucidDB, SAP HANA, Google Dremel, Google PowerDrill, Druid, kdb+ and others.
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Different orders for storing data are better suited to different scenarios.
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The data access scenario refers to what queries are made, how often, and in what proportion; how much data is read for each type of query - rows, columns, and bytes; the relationship between reading and updating data; the working size of the data and how locally it is used; whether transactions are used, and how isolated they are; requirements for data replication and logical integrity; requirements for latency and throughput for each type of query, and so on.
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The higher the load on the system, the more important it is to customize the system to the scenario, and the more specific this customization becomes. There is no system that is equally well-suited to significantly different scenarios. If a system is adaptable to a wide set of scenarios, under a high load, the system will handle all the scenarios equally poorly, or will work well for just one of the scenarios.

We&#39;ll say that the following is true for the OLAP (online analytical processing) scenario:
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- The vast majority of requests are for read access.
- Data is updated in fairly large batches (> 1000 rows), not by single rows; or it is not updated at all.
- Data is added to the DB but is not modified.
- For reads, quite a large number of rows are extracted from the DB, but only a small subset of columns.
- Tables are &quot;wide,&quot; meaning they contain a large number of columns.
- Queries are relatively rare (usually hundreds of queries per server or less per second).
- For simple queries, latencies around 50 ms are allowed.
- Column values are fairly small -  numbers and short strings (for example, 60 bytes per URL).
- Requires high throughput when processing a single query (up to billions of rows per second per server).
- There are no transactions.
- Low requirements for data consistency.
- There is one large table per query. All tables are small, except for one.
- A query result is significantly smaller than the source data. That is, data is filtered or aggregated. The result fits in a single server&#39;s RAM.
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It is easy to see that the OLAP scenario is very different from other popular scenarios (such as OLTP or Key-Value access). So it doesn&#39;t make sense to try to use OLTP or a Key-Value DB for processing analytical queries if you want to get decent performance. For example, if you try to use MongoDB or Elliptics for analytics, you will get very poor performance compared to OLAP databases.

Columnar-oriented databases are better suited to OLAP scenarios (at least 100 times better in processing speed for most queries), for the following reasons:

1. For I/O.
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1.1. For an analytical query, only a small number of table columns need to be read. In a column-oriented database, you can read just the data you need. For example, if you need 5 columns out of 100, you can expect a 20-fold reduction in I/O.
1.2. Since data is read in packets, it is easier to compress. Data in columns is also easier to compress. This further reduces the I/O volume.
1.3. Due to the reduced I/O, more data fits in the system cache.
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For example, the query &quot;count the number of records for each advertising platform&quot; requires reading one &quot;advertising platform ID&quot; column, which takes up 1 byte uncompressed. If most of the traffic was not from advertising platforms, you can expect at least 10-fold compression of this column. When using a quick compression algorithm, data decompression is possible at a speed of at least several gigabytes of uncompressed data per second. In other words, this query can be processed at a speed of approximately several billion rows per second on a single server. This speed is actually achieved in practice.

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<pre class="terminal show-example">
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milovidov@████████.yandex.ru:~$ clickhouse-client
ClickHouse client version 0.0.52053.
Connecting to localhost:9000.
Connected to ClickHouse server version 0.0.52053.

:) SELECT CounterID, count() FROM hits GROUP BY CounterID ORDER BY count() DESC LIMIT 20

SELECT
    CounterID,
    count()
FROM hits
GROUP BY CounterID
ORDER BY count() DESC
LIMIT 20

┌─CounterID─┬──count()─┐
│    114208 │ 56057344 │
│    115080 │ 51619590 │
│      3228 │ 44658301 │
│     38230 │ 42045932 │
│    145263 │ 42042158 │
│     91244 │ 38297270 │
│    154139 │ 26647572 │
│    150748 │ 24112755 │
│    242232 │ 21302571 │
│    338158 │ 13507087 │
│     62180 │ 12229491 │
│     82264 │ 12187441 │
│    232261 │ 12148031 │
│    146272 │ 11438516 │
│    168777 │ 11403636 │
│   4120072 │ 11227824 │
│  10938808 │ 10519739 │
│     74088 │  9047015 │
│    115079 │  8837972 │
│    337234 │  8205961 │
└───────────┴──────────┘

20 rows in set. Elapsed: 0.153 sec. Processed 1.00 billion rows, 4.00 GB (6.53 billion rows/s., 26.10 GB/s.)

:)
</pre>

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2. For CPU.
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Since executing a query requires processing a large number of rows, it helps to dispatch all operations for entire vectors instead of for separate rows, or to implement the query engine so that there is almost no dispatching cost. If you don&#39;t do this, with any half-decent disk subsystem, the query interpreter inevitably stalls the CPU.
It makes sense to both store data in columns and process it, when possible, by columns.
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There are two ways to do this:
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1. A vector engine. All operations are written for vectors, instead of for separate values. This means you don&#39;t need to call operations very often, and dispatching costs are negligible. Operation code contains an optimized internal cycle.
2. Code generation. The code generated for the query has all the indirect calls in it.

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This is not done in &quot;normal&quot; databases, because it doesn&#39;t make sense when running simple queries. However, there are exceptions. For example, MemSQL uses code generation to reduce latency when processing SQL queries. (For comparison, analytical DBMSs require optimization of throughput, not latency.)
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Note that for CPU efficiency, the query language must be declarative (SQL or MDX), or at least a vector (J, K). The query should only contain implicit loops, allowing for optimization.


==Distinctive features of ClickHouse==

1. True column-oriented DBMS.
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2. Data compression.
3. Disk storage of data.
4. Parallel processing on multiple cores.
5. Distributed processing on multiple servers.
6. SQL support.
7. Vector engine.
8. Real-time data updates.
9. Indexes.
10. Suitable for online queries.
11. Support for approximated calculations.
12. Support for nested data structures. Support for arrays as data types.
13. Support for restrictions on query complexity, along with quotas.
14. Data replication and support for data integrity on replicas.

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Let&#39;s look at some of these features in detail.
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<h3 class="not-for-contents">1. True column-oriented DBMS.</h3>
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In a true column-oriented DBMS, there isn&#39;t any &quot;garbage&quot; stored with the values. For example, constant-length values must be supported, to avoid storing their length &quot;number&quot; next to the values. As an example, a billion UInt8-type values should actually consume around 1 GB uncompressed, or this will strongly affect the CPU use. It is very important to store data compactly (without any &quot;garbage&quot;) even when uncompressed, since the speed of decompression (CPU usage) depends mainly on the volume of uncompressed data.
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This is worth noting because there are systems that can store values of separate columns separately, but that can&#39;t effectively process analytical queries due to their optimization for other scenarios. Example are HBase, BigTable, Cassandra, and HyperTable. In these systems, you will get throughput around a hundred thousand rows per second, but not hundreds of millions of rows per second.
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Also note that ClickHouse is a DBMS, not a single database. ClickHouse allows creating tables and databases in runtime, loading data, and running queries without reconfiguring and restarting the server.
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<h3 class="not-for-contents">2. Data compression.</h3>
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Some column-oriented DBMSs (InfiniDB CE and MonetDB) do not use data compression. However, data compression really improves performance.
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<h3 class="not-for-contents">3. Disk storage of data.</h3>
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Many column-oriented DBMSs (SAP HANA, and Google PowerDrill) can only work in RAM. But even on thousands of servers, the RAM is too small for storing all the pageviews and sessions in Yandex.Metrica.
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<h3 class="not-for-contents">4. Parallel processing on multiple cores.</h3>
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Large queries are parallelized in a natural way.
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<h3 class="not-for-contents">5. Distributed processing on multiple servers.</h3>
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Almost none of the columnar DBMSs listed above have support for distributed processing.
In ClickHouse, data can reside on different shards. Each shard can be a group of replicas that are used for fault tolerance. The query is processed on all the shards in parallel. This is transparent for the user.
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<h3 class="not-for-contents">6. SQL support.</h3>
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If you are familiar with standard SQL, we can&#39;t really talk about SQL support.
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NULLs are not supported. All the functions have different names. However, this is a declarative query language based on SQL that can&#39;t be differentiated from SQL in many instances.
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JOINs are supported. Subqueries are supported in FROM, IN, JOIN clauses; and scalar subqueries.
Correllated subqueries are not supported.
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<h3 class="not-for-contents">7. Vector engine.</h3>
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Data is not only stored by columns, but is processed by vectors - parts of columns. This allows us to achieve high CPU performance.
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<h3 class="not-for-contents">8. Real-time data updates.</h3>
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ClickHouse supports primary key tables. In order to quickly perform queries on the range of the primary key, the data is sorted incrementally using the merge tree. Due to this, data can continually be added to the table. There is no locking when adding data.
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<h3 class="not-for-contents">9. Indexes.</h3>
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Having a primary key allows, for example, extracting data for specific clients (Metrica counters) for a specific time range, with low latency less than several dozen milliseconds.
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<h3 class="not-for-contents">10. Suitable for online queries.</h3>
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This lets us use the system as the back-end for a web interface. Low latency means queries can be processed without delay, while the Yandex.Metrica interface page is loading (in online mode).
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<h3 class="not-for-contents">11. Support for approximated calculations.</h3>
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1. The system contains aggregate functions for approximated calculation of the number of various values, medians, and quantiles.
2. Supports running a query based on a part (sample) of data and getting an approximated result. In this case, proportionally less data is retrieved from the disk.
3. Supports running an aggregation for a limited number of random keys, instead of for all keys. Under certain conditions for key distribution in the data, this provides a reasonably accurate result while using fewer resources.
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<h3 class="not-for-contents">14. Data replication and support for data integrity on replicas.</h3>
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Uses asynchronous multimaster replication. After being written to any available replica, data is distributed to all the remaining replicas. The system maintains identical data on different replicas. Data is restored automatically after a failure, or using a &quot;button&quot; for complex cases.
For more information, see the section &quot;Data replication&quot;.
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==ClickHouse features that can be considered disadvantages==
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1. No transactions.
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2. For aggregation, query results must fit in the RAM on a single server. However, the volume of source data for a query may be indefinitely large.
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3. Lack of full-fledged UPDATE/DELETE implementation.
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==The Yandex.Metrica task==
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We need to get custom reports based on hits and sessions, with custom segments set by the user. Data for the reports is updated in real-time. Queries must be run immediately (in online mode). We must be able to build reports for any time period. Complex aggregates must be calculated, such as the number of unique visitors.
At this time (April 2014), Yandex.Metrica receives approximately 12 billion events (pageviews and mouse clicks) daily. All these events must be stored in order to build custom reports. A single query may require scanning hundreds of millions of rows over a few seconds, or millions of rows in no more than a few hundred milliseconds.
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===Aggregated and non-aggregated data===
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There is a popular opinion that in order to effectively calculate statistics, you must aggregate data, since this reduces the volume of data.
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But data aggregation is a very limited solution, for the following reasons:
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- You must have a pre-defined list of reports the user will need. The user can&#39;t make custom reports.
- When aggregating a large quantity of keys, the volume of data is not reduced, and aggregation is useless.
- For a large number of reports, there are too many aggregation variations (combinatorial explosion).
- When aggregating keys with high cardinality (such as URLs), the volume of data is not reduced by much (less than twofold). For this reason, the volume of data with aggregation might grow instead of shrink.
- Users will not view all the reports we calculate for them. A large portion of calculations are useless.
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- The logical integrity of data may be violated for various aggregations.
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If we do not aggregate anything and work with non-aggregated data, this might actually reduce the volume of calculations.
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However, with aggregation, a significant part of the work is taken offline and completed relatively calmly. In contrast, online calculations require calculating as fast as possible, since the user is waiting for the result.
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Yandex.Metrica has a specialized system for aggregating data called Metrage, which is used for the majority of reports. Starting in 2009, Yandex.Metrica also used a specialized OLAP database for non-aggregated data called OLAPServer, which was previously used for the report builder. OLAPServer worked well for non-aggregated data, but it had many restrictions that did not allow it to be used for all reports as desired. These included the lack of support for data types (only numbers), and the inability to incrementally update data in real-time (it could only be done by rewriting data daily). OLAPServer is not a DBMS, but a specialized DB.
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To remove the limitations of OLAPServer and solve the problem of working with non-aggregated data for all reports, we developed the ClickHouse DBMS.
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==Usage in Yandex.Metrica and other Yandex services==
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ClickHouse is used for multiple purposes in Yandex.Metrica. Its main task is to build reports in online mode using non-aggregated data. It uses a cluster of 374 servers, which store over 8 trillion rows (more than a quadrillion values) in the database. The volume of compressed data, without counting duplication and replication, is about 800 TB. The volume of uncompressed data (in TSV format) would be approximately 7 PB.
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ClickHouse is also used for:
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- Storing WebVisor data.
- Processing intermediate data.
- Building global reports with Analytics.
- Running queries for debugging the Metrica engine.
- Analyzing logs from the API and the user interface.


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ClickHouse has at least a dozen installations in other Yandex services: in search verticals, Market, Direct, business analytics, mobile development, AdFox, personal services, and others.
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==Possible counterparts==
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There are no analogs to ClickHouse available.
At this time (May 2016), there aren&#39;t any available open-source and free systems that have all the features listed above. However, these features are absolutely necessary for Yandex.Metrica.
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==Possible silly questions==

<h3 class="not-for-contents">1. Why not to use systems like map-reduce?</h3>

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Systems like map-reduce are distributed computing systems, where the reduce phase is performed using distributed sorting.
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Regading this aspect, map-reduce is similar to other systems like YAMR, <a href="http://hadoop.apache.org/">Hadoop</a>, <a href="https://yandexdataschool.ru/about/conference/program/babenko">YT</a>.
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These systems are not suitable for online queries because of latency, So they can't be used in backend-level for web interface.
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Systems like this also are not suitable for realtime updates.
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Distributed sorting is not optimal solution for reduce operations, if the result of the operation and all intermediate results, shall they exist, fit in operational memory of a single server, as usually happens in case of online analytical queries.
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In this case the optimal way to perform reduce operations is by using a hash-table. A common optimization method for map-reduce tasks is combine operation (partial reduce) which uses hash-tables in memory. This optimization is done by the user manually.
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Distributed sorting is the main reason for long latencies of simple map-reduce jobs.

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Systems similar to map-reduce enable running any code on the cluster. But for OLAP use-cases declerative query languages are better suited as they allow to carry out investigations faster. For example, for Hadoop there are <a href="https://hive.apache.org/">Hive</a> and <a href="https://pig.apache.org/">Pig</a>. There are others: <a href="http://impala.io/">Cloudera Impala</a>, <a href="http://shark.cs.berkeley.edu/">Shark (depricated)</a> and <a href="http://spark.apache.org/sql/">Spark SQL</a> for <a href="http://spark.apache.org/">Spark</a>, <a href="https://prestodb.io/">Presto</a>, <a href="https://drill.apache.org/">Apache Drill</a>.
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However, performance of such tasks is highly sub-optimal compared to the performance of specialized systems and relatively high latency does not allow the use of these systems as a backend for the web interface.
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YT allows you to store separate groups of columns. But YT is not a truly columnar storage system, as the system has no fixed length data types (so you can efficiently store a number without "garbage"), and there is no vector engine. Tasks in YT are performed by arbitrary code in streaming mode, so can not be suficiently optimized (up to hundreds of millions of lines per second per server). In 2014-2016 YT is to develop "dynamic table sorting" functionality  using Merge Tree, strongly typed values ​​and SQL-like language support. Dynamicly sorted tables are not suited for OLAP tasks, since the data is stored in rows. Query language development in YT is still in incubating phase, which does not allow it to focus on this functionality. YT developers are considering dynamicly sorted tables for use in OLTP and Key-Value scenarios.
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==Performance==
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According to internal testing results, ClickHouse shows the best performance for comparable operating scenarios among systems of its class that were available for testing. This includes the highest throughput for long queries, and the lowest latency on short queries. Testing results are shown <a href="benchmark.html">on this page</a>.
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===Throughput for a single large query===
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Throughput can be measured in rows per second or in megabytes per second. If the data is placed in the page cache, a query that is not too complex is processed on modern hardware at a speed of approximately 2-10 GB/s of uncompressed data on a single server (for the simplest cases, the speed may reach 30 GB/s). If data is not placed in the page cache, the speed depends on the disk subsystem and the data compression rate. For example, if the disk subsystem allows reading data at 400 MB/s, and the data compression rate is 3, the speed will be around 1.2 GB/s. To get the speed in rows per second, divide the speed in bytes per second by the total size of the columns used in the query. For example, if 10 bytes of columns are extracted, the speed will be around 100-200 million rows per second.
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The processing speed increases almost linearly for distributed processing, but only if the number of rows resulting from aggregation or sorting is not too large.
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===Latency when processing short queries.===
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If a query uses a primary key and does not select too many rows to process (hundreds of thousands), and does not use too many columns, we can expect less than 50 milliseconds of latency (single digits of milliseconds in the best case) if data is placed in the page cache. Otherwise, latency is calculated from the number of seeks. If you use rotating drives, for a system that is not overloaded, the latency is calculated by this formula: seek time (10 ms) * number of columns queried * number of data parts.
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===Throughput when processing a large quantity of short queries.===
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Under the same conditions, ClickHouse can handle several hundred queries per second on a single server (up to several thousand in the best case). Since this scenario is not typical for analytical DBMSs, we recommend expecting a maximum of 100 queries per second.

===Performance on data insertion.===

We recommend inserting data in packets of at least 1000 rows, or no more than a single request per second. When inserting to a MergeTree table from a tab-separated dump, the insertion speed will be from 50 to 200 MB/s. If the inserted rows are around 1 Kb in size, the speed will be from 50,000 to 200,000 rows per second. If the rows are small, the performance will be higher in rows per second (on Yandex Banner System data -> 500,000 rows per second, on Graphite data -> 1,000,000 rows per second). To improve performance, you can make multiple INSERT queries in parallel, and performance will increase linearly.
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</div>

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<div class="island">
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<h1>Getting started</h1>
</div>

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<div class="island content">
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==System requirements==
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This is not a cross-platform system. It requires Linux Ubuntu Precise (12.04) or newer, x86_64 architecture with SSE 4.2 instruction set.
401
To test for SSE 4.2 support, do
402
%%grep -q sse4_2 /proc/cpuinfo &amp;&amp; echo "SSE 4.2 supported" || echo "SSE 4.2 not supported"%%
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We recommend using Ubuntu Trusty or Ubuntu Precise.
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The terminal must use UTF-8 encoding (the default in Ubuntu).
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==Installation==
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For testing and development, the system can be installed on a single server or on a desktop computer.
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===Installing from packages===
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In %%/etc/apt/sources.list%% (or in a separate %%/etc/apt/sources.list.d/clickhouse.list%% file), add the repository:
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On Ubuntu Trusty (14.04):
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%%
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deb http://repo.yandex.ru/clickhouse/trusty stable main
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%%
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On Ubuntu Precise (12.04):
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%%
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deb http://repo.yandex.ru/clickhouse/precise stable main
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%%
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Then run:
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%%
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sudo apt-key adv --keyserver keyserver.ubuntu.com --recv E0C56BD4    # optional
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sudo apt-get update
sudo apt-get install clickhouse-client clickhouse-server-common
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%%
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You can also download and install packages manually from here:
<a href="http://repo.yandex.ru/clickhouse/trusty/pool/main/c/clickhouse/">http://repo.yandex.ru/clickhouse/trusty/pool/main/c/clickhouse/</a>,
<a href="http://repo.yandex.ru/clickhouse/precise/pool/main/c/clickhouse/">http://repo.yandex.ru/clickhouse/precise/pool/main/c/clickhouse/</a>.
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ClickHouse contains access restriction settings. They are located in the &#39;users.xml&#39; file (next to &#39;config.xml&#39;).
By default, access is allowed from everywhere for the default user without a password. See &#39;user/default/networks&#39;. For more information, see the section &quot;Configuration files&quot;.
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Oleg Komarov 已提交
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===Installing from source===
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Build following the instructions in <a href="https://github.com/yandex/ClickHouse/blob/master/doc/build.md">build.md</a>
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You can compile packages and install them. You can also use programs without installing packages.
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Client: src/dbms/src/Client/
Server: src/dbms/src/Server/
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For the server, create a catalog with data, such as:
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%%
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/opt/clickhouse/data/default/
/opt/clickhouse/metadata/default/
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%%
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(Configured in the server config.)
Run &#39;chown&#39; for the desired user.
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Note the path to logs in the server config (src/dbms/src/Server/config.xml).
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===Launch===
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To start the server (as a daemon), run:
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<pre class="terminal">
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sudo service clickhouse-server start
</pre>

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View the logs in the catalog
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%%
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/var/log/clickhouse-server/
479
%%
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If the server doesn&#39;t start, check the configurations in the file
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%%
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/etc/clickhouse-server/config.xml
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%%
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You can also launch the server from the console:
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<pre class="terminal">
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clickhouse-server --config-file=/etc/clickhouse-server/config.xml
</pre>

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In this case, the log will be printed to the console, which is convenient during development. If the configuration file is in the current directory, you don&#39;t need to specify the &#39;--config-file&#39; parameter. By default, it uses &#39;./config.xml&#39;.
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You can use the command-line client to connect to the server:
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<pre class="terminal">
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clickhouse-client
</pre>

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The default parameters indicate connecting with localhost:9000 on behalf of the user &#39;default&#39; without a password.
The client can be used for connecting to a remote server. For example:
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<pre class="terminal">
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clickhouse-client --host=example.com
</pre>

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For more information, see the section &quot;Command-line client&quot;.
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Checking the system:
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<pre class="terminal">
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milovidov@milovidov-Latitude-E6320:~/work/metrica/src/dbms/src/Client$ ./clickhouse-client
ClickHouse client version 0.0.18749.
Connecting to localhost:9000.
Connected to ClickHouse server version 0.0.18749.

:) SELECT 1

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<i class="c15">SELECT</i> 1
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┌─<i class="c15">1</i>─┐
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│ 1 │
└───┘

1 rows in set. Elapsed: 0.003 sec.

:)
</pre>

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Congratulations, it works!
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==Test data==
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If you are Yandex employee, you can use Yandex.Metrica test data to explore the system&#39;s capabilities. You can find instructions for using the test data <a href="https://github.yandex-team.ru/Metrika/ClickHouse_private/tree/master/tests">here</a>.
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Otherwise, you could use one of available public datasets, described <a href="https://github.com/yandex/ClickHouse/tree/master/doc/example_datasets">here</a>.
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==If you have questions==

If you are Yandex employee, use internal ClickHouse maillist.
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You can subscribe to this list to get announcements, information on new developments, and questions that other users have.
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Otherwise, you could ask questions on <a href="https://stackoverflow.com/">Stackoverflow</a> with 'clickhouse' tag; discuss in <a href="https://groups.google.com/group/clickhouse">Google Groups</a>; or send private message to developers to address <a href="mailto:clickhouse-feedback@yandex-team.com">clickhouse-feedback@yandex-team.com</a>.
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</div>
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<div class="island">
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<h1>Interfaces</h1>
</div>

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<div class="island content">
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To explore the system&#39;s capabilities, download data to tables, or make manual queries, use the clickhouse-client program.
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==HTTP interface==
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The HTTP interface lets you use ClickHouse on any platform from any programming language. We use it for working from Java and Perl, as well as shell scripts. In other departments, the HTTP interface is used from Perl, Python, and Go. The HTTP interface is more limited than the native interface, but it has better compatibility.
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By default, clickhouse-server listens for HTTP on port 8123 (this can be changed in the config).
If you make a GET / request without parameters, it returns the string &quot;Ok&quot; (with a line break at the end). You can use this in health-check scripts.
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<pre class="terminal">
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$ curl &#39;http://localhost:8123/&#39;
Ok.
</pre>

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Send the request as a URL &#39;query&#39; parameter, or as a POST. Or send the beginning of the request in the &#39;query&#39; parameter, and the rest in the POST (we&#39;ll explain later why this is necessary).
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If successful, you receive the 200 response code and the result in the response body.
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If an error occurs, you receive the 500 response code and an error description text in the response body.
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When using the GET method, &#39;readonly&#39; is set. In other words, for queries that modify data, you can only use the POST method. You can send the query itself either in the POST body, or in the URL parameter.
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Examples:
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<pre class="terminal">
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$ curl &#39;http://localhost:8123/?query=SELECT%201&#39;
1

$ wget -O- -q &#39;http://localhost:8123/?query=SELECT 1&#39;
1

$ GET &#39;http://localhost:8123/?query=SELECT 1&#39;
1

$ echo -ne &#39;GET /?query=SELECT%201 HTTP/1.0\r\n\r\n&#39; | nc localhost 8123
HTTP/1.0 200 OK
Connection: Close
Date: Fri, 16 Nov 2012 19:21:50 GMT

1
</pre>

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As you can see, curl is not very convenient because spaces have to be URL-escaped. Although wget escapes everything on its own, we don&#39;t recommend it because it doesn&#39;t work well over HTTP 1.1 when using keep-alive and Transfer-Encoding: chunked.
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<pre class="terminal">
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$ echo &#39;SELECT 1&#39; | curl &#39;http://localhost:8123/&#39; --data-binary @-
1

$ echo &#39;SELECT 1&#39; | curl &#39;http://localhost:8123/?query=&#39; --data-binary @-
1

$ echo &#39;1&#39; | curl &#39;http://localhost:8123/?query=SELECT&#39; --data-binary @-
1
</pre>

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If part of the query is sent in the parameter, and part in the POST, a line break is inserted between these two data parts.
Example (this won&#39;t work):
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<pre class="terminal">
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$ echo &#39;ECT 1&#39; | curl &#39;http://localhost:8123/?query=SEL&#39; --data-binary @-
Code: 59, e.displayText() = DB::Exception: Syntax error: failed at position 0: SEL
ECT 1
, expected One of: SHOW TABLES, SHOW DATABASES, SELECT, INSERT, CREATE, ATTACH, RENAME, DROP, DETACH, USE, SET, OPTIMIZE., e.what() = DB::Exception
</pre>

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By default, data is returned in TabSeparated format (for more information, see the &quot;Formats&quot; section).
You use the FORMAT clause of the query to request any other format.
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<pre class="terminal">
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$ echo &#39;SELECT 1 FORMAT Pretty&#39; | curl &#39;http://localhost:8123/?&#39; --data-binary @-
┏━━━┓
┃ 1 ┃
┡━━━┩
│ 1 │
└───┘
</pre>

633
The POST method of transmitting data is necessary for INSERT queries. In this case, you can write the beginning of the query in the URL parameter, and use POST to pass the data to insert. The data to insert could be, for example, a tab-separated dump from MySQL. In this way, the INSERT query replaces LOAD DATA LOCAL INFILE from MySQL.
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Examples:
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Creating a table:
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<pre class="terminal">
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echo &#39;CREATE TABLE t (a UInt8) ENGINE = Memory&#39; | POST &#39;http://localhost:8123/&#39;
</pre>

643
Using the familiar INSERT query for data insertion:
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<pre class="terminal">
646 647 648
echo &#39;INSERT INTO t VALUES (1),(2),(3)&#39; | POST &#39;http://localhost:8123/&#39;
</pre>

649
Data can be sent separately from the query:
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<pre class="terminal">
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echo &#39;(4),(5),(6)&#39; | POST &#39;http://localhost:8123/?query=INSERT INTO t VALUES&#39;
</pre>

655
You can specify any data format. The &#39;Values&#39; format is the same as what is used when writing INSERT INTO t VALUES:
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<pre class="terminal">
658 659 660
echo &#39;(7),(8),(9)&#39; | POST &#39;http://localhost:8123/?query=INSERT INTO t FORMAT Values&#39;
</pre>

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To insert data from a tab-separated dump, specify the corresponding format:
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<pre class="terminal">
664 665 666
echo -ne &#39;10\n11\n12\n&#39; | POST &#39;http://localhost:8123/?query=INSERT INTO t FORMAT TabSeparated&#39;
</pre>

667
Reading the table contents. Data is output in random order due to parallel query processing:
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<pre class="terminal">
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$ GET &#39;http://localhost:8123/?query=SELECT a FROM t&#39;
7
8
9
10
11
12
1
2
3
4
5
6
</pre>

685
Deleting the table.
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<pre class="terminal">
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POST &#39;http://localhost:8123/?query=DROP TABLE t&#39;
</pre>

691
For successful requests that don&#39;t return a data table, an empty response body is returned.
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You can use compression when transmitting data. The compressed data has a non-standard format, and you will need to use a special compressor program to work with it (%%sudo apt-get install compressor-metrika-yandex%%).
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If you specified &#39;compress=1&#39; in the URL, the server will compress the data it sends you.
If you specified &#39;decompress=1&#39; in the URL, the server will decompress the same data that you pass in the POST method.
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You can use this to reduce network traffic when transmitting a large amount of data, or for creating dumps that are immediately compressed.
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You can use the &#39;database&#39; URL parameter to specify the default database.
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<pre class="terminal">
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$ echo &#39;SELECT number FROM numbers LIMIT 10&#39; | curl &#39;http://localhost:8123/?database=system&#39; --data-binary @-
0
1
2
3
4
5
6
7
8
9
</pre>

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By default, the database that is registered in the server settings is used as the default database. By default, this is the database called &#39;default&#39;. Alternatively, you can always specify the database using a dot before the table name.
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The username and password can be indicated in one of two ways:
719
1. Using HTTP Basic Authentication. Example:
720
<pre class="terminal">
721 722 723
echo &#39;SELECT 1&#39; | curl &#39;http://user:password@localhost:8123/&#39; -d @-
</pre>
2. In the &#39;user&#39; and &#39;password&#39; URL parameters. Example:
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<pre class="terminal">
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echo &#39;SELECT 1&#39; | curl &#39;http://localhost:8123/?user=user&amp;password=password&#39; -d @-
</pre>
If the user name is not indicated, the username &#39;default&#39; is used. If the password is not indicated, an empty password is used.


730
You can also use the URL parameters to specify any settings for processing a single query, or entire profiles of settings. Example:
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%%http://localhost:8123/?profile=web&amp;max_rows_to_read=1000000000&amp;query=SELECT+1%%

For more information, see the section &quot;Settings&quot;.
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<pre class="terminal">
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$ echo &#39;SELECT number FROM system.numbers LIMIT 10&#39; | curl &#39;http://localhost:8123/?&#39; --data-binary @-
0
1
2
3
4
5
6
7
8
9
</pre>

750
For information about other parameters, see the section &quot;SET&quot;.
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In contrast to the native interface, the HTTP interface does not support the concept of sessions or session settings, does not allow aborting a query (to be exact, it allows this in only a few cases),  and does not show the progress of query processing. Parsing and data formatting are performed on the server side, and using the network might be ineffective.
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The optional &#39;query_id&#39; parameter can be passed as the query ID (any string). For more information, see the section &quot;Settings, replace_running_query&quot;.
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The optional &#39;quota_key&#39; parameter can be passed as the quota key (any string). For more information, see the section &quot;Quotas&quot;.
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The HTTP interface allows passing external data (external temporary tables) for querying. For more information, see the section &quot;External data for query processing&quot;.
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==Native interface (TCP)==
762 763 764

The native interface is used in the &quot;clickhouse-client&quot; command-line client for interaction between servers with distributed query processing, and also in C++ programs. We will only cover the command-line client.

765
==Command-line client==
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<pre class="terminal">
768 769 770 771 772 773 774 775
$ clickhouse-client
ClickHouse client version 0.0.26176.
Connecting to localhost:9000.
Connected to ClickHouse server version 0.0.26176.

:) SELECT 1
</pre>

776
The &quot;clickhouse-client&quot; program accepts the following parameters, which are all optional:
777

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--host, -h - server name, by default - &#39;localhost&#39;.
You can use either the name or the IPv4 or IPv6 address.
780

781 782
--port - The port to connect to, by default - &#39;9000&#39;.
Note that the HTTP interface and the native interface use different ports.
783

784
--user, -u - The username, by default - &#39;default&#39;.
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786
--password - The password, by default - empty string.
787

788
--query, -q - Query to process when using non-interactive mode.
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790
--database, -d - Select the current default database, by default - the current DB from the server settings (by default, the &#39;default&#39; DB).
791

792
--multiline, -m - If specified, allow multiline queries (do not send request on Enter).
793

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--multiquery, -n - If specified, allow processing multiple queries separated by semicolons.
Only works in non-interactive mode.
796

797
--format, -f - Use the specified default format to output the result.
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799
--vertical, -E - If specified, use the Vertical format by default to output the result. This is the same as &#39;--format=Vertical&#39;. In this format, each value is printed on a separate line, which is helpful when displaying wide tables.
800

801
--time, -t - If specified, print the query execution time to &#39;stderr&#39; in non-interactive mode.
802

803
--stacktrace - If specified, also prints the stack trace if an exception occurs.
804

805
--config-file - Name of the configuration file that has additional settings or changed defaults for the settings listed above.
806 807 808 809
By default, files are searched for in this order:
./clickhouse-client.xml
~/./clickhouse-client/config.xml
/etc/clickhouse-client/config.xml
810
Settings are only taken from the first file found.
811

812
You can also specify any settings that will be used for processing queries. For example, %%clickhouse-client --max_threads=1%%. For more information, see the section &quot;Settings&quot;.
813

814
The client can be used in interactive and non-interactive (batch) mode.
815 816
To use batch mode, specify the &#39;query&#39; parameter, or send data to &#39;stdin&#39; (it verifies that &#39;stdin&#39; is not a terminal), or both.
Similar to the HTTP interface, when using the &#39;query&#39; parameter and sending data to &#39;stdin&#39;, the request is a concatenation of the &#39;query&#39; parameter, a line break, and the data in &#39;stdin&#39;. This is convenient for large INSERT queries.
817
In batch mode, the default data format is TabSeparated. You can set the format in the FORMAT clause of the query.
818

819 820
By default, you can only process a single query in batch mode. To make multiple queries from a &quot;script,&quot; use the &#39;multiquery&#39; parameter. This works for all queries except INSERT. Query results are output consecutively without additional separators.
Similarly, to process a large number of queries, you can run &#39;clickhouse-client&#39; for each query. Note that it may take tens of milliseconds to launch the &#39;clickhouse-client&#39; program.
821

822
In interactive mode, you get a command line where you can enter queries.
823 824

If &#39;multiline&#39; is not specified (the default):
825
To run a query, press Enter. The semicolon is not necessary at the end of the query. To enter a multiline query, enter a backslash %%\%% before the line break - after you press Enter, you will be asked to enter the next line of the query.
826 827 828 829

If &#39;multiline&#39; is specified:
To run a query, end it with a semicolon and press Enter. If the semicolon was omitted at the end of the entered line, you will be asked to enter the next line of the query.

830
Only a single query is run, so everything after the semicolon is ignored.
831

832
You can specify %%\G%% instead of or after the semicolon. This indicates using Vertical format. In this format, each value is printed on a separate line, which is convenient for wide tables. This unusual feature was added for compatibility with the MySQL CLI.
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834
The command line is based on &#39;readline&#39; (and &#39;history&#39;) (or &#39;libedit&#39;, or even nothing, depending on build). In other words, it uses the familiar keyboard shortcuts and keeps a history. The history is written to /.clickhouse-client-history.
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836
By default, the format used is PrettyCompact. You can change the format in the FORMAT clause of the query, or by specifying &#39;\G&#39; at the end of the query, using the &#39;--format&#39; or &#39;--vertical&#39; argument in the command line, or using the client configuration file.
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838 839
To exit the client, press Ctrl+D (or Ctrl+C), or enter one of the following :
&quot;exit&quot;, &quot;quit&quot;, &quot;logout&quot;, &quot;учше&quot;, &quot;йгше&quot;, &quot;дщпщге&quot;, &quot;exit;&quot;, &quot;quit;&quot;, &quot;logout;&quot;, &quot;учшеж&quot;, &quot;йгшеж&quot;, &quot;дщпщгеж&quot;, &quot;q&quot;, &quot;й&quot;, &quot;\q&quot;, &quot;\Q&quot;, &quot;:q&quot;, &quot;&quot;, &quot;&quot;, &quot;Жй&quot;
840

841
When processing a query, the client shows:
842 843 844
1. Progress, which is updated no more than 10 times per second (by default). For quick queries, the progress might not have time to be displayed.
2. The formatted query after parsing, for debugging.
3. The result in the specified format.
845
4. The number of lines in the result, the time passed, and the average speed of query processing.
846

847
To cancel a lengthy query, press Ctrl+C. However, you will still need to wait a little for the server to abort the request. It is not possible to cancel a query at certain stages. If you don&#39;t wait and press Ctrl+C a second time, the client will exit.
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849
The command-line client allows passing external data (external temporary tables) for querying. For more information, see the section &quot;External data for request processing&quot;.
850 851 852


</div>
853
<div class="island">
854 855 856
<h1>Query language</h1>
</div>

857
<div class="island content">
858

859
==Syntax==
860

O
Oleg Komarov 已提交
861
There are two types of parsers in the system: a full SQL parser (a recursive descent parser), and a data format parser (a fast stream parser). In all cases except the INSERT query, only the full SQL parser is used.
862
The INSERT query uses both parsers:
863

864
%%INSERT INTO t VALUES (1, &#39;Hello, world&#39;), (2, &#39;abc&#39;), (3, &#39;def&#39;)%%
865

866 867
The %%INSERT INTO t VALUES%% fragment is parsed by the full parser, and the data %%(1, &#39;Hello, world&#39;), (2, &#39;abc&#39;), (3, &#39;def&#39;)%% is parsed by the fast stream parser.
Data can have any format. When a query is received, the server calculates no more than &#39;max_query_size&#39; bytes of the request in RAM (by default, 1 MB), and the rest is stream parsed. This means the system doesn&#39;t have problems with large INSERT queries, like MySQL does.
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869
When using the Values format in an INSERT query, it may seem that data is parsed the same as expressions in a SELECT query, but this is not true. The Values format is much more limited.
870

871
Next we will cover the full parser. For more information about format parsers, see the section &quot;Formats&quot;.
872

873
===Spaces===
874

875
There may be any number of space symbols between syntactical constructions (including the beginning and end of a query). Space symbols include the space, tab, line break, CR, and form feed.
876

877
===Comments===
878

879 880 881
SQL-style and C-style comments are supported.
SQL-style comments: from %%--%% to the end of the line. The space after %%--%% can be omitted.
C-style comments: from %%/*%% to %%*/%%. These comments can be multiline. Spaces are not required here, either.
882

883
===Keywords===
884

885
Keywords (such as SELECT) are not case-sensitive. Everything else (column names, functions, and so on), in contrast to standard SQL, is case-sensitive. Keywords are not reserved (they are just parsed as keywords in the corresponding context).
886

887
===Identifiers===
888

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Identifiers (column names, functions, and data types) can be quoted or non-quoted.
Non-quoted identifiers start with a Latin letter or underscore, and continue with a Latin letter, underscore, or number. In other words, they must match the regex %%^[a-zA-Z_][0-9a-zA-Z_]*$%%. Examples: %%x%%, %%_1%%, %%X_y__Z123_%%.
Quoted identifiers are placed in reversed quotation marks %%`id`%% (the same as in MySQL), and can indicate any set of bytes (non-empty). In addition, symbols (for example, the reverse quotation mark) inside this type of identifier can be backslash-escaped. Escaping rules are the same as for string literals (see below).
We recommend using identifiers that do not need to be quoted.
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===Literals===
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There are numeric literals, string literals, and compound literals.
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<h4>Numeric literals</h4>

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A numeric literal tries to be parsed:
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- first as a 64-bit signed number, using the &#39;strtoull&#39; function.
- if unsuccessful, as a 64-bit unsigned number, using the &#39;strtoll&#39; function.
- if unsuccessful, as a floating-point number using the &#39;strtod&#39; function.
904
- otherwise, an error is returned.
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The corresponding value will have the smallest type that the value fits in.
For example, 1 is parsed as UInt8, but 256 is parsed as UInt16. For more information, see &quot;Data types&quot;.
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Examples: %%1%%, %%18446744073709551615%%, %%0xDEADBEEF%%, %%01%%, %%0.1%%, %%1e100%%, %%-1e-100%%, %%inf%%, %%nan%%.
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<h4>String literals</h4>

913
Only string literals in single quotes are supported. The enclosed characters can be backslash-escaped. The following escape sequences have special meanings: %%\b%%, %%\f%%, %%\r%%, %%\n%%, %%\t%%, %%\0%%. In all other cases, escape sequences like <span class="inline-example">\<i>x</i></span>, where <i>x</i> is any character, are transformed to <i>x</i>. This means that the sequences %%\&#39;%% and %%\\%% can be used. The value will have the String type.
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<h4>Compound literals</h4>

917
Constructions are supported for arrays: %%[1, 2, 3]%% and tuples: %%(1, &#39;Hello, world!&#39;, 2)%%.
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Actually, these are not literals, but expressions with the array creation operator and the tuple creation operator, respectively. For more information, see the section &quot;Operators2&quot;.
An array must consist of at least one item, and a tuple must have at least two items.
920
Tuples have a special purpose for use in the IN clause of a SELECT query. Tuples can be obtained as the result of a query, but they can&#39;t be saved to a database (with the exception of Memory-type tables).
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===Functions===
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Functions are written like an identifier with a list of arguments (possibly empty) in brackets. In contrast to standard SQL, the brackets are required, even for an empty arguments list. Example: %%now()%%.
There are regular and aggregate functions (see the section &quot;Aggregate functions&quot;). Some aggregate functions can contain two lists of arguments in brackets. Example: %%quantile(0.9)(x)%%. These aggregate functions are called &quot;parametric&quot; functions, and the arguments in the first list are called &quot;parameters&quot;. The syntax of aggregate functions without parameters is the same as for regular functions.
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===Operators===
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Operators are converted to their corresponding functions during query parsing, taking their priority and associativity into account.
For example, the expression %%1 + 2 * 3 + 4%% is transformed to %%plus(plus(1, multiply(2, 3)), 4)%%.
For more information, see the section &quot;Operators2&quot; below.
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===Data types and database table engines===
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Data types and table engines in the CREATE query are written the same way as identifiers or functions. In other words, they may or may not contain an arguments list in brackets. For more information, see the sections &quot;Data types,&quot; &quot;Table engines,&quot; and &quot;CREATE&quot;.
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===Synonyms===
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In the SELECT query, expressions can specify synonyms using the AS keyword. Any expression is placed to the left of AS. The identifier name for the synonym is placed to the right of AS. As opposed to standard SQL, synonyms are not only declared on the top level of expressions:
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%%SELECT (1 AS n) + 2, n%%
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In contrast to standard SQL, synonyms can be used in all parts of a query, not just SELECT.
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===Asterisk===
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In a SELECT query, an asterisk can replace the expression. For more information, see the section &quot;SELECT&quot;.
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===Expressions===
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951
An expression is a function, identifier, literal, application of an operator, expression in brackets, subquery, or asterisk. It can also contain a synonym.
952
A list of expressions is one or more expressions separated by commas.
953
Functions and operators, in turn, can have expressions as arguments.
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956
==Queries==
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959
===CREATE DATABASE===
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%%CREATE DATABASE [IF NOT EXISTS] db_name%%
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- Creates the &#39;db_name&#39; database. A database is just a directory for tables.
If &quot;IF NOT EXISTS&quot; is included, the query won&#39;t return an error if the database already exists.
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===CREATE TABLE===
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The CREATE TABLE query can have several forms.
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%%CREATE [TEMPORARY] TABLE [IF NOT EXISTS] [db.]name
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(
    name1 [type1] [DEFAULT|MATERIALIZED|ALIAS expr1],
    name2 [type2] [DEFAULT|MATERIALIZED|ALIAS expr2],
    ...
975
) ENGINE = engine%%
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Creates a table named &#39;name&#39; in the &#39;db&#39; database or the current database if &#39;db&#39; is not set, with the structure specified in brackets and the &#39;engine&#39; engine. The structure of the table is a list of column descriptions. If indexes are supported by the engine, they are indicated as parameters for the table engine.
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A column description is %%name type%% in the simplest case. For example: %%RegionID UInt32%%.
Expressions can also be defined for default values (see below).
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%%CREATE [TEMPORARY] TABLE [IF NOT EXISTS] [db.]name AS [db2.]name2 [ENGINE = engine]%%
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Creates a table with the same structure as another table. You can specify a different engine for the table. If the engine is not specified, the same engine will be used as for the &#39;db2.name2&#39; table.
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%%CREATE [TEMPORARY] TABLE [IF NOT EXISTS] [db.]name ENGINE = engine AS SELECT ...%%
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Creates a table with a structure like the result of the SELECT query, with the &#39;engine&#39; engine, and fills it with data from SELECT.
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In all cases, if IF NOT EXISTS is specified, the query won&#39;t return an error if the table already exists. In this case, the query won&#39;t do anything.
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<h4>Default values</h4>

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The column description can specify an expression for a default value, in one of the following ways:
%%DEFAULT expr%%, %%MATERIALIZED expr%%, %%ALIAS expr%%.
Example: %%URLDomain String DEFAULT domain(URL)%%.
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If an expression for the default value is not defined, the default values will be set to zeros for numbers, empty strings for strings, empty arrays for arrays, and 0000-00-00 for dates or 0000-00-00 00:00:00 for dates with time. NULLs are not supported.
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If the default expression is defined, the column type is optional. If there isn&#39;t an explicitly defined type, the default expression type is used. Example: %%EventDate DEFAULT toDate(EventTime)%% - the &#39;Date&#39; type will be used for the &#39;EventDate&#39; column.
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If the data type and default expression are defined explicitly, this expression will be cast to the specified type using type casting functions. Example: %%Hits UInt32 DEFAULT 0%% means the same thing as %%Hits UInt32 DEFAULT toUInt32(0)%%.
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Default expressions may be defined as an arbitrary expression from table constants and columns. When creating and changing the table structure, it checks that expressions don&#39;t contain loops. For INSERT, it checks that expressions are resolvable - that all columns they can be calculated from have been passed.
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%%DEFAULT expr%%
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1008
Normal default value. If the INSERT query doesn&#39;t specify the corresponding column, it will be filled in by computing the corresponding expression.
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1010
%%MATERIALIZED expr%%
1011

1012
Materialized expression. Such a column can&#39;t be specified for INSERT, because it is always calculated.
1013
For an INSERT without a list of columns, these columns are not considered.
1014
In addition, this column is not substituted when using an asterisk in a SELECT query. This is to preserve the invariant that the dump obtained using SELECT * can be inserted back into the table using INSERT without specifying the list of columns.
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%%ALIAS expr%%
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1018
Synonym. Such a column isn&#39;t stored in the table at all.
1019
Its values can&#39;t be inserted in a table, and it is not substituted when using an asterisk in a SELECT query.
1020
It can be used in SELECTs if the alias is expanded during query parsing.
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1022
When using the ALTER query to add new columns, old data for these columns is not written. Instead, when reading old data that does not have values for the new columns, expressions are computed on the fly by default. However, if running the expressions requires different columns that are not indicated in the query, these columns will additionally be read, but only for the blocks of data that need it.
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If you add a new column to a table but later change its default expression, the values used for old data will change (for data where values were not stored on the disk). Note that when running background merges, data for columns that are missing in one of the merging parts is written to the merged part.
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It is not possible to set default values for elements in nested data structures.
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<h4>Temporary tables</h4>

1031
In all cases, if TEMPORARY is specified, a temporary table will be created. Temporary tables have the following characteristics:
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- Temporary tables disappear when the session ends, including if the connection is lost.
- A temporary table is created with the Memory engine. The other table engines are not supported.
- The DB can&#39;t be specified for a temporary table. It is created outside of databases.
- If a temporary table has the same name as another one and a query specifies the table name without specifying the DB, the temporary table will be used.
1036
- For distributed query processing, temporary tables used in a query are passed to remote servers.
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In most cases, temporary tables are not created manually, but when using external data for a query, or for distributed (GLOBAL) IN. For more information, see the appropriate sections.
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1040
===CREATE VIEW===
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%%CREATE [MATERIALIZED] VIEW [IF NOT EXISTS] [db.]name [ENGINE = engine] [POPULATE] AS SELECT ...%%
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Creates a view. There are two types of views: normal and MATERIALIZED.
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Normal views don&#39;t store any data, but just perform a read from another table. In other words, a normal view is nothing more than a saved query. When reading from a view, this saved query is used as a subquery in the FROM clause.
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As an example, assume you&#39;ve created a view:
1049
%%CREATE VIEW view AS SELECT ...%%
1050
and written a query:
1051
%%SELECT a, b, c FROM view%%
1052
This query is fully equivalent to using the subquery:
1053
%%SELECT a, b, c FROM (SELECT ...)%%
1054

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Materialized views store data transformed by the corresponding SELECT query.
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When creating a materialized view, you can specify ENGINE - the table engine for storing data. By default, it uses the same engine as for the table that the SELECT query is made from.

A materialized view is arranged as follows: when inserting data to the table specified in SELECT, part of the inserted data is converted by this SELECT query, and the result is inserted in the view.

If you specify POPULATE, the existing table data is inserted in the view when creating it, as if making a CREATE TABLE ... AS SELECT ... query. Otherwise, the query contains only the data inserted in the table after creating the view. We don&#39;t recommend using POPULATE, since data inserted in the table during the view creation will not be inserted in it.

The SELECT query can contain DISTINCT, GROUP BY, ORDER BY, LIMIT ... Note that the corresponding conversions are performed independently on each block of inserted data. For example, if GROUP BY is set, data is aggregated during insertion, but only within a single packet of inserted data. The data won&#39;t be further aggregated. The exception is when using an ENGINE that independently performs data aggregation, such as SummingMergeTree.

1066
The execution of ALTER queries on materialized views has not been fully developed, so they might be inconvenient.
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Views look the same as normal tables. For example, they are listed in the result of the SHOW TABLES query.
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There isn&#39;t a separate query for deleting views. To delete a view, use DROP TABLE.
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===ATTACH===
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The query is exactly the same as CREATE, except
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- The word ATTACH is used instead of CREATE.
- The query doesn&#39;t create data on the disk, but assumes that data is already in the appropriate places, and just adds information about the table to the server.
1077
After executing an ATTACH query, the server will know about the existence of the table.
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This query is used when starting the server. The server stores table metadata as files with ATTACH queries, which it simply runs at launch (with the exception of system tables, which are explicitly created on the server).
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1082
===DROP===
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1084
This query has two types: DROP DATABASE and DROP TABLE.
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1086
%%DROP DATABASE [IF EXISTS] db%%
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Deletes all tables inside the &#39;db&#39; database, then deletes the &#39;db&#39; database itself.
If IF EXISTS is specified, it doesn&#39;t return an error if the database doesn&#39;t exist.
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%%DROP TABLE [IF EXISTS] [db.]name%%
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Deletes the table.
If IF EXISTS is specified, it doesn&#39;t return an error if the table doesn&#39;t exist or the database doesn&#39;t exist.
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1097
===DETACH===
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1099
%%DETACH TABLE [IF EXISTS] [db.]name%%
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Deletes information about the table from the server. The server stops knowing about the table&#39;s existence. This does not delete the table&#39;s data or metadata. On the next server launch, the server will read the metadata and find out about the table again. Similarly, a &quot;detached&quot; table can be re-attached using the ATTACH query (with the exception of system tables, which do not have metadata stored for them).
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There is no DETACH DATABASE query.
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1106
===RENAME===
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1108
%%RENAME TABLE [db11.]name11 TO [db12.]name12, [db21.]name21 TO [db22.]name22, ...%%
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1110
Renames one or more tables. All tables are renamed under global locking. Renaming tables is a light operation. If you indicated another database after TO, the table will be moved to this database. However, the directories with databases must reside in the same file system (otherwise, an error is returned).
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1113
===ALTER===
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1115
The ALTER query is only supported for *MergeTree type tables, as well as for Merge and Distributed types. The query has several variations.
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<h4>Column manipulations</h4>

1119
%%ALTER TABLE [db].name ADD|DROP|MODIFY COLUMN ...%%
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1121
Lets you change the table structure. In the query, specify a list of one or more comma-separated actions. Each action is an operation on a column.
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1123
The following actions are supported:
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1125
%%ADD COLUMN name [type] [default_expr] [AFTER name_after]%%
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1127
Adds a new column to the table with the specified name, type, and default expression (see the section &quot;Default expressions&quot;). If you specify &#39;AFTER name_after&#39; (the name of another column), the column is added after the specified one in the list of table columns. Otherwise, the column is added to the end of the table. Note that there is no way to add a column to the beginning of a table. For a chain of actions, &#39;name_after&#39; can be the name of a column that is added in one of the previous actions.
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Adding a column just changes the table structure, without performing any actions with data. The data doesn&#39;t appear on the disk after ALTER. If the data is missing for a column when reading from the table, it is filled in with default values (by performing the default expression if there is one, or using zeros or empty strings). The column appears on the disk after merging data parts (see MergeTree).
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1131
This approach allows us to complete the ALTER query instantly, without increasing the volume of old data.
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1133
%%DROP COLUMN name%%
1134

1135
Deletes the column with the name &#39;name&#39;.
1136

1137
Deletes data from the file system. Since this deletes entire files, the query is completed almost instantly.
1138

1139
%%MODIFY COLUMN name [type] [default_expr]%%
1140

1141
Changes the &#39;name&#39; column&#39;s type to &#39;type&#39; and/or the default expression to &#39;default_expr&#39;. When changing the type, values are converted as if the &#39;to<i>Type</i>&#39; function were applied to them.
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1143
If only the default expression is changed, the query doesn&#39;t do anything complex, and is completed almost instantly.
1144

1145
Changing the column type is the only complex action - it changes the contents of files with data. For large tables, this may take a long time.
1146

1147
There are several stages of execution:
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- Preparing temporary (new) files with modified data.
- Renaming old files.
- Renaming the temporary (new) files to the old names.
1151
- Deleting the old files.
1152

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Only the first stage takes time. If there is a failure at this stage, the data is not changed.
If there is a failure during one of the successive stages, data can be restored manually. The exception is if the old files were deleted from the file system but the data for the new files did not get written to the disk and was lost.
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1156
There is no support for changing the column type in arrays and nested data structures.
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1158
The ALTER query lets you create and delete separate elements (columns) in nested data structures, but not whole nested data structures. To add a nested data structure, you can add columns with a name like &#39;name.nested_name&#39; and the type &#39;Array(<i>T</i>)&#39;. A nested data structure is equivalent to multiple array columns with a name that has the same prefix before the dot.
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1160
There is no support for deleting or changing the type for columns in the primary key or the sampling key (columns that are in the ENGINE expression).
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If the ALTER query is not sufficient for making the table changes you need, you can create a new table, copy the data to it using the INSERT SELECT query, then switch the tables using the RENAME query and delete the old table.
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The ALTER query blocks all reads and writes for the table. In other words, if a long SELECT is running at the time of the ALTER query, the ALTER query will wait for the SELECT to complete. At the same time, all new queries to the same table will wait while this ALTER is running.
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For tables that don&#39;t store data themselves (Merge and Distributed), ALTER just changes the table structure, and does not change the structure of subordinate tables. For example, when running ALTER for a Distributed table, you will also need to run ALTER for the tables on all remote servers.
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The ALTER query for changing columns is replicated. The instructions are saved in ZooKeeper, then each replica applies them. All ALTER queries are run in the same order. The query waits for the appropriate actions to be completed on the other replicas. However, a query to change columns in a replicated table can be interrupted, and all actions will be performed asynchronously.
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<h4>Manipulations with partitions and parts</h4>

1173
Only works for tables in the MergeTree family. The following operations are available:
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%%DETACH PARTITION%% - Move a partition to the &#39;detached&#39; directory and forget it.
%%DROP PARTITION%% - Delete a partition.
%%ATTACH PART|PARTITION%% - Add a new part or partition from the &#39;detached&#39; directory to the table.
%%FREEZE PARTITION%% - Create a backup of a partition.
%%FETCH PARTITION%% - Download a partition from another server.
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Each type of query is covered separately below.
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1183
A partition in a table is data for a single calendar month. This is determined by the values of the date key specified in the table engine parameters. Each month&#39;s data is stored separately in order to simplify manipulations with this data.
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1185
A &quot;part&quot; in the table is part of the data from a single partition, sorted by the primary key.
1186

1187
You can use the system.parts table to view the set of table parts and partitions:
1188

1189
%%SELECT * FROM system.parts WHERE active%%
1190

1191
active - Only count active parts. Inactive parts are, for example, source parts remaining after merging to a larger part - these parts are deleted approximately 10 minutes after merging.
1192

1193
Another way to view a set of parts and partitions is to go into the directory with table data.
1194 1195
The directory with data is
/opt/clickhouse/data/<i>database</i>/<i>table</i>/,
1196
where /opt/clickhouse/ is the path to ClickHouse data, &#39;database&#39; is the database name, and &#39;table&#39; is the table name. Example:
1197

1198
%%
1199 1200 1201 1202 1203 1204
$ ls -l /opt/clickhouse/data/test/visits/
total 48
drwxrwxrwx 2 metrika metrika 20480 may   13 02:58 20140317_20140323_2_2_0
drwxrwxrwx 2 metrika metrika 20480 may   13 02:58 20140317_20140323_4_4_0
drwxrwxrwx 2 metrika metrika  4096 may   13 02:55 detached
-rw-rw-rw- 1 metrika metrika     2 may   13 02:58 increment.txt
1205
%%
1206

1207
Here 20140317_20140323_2_2_0 and 20140317_20140323_4_4_0 are directories of parts.
1208 1209 1210 1211 1212 1213 1214 1215 1216

Let&#39;s look at the name of the first part: 20140317_20140323_2_2_0.
20140317 - minimum date of part data
20140323 - maximum date of part data
2 - minimum number of the data block
2 - maximum number of the data block
0 - part level - depth of the merge tree that formed it

Each part corresponds to a single partition and contains data for a single month.
1217
201403 - The partition name. A partition is a set of parts for a single month.
1218

1219
On an operating server, you can&#39;t manually change the set of parts or their data on the file system, since the server won&#39;t know about it. For non-replicated tables, you can do this when the server is stopped, but we don&#39;t recommended it. For replicated tables, the set of parts can&#39;t be changed in any case.
1220

1221
The &#39;detached&#39; directory contains parts that are not used by the server - detached from the table using the ALTER ... DETACH query. Parts that are damaged are also moved to this directory, instead of deleting them. You can add, delete, or modify the data in the &#39;detached&#39; directory at any time - the server won&#39;t know about this until you make the ALTER TABLE ... ATTACH query.
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1223
For replicated tables, there is also an &#39;unreplicated&#39; directory. This directory can hold the portion of table data that does not participate in replication. This data is present only if the table was converted from a non-replicated one (see the section &quot;Conversion from MergeTree to ReplicatedMergeTree&quot;).
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1226
%%ALTER TABLE [db.]table DETACH [UNREPLICATED] PARTITION &#39;name&#39;%%
1227

1228 1229
Move all data for partitions named &#39;name&#39; to the &#39;detached&#39; directory and forget about them.
The partition name is specified in YYYYMM format. It can be indicated in single quotes or without them.
1230

1231
After the query is executed, you can do whatever you want with the data in the &#39;detached&#39; directory — delete it from the file system, or just leave it.
1232

1233
If UNREPLICATED is specified (this only works for replicatable tables), the query is run for the unreplicated part of a replicatable table.
1234

1235
The query is replicated - data will be moved to the &#39;detached&#39; directory and forgotten on all replicas. The query can only be sent to a leader replica. To find out if a replica is a leader, perform SELECT to the &#39;system.replicas&#39; system table. Alternatively, it is easier to make a query on all replicas, and all except one will throw an exception.
1236 1237


1238
%%ALTER TABLE [db.]table DROP [UNREPLICATED] PARTITION &#39;name&#39;%%
1239

1240
Similar to the DETACH operation. Deletes data from the table. Data parts will be tagged as inactive and will be completely deleted in approximately 10 minutes. The query is replicated - data will be deleted on all replicas.
1241 1242


1243
%%ALTER TABLE [db.]table ATTACH [UNREPLICATED] PARTITION|PART &#39;name&#39;%%
1244

1245
Adds data to the table from the &#39;detached&#39; directory. Or, if UNREPLICATED is specified, data is moved from an &#39;unreplicated&#39; part to replicated data.
1246

1247
It is possible to add data for an entire partition or a separate part. For a part, specify the full name of the part in single quotes.
1248

1249
The query is replicated. Each replica checks whether there is data in the &#39;detached&#39; directory. If there is data, it checks the integrity, verifies that it matches the data on the server that initiated the query, and then adds it if everything is correct. If not, it downloads data from the query requestor replica, or from another replica where the data has already been added.
1250

1251
So you can put data in the &#39;detached&#39; directory on one replica, and use the ALTER ... ATTACH query to add it to the table on all replicas.
1252 1253


1254
%%ALTER TABLE [db.]table FREEZE PARTITION &#39;name&#39;%%
1255

1256
Creates a local backup of one or multiple partitions. The name can be the full name of the partition (for example, 201403), or its prefix (for example, 2014) - then the backup will be created for all the corresponding partitions.
1257

1258
The query does the following: for a data snapshot at the time of execution, it creates hardlinks to table data in the directory /opt/clickhouse/shadow/N/...
1259 1260 1261
/opt/clickhouse/ is the working ClickHouse directory from the config.
N is the incremental number of the backup.
The same structure of directories is created inside the backup as inside /opt/clickhouse/.
1262
It also performs &#39;chmod&#39; for all files, forbidding writes to them.
1263

1264
The backup is created almost instantly (but first it waits for current queries to the corresponding table to finish running). At first, the backup doesn&#39;t take any space on the disk. As the system works, the backup can take disk space, as data is modified. If the backup is made for old enough data, it won&#39;t take space on the disk.
1265

1266
After creating the backup, data from /opt/clickhouse/shadow/ can be copied to the remote server and then deleted on the local server. The entire backup process is performed without stopping the server.
1267

1268
The ALTER ... FREEZE PARTITION query is not replicated. A local backup is only created on the local server.
1269

1270
As an alternative, you can manually copy data from the /opt/clickhouse/data/database/table directory. But if you do this while the server is running, race conditions are possible when copying directories with files being added or changed, and the backup may be inconsistent. You can do this if the server isn&#39;t running - then the resulting data will be the same as after the ALTER TABLE t FREEZE PARTITION query.
1271

1272
ALTER TABLE ... FREEZE PARTITION only copies data, not table metadata. To make a backup of table metadata, copy the file  /opt/clickhouse/metadata/database/table.sql
1273

1274
To restore from a backup:
1275 1276
- Use the CREATE query to create the table if it doesn&#39;t exist. The query can be taken from an .sql file (replace ATTACH in it with CREATE).
- Copy data from the data/database/table/ directory inside the backup to the /opt/clickhouse/data/database/table/detached/ directory.
1277
- Run ALTER TABLE ... ATTACH PARTITION YYYYMM queries where YYYYMM is the month, for every month.
1278

1279 1280
In this way, data from the backup will be added to the table.
Restoring from a backup doesn&#39;t require stopping the server.
1281

1282
<b>Backups and replication</b>
1283

1284
Replication provides protection from device failures. If all data disappeared on one of your replicas, follow the instructions in the &quot;Restoration after failure&quot; section to restore it.
1285

1286
For protection from device failures, you must use replication. For more information about replication, see the section &quot;Data replication&quot;.
1287

1288
Backups protect against human error (accidentally deleting data, deleting the wrong data or in the wrong cluster, or corrupting data). For high-volume databases, it can be difficult to copy backups to remote servers. In such cases, to protect from human error, you can keep a backup on the same server (it will reside in /opt/clickhouse/shadow/).
1289 1290


1291
%%ALTER TABLE [db.]table FETCH PARTITION &#39;name&#39; FROM &#39;path-in-zookeeper&#39;%%
1292

1293
This query only works for replicatable tables.
1294

1295
It downloads the specified partition from the shard that has its ZooKeeper path specified in the FROM clause, then puts it in the &#39;detached&#39; directory for the specified table.
1296

1297
Although the query is called ALTER TABLE, it does not change the table structure, and does not immediately change the data available in the table.
1298

1299
Data is placed in the &#39;detached&#39; directory. You can use the ALTER TABLE ... ATTACH query to attach the data.
1300

1301 1302
The path to ZooKeeper is specified in the FROM clause. For example, %%/clickhouse/tables/01-01/visits%%.
Before downloading, the system checks that the partition exists and the table structure matches. The most appropriate replica is selected automatically from the healthy replicas.
1303

1304
The ALTER ... FETCH PARTITION query is not replicated. The partition will be downloaded to the &#39;detached&#39; directory only on the local server. Note that if after this you use the ALTER TABLE ... ATTACH query to add data to the table, the data will be added on all replicas (on one of the replicas it will be added from the &#39;detached&#39; directory, and on the rest it will be loaded from neighboring replicas).
1305 1306 1307 1308


<h4>Synchronicity of ALTER queries</h4>

1309
For non-replicatable tables, all ALTER queries are performed synchronously. For replicatable tables, the query just adds instructions for the appropriate actions to ZooKeeper, and the actions themselves are performed as soon as possible. However, the query can wait for these actions to be completed on all the replicas.
1310

1311 1312
For ALTER ... ATTACH|DETACH|DROP queries, you can use the &#39;replication_alter_partitions_sync&#39; setting to set up waiting.
Possible values: 0 - do not wait, 1 - wait for own completion (default), 2 - wait for all.
1313 1314 1315



1316
===SHOW DATABASES===
1317

1318
%%SHOW DATABASES [FORMAT format]%%
1319

1320
Prints a list of all databases.
1321
This query is identical to the query SELECT name FROM system.databases [FORMAT format]
1322
See the section &quot;Formats&quot;.
1323 1324


1325
===SHOW TABLES===
1326

1327
%%SHOW TABLES [FROM db] [LIKE &#39;pattern&#39;] [FORMAT format]%%
1328

1329
Outputs a list of
1330
- tables from the current database, or from the &#39;db&#39; database if &quot;FROM db&quot; is specified.
1331
- all tables, or tables whose name matches the pattern, if &quot;LIKE &#39;pattern&#39;&quot; is specified.
1332

1333
The query is identical to the query  SELECT name FROM system.tables
1334
WHERE database = &#39;db&#39; [AND name LIKE &#39;pattern&#39;] [FORMAT format]
1335
See the section &quot;LIKE operator&quot;.
1336 1337


1338
===SHOW PROCESSLIST===
1339

1340
%%SHOW PROCESSLIST [FORMAT format]%%
1341

1342
Outputs a list of queries currently being processed, other than SHOW PROCESSLIST queries.
1343

1344
Prints a table containing the columns:
1345

1346
<b>user</b> is the user who made the query. Keep in mind that for distributed processing, queries are sent to remote servers under the &#39;default&#39; user. SHOW PROCESSLIST shows the username for a specific query, not for a query that this query initiated.
1347

1348
<b>address</b> is the name of the host that the query was sent from. For distributed processing, on remote servers, this is the name of the query requestor host. To track where a distributed query was originally made from, look at SHOW PROCESSLIST on the query requestor server.
1349

1350
<b>elapsed</b> - The execution time, in seconds. Queries are output in order of decreasing execution time.
1351

1352
<b>rows_read</b>, <b>bytes_read</b> - How many rows and bytes of uncompressed data were read when processing the query. For distributed processing, data is totaled from all the remote servers. This is the data used for restrictions and quotas.
1353

1354
<b>memory_usage</b> - Current RAM usage in bytes. See the setting &#39;max_memory_usage&#39;.
1355

1356
<b>query</b> - The query itself. In INSERT queries, the data for insertion is not output.
1357

1358
<b>query_id</b> - The query identifier. Non-empty only if it was explicitly defined by the user. For distributed processing, the query ID is not passed to remote servers.
1359

1360
This query is exactly the same as: SELECT * FROM system.processes [FORMAT format].
1361

1362 1363
Tip (execute in the console):
%%watch -n1 &quot;clickhouse-client --query=&#39;SHOW PROCESSLIST&#39;&quot;%%
1364 1365


1366
===SHOW CREATE TABLE===
1367

1368
%%SHOW CREATE TABLE [db.]table [FORMAT format]%%
1369

1370
Returns a single String-type &#39;statement&#39; column, which contains a single value - the CREATE query used for creating the specified table.
1371 1372


1373
===DESCRIBE TABLE===
1374

1375
%%DESC|DESCRIBE TABLE [db.]table [FORMAT format]%%
1376

1377
Returns two String-type columns: &#39;name&#39; and &#39;type&#39;, which indicate the names and types of columns in the specified table.
1378

1379
Nested data structures are output in &quot;expanded&quot; format. Each column is shown separately, with the name after a dot.
1380 1381


1382
===EXISTS===
1383

1384
%%EXISTS TABLE [db.]name [FORMAT format]%%
1385

1386
Returns a single UInt8-type column, which contains the single value 0 if the table or database doesn&#39;t exist, or 1 if the table exists in the specified database.
1387 1388


1389
===USE===
1390

1391
%%USE db%%
1392

1393
Lets you set the current database for the session.
1394
The current database is used for searching for tables if the database is not explicitly defined in the query with a dot before the table name.
1395
This query can&#39;t be made when using the HTTP protocol, since there is no concept of a session.
1396 1397


1398
===SET===
1399

1400
%%SET [GLOBAL] param = value%%
1401

1402 1403
Lets you set the &#39;param&#39; setting to &#39;value&#39;. You can also make all the settings from the specified settings profile in a single query. To do this, specify &#39;profile&#39; as the setting name. For more information, see the section &quot;Settings&quot;. The setting is made for the session, or for the server (globally) if GLOBAL is specified.
When making a global setting, the setting is not applied to sessions already running, including the current session. It will only be used for new sessions.
1404

1405
Settings made using SET GLOBAL have a lower priority compared with settings made in the config file in the user profile. In other words, user settings can&#39;t be overridden by SET GLOBAL.
1406

1407 1408
When the server is restarted, global settings made using SET GLOBAL are lost.
To make settings that persist after a server restart, you can only use the server&#39;s config file. (This can&#39;t be done using a SET query.)
1409 1410


1411
===OPTIMIZE===
1412

1413
%%OPTIMIZE TABLE [db.]name%%
1414

1415 1416
Asks the table engine to do something for optimization.
Supported only by *MergeTree engines, in which this query initializes a non-scheduled merge of data parts.
1417

1418
For replicated tables, the OPTIMIZE query is only applied to non-replicated data (this data exists only after converting non-replicated tables to replicated ones). If there isn&#39;t any, the query doesn&#39;t do anything.
1419 1420


1421
===INSERT===
1422

1423
This query has several variations.
1424

1425
%%INSERT INTO [db.]table [(c1, c2, c3)] VALUES (v11, v12, v13), (v21, v22, v23), ...%%
1426

1427
Inserts rows with the listed values in the &#39;table&#39; table. This query is exactly the same as:
1428

1429
%%INSERT INTO [db.]table [(c1, c2, c3)] FORMAT Values (v11, v12, v13), (v21, v22, v23), ...%%
1430

1431
%%INSERT INTO [db.]table [(c1, c2, c3)] FORMAT format ...%%
1432

1433 1434
Inserts data in any specified format.
The data itself comes after &#39;format&#39;, after all space symbols up to the first line break if there is one and including it, or after all space symbols if there isn&#39;t a line break. We recommend writing data starting from the next line (this is important if the data starts with space characters).
1435

1436
Example:
1437

1438
%%INSERT INTO t FORMAT TabSeparated
1439 1440
11  Hello, world!
22  Qwerty
1441
%%
1442

1443
For more information about data formats, see the section &quot;Formats&quot;. The &quot;Interfaces&quot; section describes how to insert data separately from the query when using the command-line client or the HTTP interface.
1444

1445 1446
The query may optionally specify a list of columns for insertion. In this case, the default values are written to the other columns.
Default values are calculated from DEFAULT expressions specified in table definitions, or, if the DEFAULT is not explicitly defined, zeros and empty strings are used. If the &#39;strict_insert_default&#39; setting is set to 1, all the columns that do not have explicit DEFAULTS must be specified in the query.
1447

1448
%%INSERT INTO [db.]table [(c1, c2, c3)] SELECT ...%%
1449

1450
Inserts the result of the SELECT query into a table.
1451 1452
The names and data types of the SELECT result must exactly match the table structure that data is inserted into, or the specified list of columns.
To change column names, use synonyms (AS) in the SELECT query.
1453
To change data types, use type conversion functions (see the section &quot;Functions&quot;).
1454

1455 1456
None of the data formats allows using expressions as values.
In other words, you can&#39;t write INSERT INTO t VALUES (now(), 1 + 1, DEFAULT).
1457

1458
There is no support for other data part modification queries:
1459
UPDATE, DELETE, REPLACE, MERGE, UPSERT, INSERT UPDATE.
1460
However, you can delete old data using ALTER TABLE ... DROP PARTITION.
1461 1462


1463
===SELECT===
1464

1465
His Highness, the SELECT query.
1466

1467
%%SELECT [DISTINCT] expr_list
1468 1469 1470 1471 1472 1473 1474 1475 1476 1477 1478
    [FROM [db.]table | (subquery) | table_function] [FINAL]
    [SAMPLE sample_coeff]
    [ARRAY JOIN ...]
    [GLOBAL] ANY|ALL INNER|LEFT JOIN (subquery)|table USING columns_list
    [PREWHERE expr]
    [WHERE expr]
    [GROUP BY expr_list] [WITH TOTALS]
    [HAVING expr]
    [ORDER BY expr_list]
    [LIMIT [n, ]m]
    [UNION ALL ...]
1479
    [FORMAT format]%%
1480

1481 1482
All the clauses are optional, except for the required list of expressions immediately after SELECT.
The clauses below are described in almost the same order as in the query execution conveyor.
1483

1484 1485
If the query omits the DISTINCT, GROUP BY, and ORDER BY clauses and the IN and JOIN subqueries, the query will be completely stream processed, using O(1) amount of RAM.
Otherwise, the query may consume too much RAM, if appropriate restrictions are not defined (max_memory_usage, max_rows_to_group_by, max_rows_to_sort, max_rows_in_distinct, max_bytes_in_distinct, max_rows_in_set, max_bytes_in_set, max_rows_in_join, max_bytes_in_join, max_bytes_before_external_sort). For more information, see the section &quot;Settings&quot;. It is possible to use external sorting (saving temporary tables to a disk). The system does not have external aggregation or merge join.
1486 1487 1488

<h4>FROM clause</h4>

1489 1490
If the FROM clause is omitted, data will be read from the &#39;system.one&#39; table.
The &#39;system.one&#39; table contains exactly one row (this table fulfills the same purpose as the DUAL table found in other DBMSs).
1491

1492
The FROM clause specifies the table to read data from, or a subquery, or a table function; ARRAY JOIN and the regular JOIN may also be included (see below).
1493

1494 1495
Instead of a table, the SELECT subquery may be specified in brackets. In this case, the subquery processing pipeline will be built into the processing pipeline of an external query.
In contrast to standard SQL, a synonym does not need to be specified after a subquery. For compatibility, it is possible to write &#39;AS name&#39; after a subquery, but the specified name isn&#39;t used anywhere.
1496

1497
A table function may be specified instead of a table. For more information, see the section &quot;Table functions&quot;.
1498

1499 1500
To execute a query, all the columns listed in the query are extracted from the appropriate table. Any columns not needed for the external query are thrown out of the subqueries.
If a query does not list any columns (for example, SELECT count() FROM t), some column is extracted from the table anyway (the smallest one is preferred), in order to calculate the number of rows.
1501

1502
The FINAL modifier can be used only for a SELECT from a CollapsingMergeTree table. When you specify FINAL, data is selected fully &quot;collapsed&quot;. Keep in mind that using FINAL leads to a selection that includes columns related to the primary key, in addition to the columns specified in the SELECT. Additionally, the query will be executed in a single stream, and data will be merged during query execution. This means that when using FINAL, the query is processed more slowly. In most cases, you should avoid using FINAL. For more information, see the section &quot;CollapsingMergeTree engine&quot;.
1503 1504 1505

<h4>SAMPLE clause</h4>

1506
The SAMPLE clause allows for approximated query processing.
1507 1508
Approximated query processing is only supported by MergeTree* type tables, and only if the sampling expression was specified during table creation (see the section &quot;MergeTree engine&quot;).

1509
SAMPLE has the format %%SAMPLE k%%, where &#39;k&#39; is a decimal number from 0 to 1, or %%SAMPLE n%%, where &#39;n&#39; is a sufficiently large integer.
1510

1511 1512
In the first case, the query will be executed on &#39;k&#39; percent of data. For example, %%SAMPLE 0.1%% runs the query on 10% of data.
In the second case, the query will be executed on a sample of no more than &#39;n&#39; rows. For example, %%SAMPLE 10000000%% runs the query on a maximum of 10,000,000 rows.
1513

1514
Example:
1515

1516
%%SELECT
1517 1518 1519 1520 1521 1522 1523 1524 1525 1526 1527 1528
    Title,
    count() * 10 AS PageViews
FROM hits_distributed
SAMPLE 0.1
WHERE
    CounterID = 34
    AND toDate(EventDate) >= toDate(&#39;2013-01-29&#39;)
    AND toDate(EventDate) &lt;= toDate(&#39;2013-02-04&#39;)
    AND NOT DontCountHits
    AND NOT Refresh
    AND Title != &#39;&#39;
GROUP BY Title
1529
ORDER BY PageViews DESC LIMIT 1000%%
1530

1531
In this example, the query is executed on a sample from 0.1 (10%) of data. Values of aggregate functions are not corrected automatically, so to get an approximate result, the value &#39;count()&#39; is manually multiplied by 10.
1532

1533
When using something like %%SAMPLE 10000000%%, there isn&#39;t any information about which relative percent of data was processed or what the aggregate functions should be multiplied by, so this method of writing is not always appropriate to the situation.
1534

1535
A sample with a relative coefficient is &quot;consistent&quot;: if we look at all possible data that could be in the table, a sample (when using a single sampling expression specified during table creation) with the same coefficient always selects the same subset of possible data. In other words, a sample from different tables on different servers at different times is made the same way.
1536

1537
For example, a sample of user IDs takes rows with the same subset of all the possible user IDs from different tables. This allows using the sample in subqueries in the IN clause, as well as for manually correlating results of different queries with samples.
1538 1539 1540

<h4>ARRAY JOIN clause</h4>

1541
Allows executing JOIN with an array or nested data structure. The intent is similar to the &#39;arrayJoin&#39; function, but its functionality is broader.
1542

1543
ARRAY JOIN is essentially INNER JOIN with an array. Example:
1544

1545
%%
1546 1547 1548 1549 1550 1551 1552 1553 1554 1555 1556 1557 1558 1559 1560 1561 1562 1563 1564 1565 1566 1567 1568 1569 1570 1571 1572 1573 1574 1575 1576 1577 1578 1579 1580 1581 1582 1583 1584 1585 1586 1587 1588 1589 1590 1591 1592 1593
:) CREATE TABLE arrays_test (s String, arr Array(UInt8)) ENGINE = Memory

CREATE TABLE arrays_test
(
    s String,
    arr Array(UInt8)
) ENGINE = Memory

Ok.

0 rows in set. Elapsed: 0.001 sec.

:) INSERT INTO arrays_test VALUES (&#39;Hello&#39;, [1,2]), (&#39;World&#39;, [3,4,5]), (&#39;Goodbye&#39;, [])

INSERT INTO arrays_test VALUES

Ok.

3 rows in set. Elapsed: 0.001 sec.

:) SELECT * FROM arrays_test

SELECT *
FROM arrays_test

┌─s───────┬─arr─────┐
│ Hello   │ [1,2]   │
│ World   │ [3,4,5] │
│ Goodbye │ []      │
└─────────┴─────────┘

3 rows in set. Elapsed: 0.001 sec.

:) SELECT s, arr FROM arrays_test ARRAY JOIN arr

SELECT s, arr
FROM arrays_test
ARRAY JOIN arr

┌─s─────┬─arr─┐
│ Hello │   1 │
│ Hello │   2 │
│ World │   3 │
│ World │   4 │
│ World │   5 │
└───────┴─────┘

5 rows in set. Elapsed: 0.001 sec.
1594
%%
1595

1596
An alias can be specified for an array in the ARRAY JOIN clause. In this case, an array item can be accessed by this alias, but the array itself by the original name. Example:
1597

1598
%%
1599 1600 1601 1602 1603 1604 1605 1606 1607 1608 1609 1610 1611 1612 1613
:) SELECT s, arr, a FROM arrays_test ARRAY JOIN arr AS a

SELECT s, arr, a
FROM arrays_test
ARRAY JOIN arr AS a

┌─s─────┬─arr─────┬─a─┐
│ Hello │ [1,2]   │ 1 │
│ Hello │ [1,2]   │ 2 │
│ World │ [3,4,5] │ 3 │
│ World │ [3,4,5] │ 4 │
│ World │ [3,4,5] │ 5 │
└───────┴─────────┴───┘

5 rows in set. Elapsed: 0.001 sec.
1614
%%
1615

1616 1617
Multiple arrays of the same size can be comma-separated in the ARRAY JOIN clause. In this case, JOIN is performed with them simultaneously (the direct sum, not the direct product).
Example:
1618

1619
%%
1620 1621 1622 1623 1624 1625 1626 1627 1628 1629 1630 1631 1632 1633 1634 1635 1636 1637 1638 1639 1640 1641 1642 1643 1644 1645 1646 1647 1648 1649 1650
:) SELECT s, arr, a, num, mapped FROM arrays_test ARRAY JOIN arr AS a, arrayEnumerate(arr) AS num, arrayMap(x -> x + 1, arr) AS mapped

SELECT s, arr, a, num, mapped
FROM arrays_test
ARRAY JOIN arr AS a, arrayEnumerate(arr) AS num, arrayMap(lambda(tuple(x), plus(x, 1)), arr) AS mapped

┌─s─────┬─arr─────┬─a─┬─num─┬─mapped─┐
│ Hello │ [1,2]   │ 1 │   1 │      2 │
│ Hello │ [1,2]   │ 2 │   2 │      3 │
│ World │ [3,4,5] │ 3 │   1 │      4 │
│ World │ [3,4,5] │ 4 │   2 │      5 │
│ World │ [3,4,5] │ 5 │   3 │      6 │
└───────┴─────────┴───┴─────┴────────┘

5 rows in set. Elapsed: 0.002 sec.

:) SELECT s, arr, a, num, arrayEnumerate(arr) FROM arrays_test ARRAY JOIN arr AS a, arrayEnumerate(arr) AS num

SELECT s, arr, a, num, arrayEnumerate(arr)
FROM arrays_test
ARRAY JOIN arr AS a, arrayEnumerate(arr) AS num

┌─s─────┬─arr─────┬─a─┬─num─┬─arrayEnumerate(arr)─┐
│ Hello │ [1,2]   │ 1 │   1 │ [1,2]               │
│ Hello │ [1,2]   │ 2 │   2 │ [1,2]               │
│ World │ [3,4,5] │ 3 │   1 │ [1,2,3]             │
│ World │ [3,4,5] │ 4 │   2 │ [1,2,3]             │
│ World │ [3,4,5] │ 5 │   3 │ [1,2,3]             │
└───────┴─────────┴───┴─────┴─────────────────────┘

5 rows in set. Elapsed: 0.002 sec.
1651
%%
1652

1653
ARRAY JOIN also works with nested data structures. Example:
1654

1655
%%
1656 1657 1658 1659 1660 1661 1662 1663 1664 1665 1666 1667 1668 1669 1670 1671 1672 1673 1674 1675 1676 1677 1678 1679 1680 1681 1682 1683 1684 1685 1686 1687 1688 1689 1690 1691 1692 1693 1694 1695 1696 1697 1698 1699 1700 1701 1702 1703 1704 1705
:) CREATE TABLE nested_test (s String, nest Nested(x UInt8, y UInt32)) ENGINE = Memory

CREATE TABLE nested_test
(
    s String,
    nest Nested(
    x UInt8,
    y UInt32)
) ENGINE = Memory

Ok.

0 rows in set. Elapsed: 0.006 sec.

:) INSERT INTO nested_test VALUES (&#39;Hello&#39;, [1,2], [10,20]), (&#39;World&#39;, [3,4,5], [30,40,50]), (&#39;Goodbye&#39;, [], [])

INSERT INTO nested_test VALUES

Ok.

3 rows in set. Elapsed: 0.001 sec.

:) SELECT * FROM nested_test

SELECT *
FROM nested_test

┌─s───────┬─nest.x──┬─nest.y─────┐
│ Hello   │ [1,2]   │ [10,20]    │
│ World   │ [3,4,5] │ [30,40,50] │
│ Goodbye │ []      │ []         │
└─────────┴─────────┴────────────┘

3 rows in set. Elapsed: 0.001 sec.

:) SELECT s, nest.x, nest.y FROM nested_test ARRAY JOIN nest

SELECT s, `nest.x`, `nest.y`
FROM nested_test
ARRAY JOIN nest

┌─s─────┬─nest.x─┬─nest.y─┐
│ Hello │      1 │     10 │
│ Hello │      2 │     20 │
│ World │      3 │     30 │
│ World │      4 │     40 │
│ World │      5 │     50 │
└───────┴────────┴────────┘

5 rows in set. Elapsed: 0.001 sec.
1706
%%
1707

1708
When specifying names of nested data structures in ARRAY JOIN, the meaning is the same as ARRAY JOIN with all the array elements that it consists of. Example:
1709

1710
%%
1711 1712 1713 1714 1715 1716 1717 1718 1719 1720 1721 1722 1723 1724 1725
:) SELECT s, nest.x, nest.y FROM nested_test ARRAY JOIN nest.x, nest.y

SELECT s, `nest.x`, `nest.y`
FROM nested_test
ARRAY JOIN `nest.x`, `nest.y`

┌─s─────┬─nest.x─┬─nest.y─┐
│ Hello │      1 │     10 │
│ Hello │      2 │     20 │
│ World │      3 │     30 │
│ World │      4 │     40 │
│ World │      5 │     50 │
└───────┴────────┴────────┘

5 rows in set. Elapsed: 0.001 sec.
1726
%%
1727

1728
This variation also makes sense:
1729

1730
%%
1731 1732 1733 1734 1735 1736 1737 1738 1739 1740 1741 1742 1743 1744 1745
:) SELECT s, nest.x, nest.y FROM nested_test ARRAY JOIN nest.x

SELECT s, `nest.x`, `nest.y`
FROM nested_test
ARRAY JOIN `nest.x`

┌─s─────┬─nest.x─┬─nest.y─────┐
│ Hello │      1 │ [10,20]    │
│ Hello │      2 │ [10,20]    │
│ World │      3 │ [30,40,50] │
│ World │      4 │ [30,40,50] │
│ World │      5 │ [30,40,50] │
└───────┴────────┴────────────┘

5 rows in set. Elapsed: 0.001 sec.
1746
%%
1747

1748
An alias may be used for a nested data structure, in order to select either the JOIN result or the source array. Example:
1749

1750
%%
1751 1752 1753 1754 1755 1756 1757 1758 1759 1760 1761 1762 1763 1764 1765
:) SELECT s, n.x, n.y, nest.x, nest.y FROM nested_test ARRAY JOIN nest AS n

SELECT s, `n.x`, `n.y`, `nest.x`, `nest.y`
FROM nested_test
ARRAY JOIN nest AS n

┌─s─────┬─n.x─┬─n.y─┬─nest.x──┬─nest.y─────┐
│ Hello │   1 │  10 │ [1,2]   │ [10,20]    │
│ Hello │   2 │  20 │ [1,2]   │ [10,20]    │
│ World │   3 │  30 │ [3,4,5] │ [30,40,50] │
│ World │   4 │  40 │ [3,4,5] │ [30,40,50] │
│ World │   5 │  50 │ [3,4,5] │ [30,40,50] │
└───────┴─────┴─────┴─────────┴────────────┘

5 rows in set. Elapsed: 0.001 sec.
1766
%%
1767

1768
Example of using the arrayEnumerate function:
1769

1770
%%
1771 1772 1773 1774 1775 1776 1777 1778 1779 1780 1781 1782 1783 1784 1785
:) SELECT s, n.x, n.y, nest.x, nest.y, num FROM nested_test ARRAY JOIN nest AS n, arrayEnumerate(nest.x) AS num

SELECT s, `n.x`, `n.y`, `nest.x`, `nest.y`, num
FROM nested_test
ARRAY JOIN nest AS n, arrayEnumerate(`nest.x`) AS num

┌─s─────┬─n.x─┬─n.y─┬─nest.x──┬─nest.y─────┬─num─┐
│ Hello │   1 │  10 │ [1,2]   │ [10,20]    │   1 │
│ Hello │   2 │  20 │ [1,2]   │ [10,20]    │   2 │
│ World │   3 │  30 │ [3,4,5] │ [30,40,50] │   1 │
│ World │   4 │  40 │ [3,4,5] │ [30,40,50] │   2 │
│ World │   5 │  50 │ [3,4,5] │ [30,40,50] │   3 │
└───────┴─────┴─────┴─────────┴────────────┴─────┘

5 rows in set. Elapsed: 0.002 sec.
1786
%%
1787

1788
The query can only specify a single ARRAY JOIN clause.
1789

1790
The corresponding conversion can be performed before the WHERE/PREWHERE clause (if its result is needed in this clause), or after completing WHERE/PREWHERE (to reduce the volume of calculations).
1791 1792 1793

<h4>JOIN clause</h4>

1794
The normal JOIN, which is not related to ARRAY JOIN described above.
1795

1796
%%
1797
[GLOBAL] ANY|ALL INNER|LEFT [OUTER] JOIN (subquery)|table USING columns_list
1798
%%
1799

1800
Performs joins with data from the subquery. At the beginning of query execution, the subquery specified after JOIN is run, and its result is saved in memory. Then it is read from the &quot;left&quot; table specified in the FROM clause, and while it is being read, for each of the read rows from the &quot;left&quot; table, rows are selected from the subquery results table (the &quot;right&quot; table) that meet the condition for matching the values of the columns specified in USING.
1801

1802
The table name can be specified instead of a subquery. This is equivalent to the &#39;SELECT * FROM table&#39; subquery, except in a special case when the table has the Join engine - an array prepared for joining.
1803

1804
All columns that are not needed for the JOIN are deleted from the subquery.
1805

1806
There are several types of JOINs:
1807

1808
INNER or LEFT - the type:
1809
If INNER is specified, the result will contain only those rows that have a matching row in the right table.
1810
If LEFT is specified, any rows in the left table that don&#39;t have matching rows in the right table will be assigned the default value - zeros or empty rows. LEFT OUTER may be written instead of LEFT; the word OUTER does not affect anything.
1811

1812
ANY or ALL - strictness:
1813
If ANY is specified and there are multiple matching rows in the right table, only the first one will be joined.
1814
If ALL is specified and there are multiple matching rows in the right table, the data will be multiplied by the number of these rows.
1815

1816 1817
Using ALL corresponds to the normal JOIN semantic from standard SQL.
Using ANY is optimal. If the right table has only one matching row, the results of ANY and ALL are the same. You must specify either ANY or ALL (neither of them is selected by default).
1818

1819
GLOBAL - distribution:
1820

1821
When using a normal %%JOIN%%, the query is sent to remote servers. Subqueries are run on each of them in order to make the right table, and the join is performed with this table. In other words, the right table is formed on each server separately.
1822

1823
When using %%GLOBAL ... JOIN%%, first the requestor server runs a subquery to calculate the right table. This temporary table is passed to each remote server, and queries are run on them using the temporary data that was transmitted.
1824

1825
Be careful when using GLOBAL JOINs. For more information, see the section &quot;Distributed subqueries&quot; below.
1826

1827
Any combination of JOINs is possible. For example, %%GLOBAL ANY LEFT OUTER JOIN%%.
1828

1829
When running JOINs, there is no optimization of the order of execution in relation to other stages of the query. The join (a search in the right table) is run before filtering in WHERE and before aggregation. In order to explicitly set the order of execution, we recommend running a JOIN subquery with a subquery.
1830

1831 1832
Example:
%%
1833 1834 1835 1836 1837 1838 1839 1840 1841 1842 1843 1844 1845 1846 1847 1848 1849 1850 1851 1852 1853 1854 1855 1856 1857 1858 1859 1860 1861 1862 1863 1864 1865 1866
SELECT
    CounterID,
    hits,
    visits
FROM
(
    SELECT
        CounterID,
        count() AS hits
    FROM test.hits
    GROUP BY CounterID
) ANY LEFT JOIN
(
    SELECT
        CounterID,
        sum(Sign) AS visits
    FROM test.visits
    GROUP BY CounterID
) USING CounterID
ORDER BY hits DESC
LIMIT 10

┌─CounterID─┬───hits─┬─visits─┐
│   1143050 │ 523264 │  13665 │
│    731962 │ 475698 │ 102716 │
│    722545 │ 337212 │ 108187 │
│    722889 │ 252197 │  10547 │
│   2237260 │ 196036 │   9522 │
│  23057320 │ 147211 │   7689 │
│    722818 │  90109 │  17847 │
│     48221 │  85379 │   4652 │
│  19762435 │  77807 │   7026 │
│    722884 │  77492 │  11056 │
└───────────┴────────┴────────┘
1867
%%
1868

1869 1870
Subqueries don&#39;t allow you to set names or use them for referencing a column from a specific subquery.
The columns specified in USING must have the same names in both subqueries, and the other columns must be named differently. You can use aliases to change the names of columns in subqueries (the example uses the aliases &#39;hits&#39; and &#39;visits&#39;).
1871

1872
The USING clause specifies one or more columns to join, which establishes the equality of these columns. The list of columns is set without brackets. More complex join conditions are not supported.
1873

1874
The right table (the subquery result) resides in RAM. If there isn&#39;t enough memory, you can&#39;t run a JOIN.
1875

1876
Only one JOIN can be specified in a query (on a single level). To run multiple JOINs, you can put them in subqueries.
1877

1878
Each time a query is run with the same JOIN, the subquery is run again - the result is not cached. To avoid this, use the special &#39;Join&#39; table engine, which is a prepared array for joining that is always in RAM. For more information, see the section &quot;Table engines, Join&quot;.
1879

1880
In some cases, it is more efficient to use IN instead of JOIN. Among the various types of JOINs, the most efficient is ANY LEFT JOIN, then ANY INNER JOIN. The least efficient are ALL LEFT JOIN and ALL INNER JOIN.
1881

1882
If you need a JOIN for joining with dimension tables (these are relatively small tables that contain dimension properties, such as names for advertising campaigns), a JOIN might not be very convenient due to the bulky syntax and the fact that the right table is re-accessed for every query. For such cases, there is an &quot;external dictionaries&quot; feature that you should use instead of JOIN. For more information, see the section &quot;External dictionaries&quot;.
1883 1884 1885 1886


<h4>WHERE clause</h4>

1887 1888
If there is a WHERE clause, it must contain an expression with the UInt8 type. This is usually an expression with comparison and logical operators.
This expression will be used for filtering data before all other transformations.
1889

1890
If indexes are supported by the database table engine, the expression is evaluated on the ability to use indexes.
1891 1892 1893

<h4>PREWHERE clause</h4>

1894
This clause has the same meaning as the WHERE clause. The difference is in which data is read from the table. When using PREWHERE, first only the columns necessary for executing PREWHERE are read. Then the other columns are read that are needed for running the query, but only those blocks where the PREWHERE expression is true.
1895

1896
It makes sense to use PREWHERE if there are filtration conditions that are not suitable for indexes that are used by a minority of the columns in the query, but that provide strong data filtration. This reduces the volume of data to read.
1897

1898
For example, it is useful to write PREWHERE for queries that extract a large number of columns, but that only have filtration for a few columns.
1899

1900
PREWHERE is only supported by *MergeTree tables.
1901

1902
A query may simultaneously specify PREWHERE and WHERE. In this case, PREWHERE precedes WHERE.
1903

1904
Keep in mind that it does not make much sense for PREWHERE to only specify those columns that have an index, because when using an index, only the data blocks that match the index are read.
1905

1906
If the &#39;optimize_move_to_prewhere&#39; setting is set to 1 and PREWHERE is omitted, the system uses heuristics to automatically move parts of expressions from WHERE to PREWHERE.
1907 1908 1909 1910


<h4>GROUP BY clause</h4>

1911
This is one of the most important parts of a column-oriented DBMS.
1912

1913 1914
If there is a GROUP BY clause, it must contain a list of expressions. Each expression will be referred to here as a &quot;key&quot;.
All the expressions in the SELECT, HAVING, and ORDER BY clauses must be calculated from keys or from aggregate functions. In other words, each column selected from the table must be used either in keys or inside aggregate functions.
1915

1916
If a query contains only table columns inside aggregate functions, the GROUP BY clause can be omitted, and aggregation by an empty set of keys is assumed.
1917

1918
Example:
1919

1920
%%SELECT
1921 1922 1923
    count(),
    median(FetchTiming > 60 ? 60 : FetchTiming),
    count() - sum(Refresh)
1924
FROM hits%%
1925

1926
However, in contrast to standard SQL, if the table doesn&#39;t have any rows (either there aren&#39;t any at all, or there aren&#39;t any after using WHERE to filter), an empty result is returned, and not the result from one of the rows containing the initial values of aggregate functions.
1927

1928
As opposed to MySQL (and conforming to standard SQL), you can&#39;t get some value of some column that is not in a key or aggregate function (except constant expressions). To work around this, you can use the &#39;any&#39; aggregate function (get the first encountered value) or &#39;min/max&#39;.
1929

1930
Example:
1931

1932
%%SELECT
1933 1934 1935 1936
    domainWithoutWWW(URL) AS domain,
    count(),
    any(Title) AS title -- we take the first page title for each domain
FROM hits
1937
GROUP BY domain%%
1938

1939
For every different key value encountered, GROUP BY calculates a set of aggregate function values.
1940

1941
GROUP BY is not supported for array columns.
1942

1943
A constant can&#39;t be specified as arguments for aggregate functions. Example: sum(1). Instead of this, you can get rid of the constant. Example: count().
1944 1945 1946 1947


<h5>WITH TOTALS modifier</h5>

1948
If the WITH TOTALS modifier is specified, another row will be calculated. This row will have key columns containing default values (zeros or empty lines), and columns of aggregate functions with the values calculated across all the rows (the &quot;total&quot; values).
1949

1950
This extra row is output in JSON*, TabSeparated*, and Pretty* formats, separately from the other rows. In the other formats, this row is not output.
1951

1952
In JSON* formats, this row is output as a separate &#39;totals&#39; field. In TabSeparated formats, the row comes after the main result, preceded by an empty row (after the other data). In Pretty formats, the row is output as a separate table after the main result.
1953

1954 1955
WITH TOTALS can be run in different ways when HAVING is present. The behavior depends on the &#39;totals_mode&#39; setting.
By default, totals_mode = &#39;<b>before_having</b>&#39;. In this case, &#39;totals&#39; is calculated across all rows, including the ones that don&#39;t pass through HAVING and &#39;max_rows_to_group_by&#39;.
1956

1957
The other alternatives include only the rows that pass through HAVING in &#39;totals&#39;, and behave differently with the setting &#39;max_rows_to_group_by&#39; and &#39;group_by_overflow_mode = &#39;any&#39;&#39;.
1958

1959
<b>after_having_exclusive</b> - Don&#39;t include rows that didn&#39;t pass through &#39;max_rows_to_group_by&#39;. In other words, &#39;totals&#39; will have less than or the same number of rows as it would if &#39;max_rows_to_group_by&#39; were omitted.
1960

1961
<b>after_having_inclusive</b> - Include all the rows that didn&#39;t pass through &#39;max_rows_to_group_by&#39; in &#39;totals&#39;. In other words, &#39;totals&#39; will have more than or the same number of rows as it would if &#39;max_rows_to_group_by&#39; were omitted.
1962

1963
<b>after_having_auto</b> - Count the number of rows that passed through HAVING. If it is more than a certain amount (by default, 50%), include all the rows that didn&#39;t pass through &#39;max_rows_to_group_by&#39; in &#39;totals&#39;. Otherwise, do not include them.
1964

1965
<b>totals_auto_threshold</b> - By default, 0.5 is the coefficient for <b>after_having_auto</b>.
1966

1967
If &#39;max_rows_to_group_by&#39; and &#39;group_by_overflow_mode = &#39;any&#39;&#39; are not used, all variations of &#39;after_having&#39; are the same, and you can use any of them (for example, &#39;after_having_auto&#39;).
1968

1969
You can use WITH TOTALS in subqueries, including subqueries in the JOIN clause. In this case, the respective total values are combined.
1970 1971 1972 1973


<h4>HAVING clause</h4>

1974 1975
Allows filtering the result received after GROUP BY, similar to the WHERE clause.
WHERE and HAVING differ in that WHERE is performed before aggregation (GROUP BY), while HAVING is performed after it. If aggregation is not performed, HAVING can&#39;t be used.
1976 1977 1978 1979


<h4>ORDER BY clause</h4>

1980
The ORDER BY clause contains a list of expressions, which can each be assigned DESC or ASC (the sorting direction). If the direction is not specified, ASC is assumed. ASC is sorted in ascending order, and DESC in descending order. The sorting direction applies to a single expression, not to the entire list. Example: %%ORDER BY Visits DESC, SearchPhrase%%
1981

1982
For sorting by String values, you can specify collation (comparison). Example: %%ORDER BY SearchPhrase COLLATE &#39;tr&#39;%% - for sorting by keyword in ascending order, using the Turkish alphabet, case insensitive, assuming that strings are UTF-8 encoded. COLLATE can be specified or not for each expression in ORDER BY independently. If ASC or DESC is specified, COLLATE is specified after it. When using COLLATE, sorting is always case-insensitive.
1983

1984
We only recommend using COLLATE for final sorting of a small number of rows, since sorting with COLLATE is less efficient than normal sorting by bytes.
1985

1986 1987
Rows that have identical values for the list of sorting expressions are output in an arbitrary order, which can also be nondeterministic (different each time).
If the ORDER BY clause is omitted, the order of the rows is also undefined, and may be nondeterministic as well.
1988

1989
When floating point numbers are sorted, NaNs are separate from the other values. Regardless of the sorting order, NaNs come at the end. In other words, for ascending sorting they are placed as if they are larger than all the other numbers, while for descending sorting they are placed as if they are smaller than the rest.
1990

1991
Less RAM is used if a small enough LIMIT is specified in addition to ORDER BY. Otherwise, the amount of memory spent is proportional to the volume of data for sorting. For distributed query processing, if GROUP BY is omitted, sorting is partially done on remote servers, and the results are merged on the requestor server. This means that for distributed sorting, the volume of data to sort can be greater than the amount of memory on a single server.
1992

1993
If there is not enough RAM, it is possible to perform sorting in external memory (creating temporary files on a disk). Use the setting %%max_bytes_before_external_sort%% for this purpose. If it is set to 0 (the default), external sorting is disabled. If it is enabled, when the volume of data to sort reaches the specified number of bytes, the collected data is sorted and dumped into a temporary file. After all data is read, all the sorted files are merged and the results are output. Files are written to the /opt/clickhouse/tmp/ directory in the config (by default, but you can use the &#39;tmp_path&#39; parameter to change this setting).
1994

1995
Running a query may use more memory than &#39;max_bytes_before_external_sort&#39;. For this reason, this setting must have a value significantly smaller than &#39;max_memory_usage&#39;. As an example, if your server has 128 GB of RAM and you need to run a single query, set &#39;max_memory_usage&#39; to 100 GB, and &#39;max_bytes_before_external_sort&#39; to 80 GB.
1996

1997
External sorting works much less effectively than sorting in RAM.
1998 1999 2000

<h4>SELECT clause</h4>

2001 2002
The expressions specified in the SELECT clause are analyzed after the calculations for all the clauses listed above are completed.
More specifically, expressions are analyzed that are above the aggregate functions, if there are any aggregate functions. The aggregate functions and everything below them are calculated during aggregation (GROUP BY). These expressions work as if they are applied to separate rows in the result.
2003 2004 2005

<h4>DISTINCT clause</h4>

2006
If DISTINCT is specified, only a single row will remain out of all the sets of fully matching rows in the result.
2007 2008 2009
The result will be the same as if GROUP BY were specified across all the fields specified in SELECT without aggregate functions. But there are several differences from GROUP BY:
- DISTINCT can be applied together with GROUP BY.
- When ORDER BY is omitted and LIMIT is defined, the query stops running immediately after the required number of different rows has been read. In this case, using DISTINCT is much more optimal.
2010
- Data blocks are output as they are processed, without waiting for the entire query to finish running.
2011

2012
DISTINCT is not supported if SELECT has at least one array column.
2013 2014 2015

<h4>LIMIT clause</h4>

2016 2017
LIMIT m allows you to select the first &#39;m&#39; rows from the result.
LIMIT n, m allows you to select the first &#39;m&#39; rows from the result after skipping the first &#39;n&#39; rows.
2018

2019
&#39;n&#39; and &#39;m&#39; must be non-negative integers.
2020

2021
If there isn&#39;t an ORDER BY clause that explicitly sorts results, the result may be arbitrary and nondeterministic.
2022 2023 2024 2025


<h4>UNION ALL clause</h4>

2026
You can use UNION ALL to combine any number of queries. Example:
2027

2028
%%
2029 2030 2031 2032 2033 2034 2035 2036 2037 2038
SELECT CounterID, 1 AS table, toInt64(count()) AS c
    FROM test.hits
    GROUP BY CounterID

UNION ALL

SELECT CounterID, 2 AS table, sum(Sign) AS c
    FROM test.visits
    GROUP BY CounterID
    HAVING c > 0
2039
%%
2040

2041
Only UNION ALL is supported. The regular UNION (UNION DISTINCT) is not supported. If you need UNION DISTINCT, you can write SELECT DISTINCT from a subquery containing UNION ALL.
2042

2043
Queries that are parts of UNION ALL can be run simultaneously, and their results can be mixed together.
2044

2045
The structure of results (the number and type of columns) must match for the queries, but the column names can differ. In this case, the column names for the final result will be taken from the first query.
2046

2047
Queries that are parts of UNION ALL can&#39;t be enclosed in brackets. ORDER BY and LIMIT are applied to separate queries, not to the final result. If you need to apply a conversion to the final result, you can put all the queries with UNION ALL in a subquery in the FROM clause.
2048 2049 2050 2051


<h4>FORMAT clause</h4>

2052
Specify &#39;FORMAT format&#39; to get data in any specified format.
2053
You can use this for convenience, or for creating dumps. For more information, see the section &quot;Formats&quot;.
2054
If the FORMAT clause is omitted, the default format is used, which depends on both the settings and the interface used for accessing the DB. For the HTTP interface and the command-line client in batch mode, the default format is TabSeparated. For the command-line client in interactive mode, the default format is PrettyCompact (it has attractive and compact tables).
2055

2056
When using the command-line client, data is passed to the client in an internal efficient format. The client independently interprets the FORMAT clause of the query and formats the data itself (thus relieving the network and the server from the load).
2057 2058 2059 2060


<h4>IN operators</h4>

2061
The %%IN%%, %%NOT IN%%, %%GLOBAL IN%%, and %%GLOBAL NOT IN%% operators are covered separately, since their functionality is quite rich.
2062

2063
The left side of the operator is either a single column or a tuple.
2064

2065
Examples:
2066

2067 2068
%%SELECT UserID IN (123, 456) FROM ...%%
%%SELECT (CounterID, UserID) IN ((34, 123), (101500, 456)) FROM ...%%
2069

2070
If the left side is a single column that is in the index, and the right side is a set of constants, the system uses the index for processing the query.
2071

2072
Don&#39;t list too many values explicitly (i.e. millions). If a data set is large, put it in a temporary table (for example, see the section &quot;External data for query processing&quot;), then use a subquery.
2073

2074
The right side of the operator can be a set of constant expressions, a set of tuples with constant expressions (shown in the examples above), or the name of a database table or SELECT subquery in brackets.
2075

2076
If the right side of the operator is the name of a table (for example, %%UserID IN users%%), this is equivalent to the subquery %%UserID IN (SELECT * FROM users)%%. Use this when working with external data that is sent along with the query. For example, the query can be sent together with a set of user IDs loaded to the &#39;users&#39; temporary table, which should be filtered.
2077

2078
If the right side of the operator is a table name that has the Set engine (a prepared data set that is always in RAM), the data set will not be created over again for each query.
2079

2080 2081 2082
The subquery may specify more than one column for filtering tuples.
Example:
%%SELECT (CounterID, UserID) IN (SELECT CounterID, UserID FROM ...) FROM ...%%
2083

2084
The columns to the left and right of the %%IN%% operator should have the same type.
2085

2086 2087
Exception: If there is an array to the left of IN, it checks that at least one array item belongs to the data set.
For example, %%[1, 2, 3] IN (3, 4, 5)%% returns 1. This is somewhat illogical, but it is convenient for implementing certain Yandex.Metrica functionality.
2088

2089 2090
If there is an array to the left of NOT IN, it checks that at least one array item does not belong to the data set.
For example, %%[1, 2, 3] NOT IN (3, 4, 5)%% returns 1. This is completely illogical, so don&#39;t rely on this behavior. We recommend using higher-order functions instead. Example: <span class="inline-example">arrayAll(x -> x IN (3, 4, 5), [1, 2, 3])</span> returns 0 - it checks whether all the array items belong to the data set.
2091

2092 2093
The IN operator and subquery may occur in any part of the query, including in aggregate functions and lambda functions.
Example:
2094

2095
%%SELECT
2096 2097 2098 2099 2100 2101 2102 2103 2104 2105 2106 2107 2108 2109 2110 2111 2112 2113 2114 2115
    EventDate,
    avg(UserID IN
    (
        SELECT UserID
        FROM test.hits
        WHERE EventDate = toDate(&#39;2014-03-17&#39;)
    )) AS ratio
FROM test.hits
GROUP BY EventDate
ORDER BY EventDate ASC

┌──EventDate─┬────ratio─┐
│ 2014-03-17 │        1 │
│ 2014-03-18 │ 0.807696 │
│ 2014-03-19 │ 0.755406 │
│ 2014-03-20 │ 0.723218 │
│ 2014-03-21 │ 0.697021 │
│ 2014-03-22 │ 0.647851 │
│ 2014-03-23 │ 0.648416 │
└────────────┴──────────┘
2116 2117
%%
- for each day after March 17th, count the percentage of pageviews made by users who visited the site on March 17th.
2118

2119
A subquery in the IN clause is always run just one time on a single server. There are no dependent subqueries.
2120 2121 2122 2123


<h4>Distributed subqueries</h4>

2124
There are two versions of INs with subqueries (and for JOINs): the regular %%IN%% / %%JOIN%%, and %%GLOBAL IN%% / %%GLOBAL JOIN%%. They differ in how they are run for distributed query processing.
2125

2126
When using the regular %%IN%%, the query is sent to remote servers, and each of them runs the subqueries in the IN or JOIN clause.
2127

2128
When using %%GLOBAL IN%% / %%GLOBAL JOIN%%, first all the subqueries for %%GLOBAL IN%% / %%GLOBAL JOIN%% are run, and the results are collected in temporary tables. Then the temporary tables are sent to each remote server, where the queries are run using this temporary data.
2129

2130
For a non-distributed query, use the regular %%IN%% / %%JOIN%%.
2131 2132


2133
Be careful when using subqueries in the  %%IN%% / %%JOIN%% clauses for distributed query processing.
2134

2135
Let&#39;s look at some examples. Assume that each server in the cluster has a normal <b>local_table</b>. Each server also has a <b>distributed_table</b> table with the <b>Distributed</b> type, which looks at all the servers in the cluster.
2136

2137
For a query to the <b>distributed_table</b>, the query will be sent to all the remote servers and run on them using the <b>local_table</b>.
2138

2139 2140
For example, the query
%%SELECT uniq(UserID) FROM distributed_table%%
2141
will be sent to all the remote servers as
2142 2143
%%SELECT uniq(UserID) FROM local_table%%
and run on each of them in parallel, until it reaches the stage where intermediate results can be combined. Then the intermediate results will be returned to the requestor server and merged on it, and the final result will be sent to the client.
2144

2145 2146 2147
Now let&#39;s examine a query with IN:
%%SELECT uniq(UserID) FROM distributed_table WHERE CounterID = 101500 AND UserID IN (SELECT UserID FROM local_table WHERE CounterID = 34)%%
- calculates the overlap in the audiences of two websites.
2148

2149 2150 2151
This query will be sent to all the remote servers as
%%SELECT uniq(UserID) FROM local_table WHERE CounterID = 101500 AND UserID IN (SELECT UserID FROM local_table WHERE CounterID = 34)%%
In other words, the data set in the %%IN%% clause will be collected on each server independently, only across the data that is stored locally on each of the servers.
2152

2153
This will work correctly and optimally if you are prepared for this case and have spread data across the cluster servers such that the data for a single UserID resides entirely on a single server. In this case, all the necessary data will be available locally on each server. Otherwise, the result will be inaccurate. We refer to this variation of the query as &quot;local IN&quot;.
2154

2155 2156
To correct how the query works when data is spread randomly across the cluster servers, you could specify <b>distributed_table</b> inside a subquery. The query would look like this:
%%SELECT uniq(UserID) FROM distributed_table WHERE CounterID = 101500 AND UserID IN (SELECT UserID FROM distributed_table WHERE CounterID = 34)%%
2157

2158 2159
This query will be sent to all remote servers as
%%SELECT uniq(UserID) FROM local_table WHERE CounterID = 101500 AND UserID IN (SELECT UserID FROM distributed_table WHERE CounterID = 34)%%
2160
Each of the remote servers will start running the subquery. Since the subquery uses a distributed table, each remote server will re-send the subquery to every remote server, as
2161 2162
%%SELECT UserID FROM local_table WHERE CounterID = 34%%
For example, if you have a cluster of 100 servers, executing the entire query will require 10,000 elementary requests, which is generally considered unacceptable.
2163

2164 2165
In such cases, you should always use %%GLOBAL IN%% instead of %%IN%%. Let&#39;s look at how it works for the query
%%SELECT uniq(UserID) FROM distributed_table WHERE CounterID = 101500 AND UserID GLOBAL IN (SELECT UserID FROM distributed_table WHERE CounterID = 34)%%
2166

2167 2168
The requestor server will execute the subquery
%%SELECT UserID FROM distributed_table WHERE CounterID = 34%%
2169
and the result will be put in a temporary table in RAM. Then a query will be sent to each remote server as
2170 2171
%%SELECT uniq(UserID) FROM local_table WHERE CounterID = 101500 AND UserID GLOBAL IN _data1%%
and the temporary table &#39;_data1&#39; will be sent to every remote server together with the query (the name of the temporary table is implementation-defined).
2172

2173
This is more optimal than using the normal IN. However, keep the following points in mind:
2174

2175 2176
1. When creating a temporary table, data is not made unique. To reduce the volume of data transmitted over the network, specify %%DISTINCT%% in the subquery. (You don&#39;t need to do this for a normal IN.)
2. The temporary table will be sent to all the remote servers. Transmission does not account for network topology. For example, if 10 remote servers reside in a datacenter that is very remote in relation to the requestor server, the data will be sent 10 times over the channel to the remote datacenter. Try to avoid large data sets when using %%GLOBAL IN%%.
2177
3. When transmitting data to remote servers, restrictions on network bandwidth are not configurable. You might overload the network.
2178
4. Try to distribute data across servers so that you don&#39;t need to use %%GLOBAL IN%% on a regular basis.
2179
5. If you need to use %%GLOBAL IN%% often, plan the location of the ClickHouse cluster so that in each datacenter, there will be at least one replica of each shard, and there is a fast network between them - for possibility to process query with transferring data only inside datacenter.
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2181
It also makes sense to specify a local table in the %%GLOBAL IN%% clause, in case this local table is only available on the requestor server and you want to use data from it on remote servers.
2182 2183 2184 2185


<h4>Extreme values</h4>

2186
In addition to results, you can also get minimum and maximum values for the results columns. To do this, set the &#39;extremes&#39; setting to &#39;1&#39;. Minimums and maximums are calculated for numeric types, dates, and dates with times. For other columns, the default values are output.
2187

2188
An extra two rows are calculated - the minimums and maximums, respectively. These extra two rows are output in JSON*, TabSeparated*, and Pretty* formats, separate from the other rows. They are not output for other formats.
2189

2190
In JSON* formats, the extreme values are output in a separate &#39;extremes&#39; field. In TabSeparated formats, the row comes after the main result, and after &#39;totals&#39; if present. It is preceded by an empty row (after the other data). In Pretty formats, the row is output as a separate table after the main result, and after &#39;totals&#39; if present.
2191

2192
Extreme values are calculated for rows that have passed through LIMIT. However, when using &#39;LIMIT offset, size&#39;, the rows before &#39;offset&#39; are included in &#39;extremes&#39;. In stream requests, the result may also include a small number of rows that passed through LIMIT.
2193 2194 2195 2196


<h4>Notes</h4>

2197 2198
The GROUP BY and ORDER BY clauses do not support positional arguments. This contradicts MySQL, but conforms to standard SQL.
For example, &#39;GROUP BY 1, 2&#39; will be interpreted as grouping by constants (i.e. aggregation of all rows into one).
2199

2200
You can use synonyms (AS aliases) in any part of a query.
2201

2202
You can put an asterisk in any part of a query instead of an expression. When the query is analyzed, the asterisk is expanded to a list of all table columns (excluding the MATERIALIZED and ALIAS columns). There are only a few cases when using an asterisk is justified:
2203 2204 2205 2206 2207
- When creating a table dump.
- For tables containing just a few columns, such as system tables.
- For getting information about what columns are in a table. In this case, set &#39;LIMIT 1&#39;. But it is better to use the <b>DESC TABLE</b> query.
- When there is strong filtration on a small number of columns using PREWHERE.
- In subqueries (since columns that aren&#39;t needed for the external query are excluded from subqueries).
2208
In all other cases, we don&#39;t recommend using the asterisk, since it only gives you the drawbacks of a columnar DBMS instead of the advantages.
2209 2210 2211


</div>
2212
<div class="island">
2213 2214
<h1>External data for query processing</h1>
</div>
2215
<div class="island content">
2216

2217
ClickHouse allows sending a server the data that is needed for processing a query, together with a SELECT query. This data is put in a temporary table (see the section &quot;Temporary tables&quot;) and can be used in the query (for example, in IN operators).
2218

2219
For example, if you have a text file with important user identifiers, you can upload it to the server along with a query that uses filtration by this list.
2220

2221
If you need to run more than one query with a large volume of external data, don&#39;t use this feature. It is better to upload the data to the DB ahead of time.
2222

2223
External data can be uploaded using the command-line client (in non-interactive mode), or using the HTTP interface.
2224

2225
In the command-line client, you can specify a parameters section in the format
2226

2227
%%--external --file=... [--name=...] [--format=...] [--types=...|--structure=...]%%
2228

2229
You may have multiple sections like this, for the number of tables being transmitted.
2230 2231

<b>--external</b> - Marks the beginning of the section.
2232 2233
<b>--file</b> - Path to the file with the table dump, or %%-%%, which refers to stdin.
Only a single table can be retrieved from stdin.
2234

2235 2236 2237
The following parameters are optional:
<b>--name</b> - Name of the table. If omitted, %%_data%% is used.
<b>--format</b> - Data format in the file. If omitted, %%TabSeparated%% is used.
2238

2239 2240 2241
One of the following parameters is required:
<b>--types</b> - A comma-separated list of column types. For example, %%UInt64,String%%. Columns will be named %%_1%%, %%_2%%, ...
<b>--structure</b> - Table structure, in the format %%UserID UInt64, URL String%%. Defines the column names and types.
2242

2243
The files specified in %%file%% will be parsed by the format specified in %%format%%, using the data types specified in %%types%% or %%structure%%. The table will be uploaded to the server and accessible there as a temporary table with the name %%name%%.
2244

2245
Examples:
2246

2247
%%echo -ne &quot;1\n2\n3\n&quot; | clickhouse-client --query=&quot;SELECT count() FROM test.visits WHERE TraficSourceID IN _data&quot; --external --file=- --types=Int8
2248
849897
2249
%%
2250

2251
%%cat /etc/passwd | sed &#39;s/:/\t/g&#39; | clickhouse-client --query=&quot;SELECT shell, count() AS c FROM passwd GROUP BY shell ORDER BY c DESC&quot; --external --file=- --name=passwd --structure=&#39;login String, unused String, uid UInt16, gid UInt16, comment String, home String, shell String&#39;
2252 2253 2254 2255 2256
/bin/sh 20
/bin/false      5
/bin/bash       4
/usr/sbin/nologin       1
/bin/sync       1
2257
%%
2258

2259
When using the HTTP interface, external data is passed in the multipart/form-data format. Each table is transmitted as a separate file. The table name is taken from the file name. The &#39;query_string&#39; passes the parameters &#39;<i>name</i>_format&#39;, &#39;<i>name</i>_types&#39;, and &#39;<i>name</i>_structure&#39;, where <i>name</i> is the name of the table that these parameters correspond to. The meaning of the parameters is the same as when using the command-line client.
2260

2261
Example:
2262

2263
<pre class="text-example" style="overflow: scroll;">cat /etc/passwd | sed &#39;s/:/\t/g&#39; > passwd.tsv
2264 2265 2266 2267 2268 2269 2270 2271 2272

curl -F &#39;passwd=@passwd.tsv;&#39; &#39;http://localhost:8123/?query=SELECT+shell,+count()+AS+c+FROM+passwd+GROUP+BY+shell+ORDER+BY+c+DESC&amp;passwd_structure=login+String,+unused+String,+uid+UInt16,+gid+UInt16,+comment+String,+home+String,+shell+String&#39;
/bin/sh 20
/bin/false      5
/bin/bash       4
/usr/sbin/nologin       1
/bin/sync       1
</pre>

2273
For distributed query processing, the temporary tables are sent to all the remote servers.
2274 2275

</div>
2276
<div class="island">
2277 2278
<h1>Table engines</h1>
</div>
2279
<div class="island content">
2280

2281
The table engine (type of table) determines:
2282 2283 2284 2285 2286 2287
- How and where data is stored - where to write it to, and where to read it from.
- Which queries are supported, and how.
- Concurrent data access.
- Use of indexes, if present.
- Whether multithreaded request execution is possible.
- Data replication.
2288
- When reading data, the engine is only required to extract the necessary set of columns. However, in some cases, the query may be partially processed inside the table engine.
2289

2290
Note that for most serious tasks, you should use engines from the MergeTree family.
2291 2292


2293
==TinyLog==
2294

2295
The simplest table engine, which stores data on a disk.
2296 2297 2298 2299 2300 2301 2302 2303 2304
Each column is stored in a separate compressed file.
When writing, data is appended to the end of files.
Concurrent data access is not restricted in any way:
- If you are simultaneously reading from a table and writing to it in a different query, the read operation will complete with an error.
- If you are writing to a table in multiple queries simultaneously, the data will be broken.
The typical way to use this table is write-once: first just write the data one time, then read it as many times as needed.
Queries are executed in a single stream. In other words, this engine is intended for relatively small tables (recommended up to 1,000,000 rows).
It makes sense to use this table engine if you have many small tables, since it is simpler than the Log engine (fewer files need to be opened).
The situation when you have a large number of small tables guarantees poor productivity, but may already be used when working with another DBMS, and you may find it easier to switch to using TinyLog types of tables.
2305
Indexes are not supported.
2306

2307
In Yandex.Metrica, TinyLog tables are used for intermediary data that is processed in small batches.
2308 2309


2310
==Log==
2311

2312 2313
Log differs from TinyLog in that a small file of &quot;marks&quot; resides with the column files. These marks are written on every data block and contain offsets - where to start reading the file in order to skip the specified number of rows. This makes it possible to read table data in multiple threads. For concurrent data access, the read operations can be performed simultaneously, while write operations block reads and each other.
The Log engine does not support indexes. Similarly, if writing to a table failed, the table is broken, and reading from it returns an error. The Log engine is appropriate for temporary data, write-once tables, and for testing or demonstration purposes.
2314 2315


2316
==Memory==
2317

2318
The Memory engine stores data in RAM, in uncompressed form. Data is stored in exactly the same form as it is received when read. In other words, reading from this table is completely free.
2319 2320 2321 2322
Concurrent data access is synchronized. Locks are short: read and write operations don&#39;t block each other.
Indexes are not supported. Reading is parallelized.
Maximal productivity (over 10 GB/sec) is reached on simple queries, because there is no reading from the disk, decompressing, or deserializing data. (We should note that in many cases, the productivity of the MergeTree engine is almost as high.)
When restarting a server, data disappears from the table and the table becomes empty.
2323
Normally, using this table engine is not justified. However, it can be used for tests, and for tasks where maximum speed is required on a relatively small number of rows (up to approximately 100,000,000).
2324

2325
The Memory engine is used by the system for temporary tables with external query data (see the section &quot;External data for processing a query&quot;), and for implementing GLOBAL IN (see the section &quot;IN operators&quot;).
2326 2327


2328
==Merge==
2329

2330
The Merge engine (not to be confused with MergeTree) does not store data itself, but allows reading from any number of other tables simultaneously.
2331
Reading is automatically parallelized. Writing to a table is not supported. When reading, the indexes of tables that are actually being read are used, if they exist.
2332
The Merge engine accepts parameters: the database name and a regular expression for tables. Example:
2333

2334
%%Merge(hits, &#39;^WatchLog&#39;)%%
2335

2336
- Data will be read from the tables in the &#39;hits&#39; database with names that match the regex &#39;^WatchLog&#39;.
2337

2338
Instead of the database name, you can use a constant expression that returns a string. For example, %%currentDatabase()%%.
2339

2340
Regular expressions are re2 (similar to PCRE), case-sensitive. See the notes about escaping symbols in regular expressions in the &quot;match&quot; section.
2341

2342 2343
When selecting tables to read, the Merge table itself will not be selected, even if it matches the regex. This is to avoid loops.
It is possible to create two Merge tables that will endlessly try to read each others&#39; data. But don&#39;t do this.
2344

2345
The typical way to use the Merge engine is for working with a large number of TinyLog tables as if with a single table.
2346

2347
===Virtual columns===
2348

2349
Virtual columns are columns that are provided by the table engine, regardless of the table definition. In other words, these columns are not specified in CREATE TABLE, but they are accessible for SELECT.
2350

2351
Virtual columns differ from normal columns in the following ways:
2352 2353 2354 2355
- They are not specified in table definitions.
- Data can&#39;t be added to them with INSERT.
- When using INSERT without specifying the list of columns, virtual columns are ignored.
- They are not selected when using the asterisk (SELECT *).
2356
- Virtual columns are not shown in SHOW CREATE TABLE and DESC TABLE queries.
2357

2358
A Merge table contains the virtual column <b>_table</b> of the String type. (If the table already has a &#39;_table&#39; column, the virtual column is named &#39;_table1&#39;, and if it already has &#39;_table1&#39;, it is named &#39;_table2&#39;, and so on.) It contains the name of the table that data was read from.
2359

2360
If the WHERE or PREWHERE clause contains conditions for the &#39;_table&#39; column that do not depend on other table columns (as one of the conjunction elements, or as an entire expression), these conditions are used as an index. The conditions are performed on a data set of table names to read data from, and the read operation will be performed from only those tables that the condition was triggered on.
2361 2362


2363
==Distributed==
2364

2365
The Distributed engine does not store data itself, but allows distributed query processing on multiple servers.
2366 2367
Reading is automatically parallelized. During a read, the table indexes on remote servers are used, if there are any.
The Distributed engine accepts parameters: the cluster name in the server&#39;s config file, the name of a remote database, the name of a remote table, and (optionally) a sharding key.
2368
Example:
2369

2370
%%Distributed(calcs, default, hits[, sharding_key])%%
2371

2372
- Data will be read from all servers in the &#39;calcs&#39; cluster, from the &#39;default.hits&#39; table located on every server in the cluster.
2373
Data is not only read, but is partially processed on the remote servers (to the extent that this is possible).
2374
For example, for a query with GROUP BY, data will be aggregated on remote servers, and the intermediate states of aggregate functions will be sent to the requestor server. Then data will be further aggregated.
2375

2376
Instead of the database name, you can use a constant expression that returns a string. For example, %%currentDatabase()%%.
2377

2378
calcs - The cluster name in the server&#39;s config file.
2379

2380
Clusters are set like this:
2381

2382
%%
2383 2384 2385 2386 2387 2388 2389 2390 2391 2392 2393 2394 2395 2396 2397 2398 2399 2400 2401 2402 2403 2404 2405 2406 2407 2408 2409 2410 2411 2412
&lt;remote_servers>
	&lt;logs>
		&lt;shard>
			&lt;!-- Optional. Shard weight when writing data. By default, 1. -->
			&lt;weight>1&lt;/weight>
			&lt;!-- Optional. Whether to write data to just one of the replicas. By default, false - write data to all of the replicas. -->
			&lt;internal_replication>false&lt;/internal_replication>
			&lt;replica>
				&lt;host>example01-01-1&lt;/host>
				&lt;port>9000&lt;/port>
			&lt;/replica>
			&lt;replica>
				&lt;host>example01-01-2&lt;/host>
				&lt;port>9000&lt;/port>
			&lt;/replica>
		&lt;/shard>
		&lt;shard>
			&lt;weight>2&lt;/weight>
			&lt;internal_replication>false&lt;/internal_replication>
			&lt;replica>
				&lt;host>example01-02-1&lt;/host>
				&lt;port>9000&lt;/port>
			&lt;/replica>
			&lt;replica>
				&lt;host>example01-02-2&lt;/host>
				&lt;port>9000&lt;/port>
			&lt;/replica>
		&lt;/shard>
	&lt;/logs>
&lt;/remote_servers>
2413
%%
2414

2415 2416
Here a cluster is defined with the name &#39;logs&#39; that consists of two shards, each of which contains two replicas. Shards refer to the servers that contain different parts of the data (in order to read all the data, you must access all the shards).
Replicas are duplicating servers (in order to read all the data, you can access the data on any one of the replicas).
2417

2418
For each server, there are several parameters: mandatory: 'host', 'port', and optional: 'user', 'password'.
2419 2420 2421
<b>host</b> - address of remote server. May be specified as domain name or IPv4 or IPv6 address. If you specify domain, server will perform DNS lookup at startup, and result will be cached till server shutdown. If DNS request is failed, server won't start. If you are changing DNS records, restart the server for new records to take effect.
<b>port</b> - TCP-port for interserver communication (tcp_port in configuration file, usually 9000). Don't get confused with http_port.
<b>user</b> - user name to connect to remote server. By default user is 'default'. This user must have access rights to connect to remote server. Access rights are managed in users.xml configuration file. For additional info, consider "Access rights" section.
2422
<b>password</b> - password to log in to remote server, in plaintext. Default is empty string.
2423

2424
When specifying replicas, one of the available replicas will be selected for each of the shards when reading. You can configure the algorithm for load balancing (the preference for which replica to access) - see the &#39;load_balancing&#39; setting.
2425
If the connection with the server is not established, there will be an attempt to connect with a short timeout. If the connection failed, the next replica will be selected, and so on for all the replicas. If the connection attempt failed for all the replicas, the attempt will be repeated the same way, several times.
2426
This works in favor of resiliency, but does not provide complete fault tolerance: a remote server might accept the connection, but might not work, or work poorly.
2427

2428
You can specify just one of the shards (in this case, query processing should be called remote, rather than distributed) or up to any number of shards. In each shard, you can specify from one to any number of replicas. You can specify a different number of replicas for each shard.
2429

2430
You can specify as many clusters as you wish in the configuration.
2431

2432
To view your clusters, use the &#39;system.clusters&#39; table.
2433

2434
The Distributed engine allows working with a cluster like a local server. However, the cluster is inextensible: you must write its configuration in the server config file (even better, for all the cluster&#39;s servers).
2435

2436
There is no support for Distributed tables that look at other Distributed tables (except in cases when a Distributed table only has one shard). As an alternative, make the Distributed table look at the &quot;final&quot; tables.
2437

2438
The Distributed engine requires writing clusters to the config file. Adding clusters and servers requires restarting. If you need to send a query to an unknown set of shards and replicas each time, you don&#39;t need to create a Distributed table - use the &#39;remote&#39; table function instead. See the section &quot;Table functions&quot;.
2439

2440
There are two methods for writing data to a cluster:
2441

2442
First, you can define which servers to write which data to, and perform the write directly on each shard. In other words, perform INSERT in the tables that the distributed table &quot;looks at&quot;.
2443
This is the most flexible solution - you can use any sharding scheme, which could be non-trivial due to the requirements of the subject area.
2444
This is also the most optimal solution, since data can be written to different shards completely independently.
2445

2446 2447
Second, you can perform INSERT in a Distributed table. In this case, the table will distribute the inserted data across servers itself.
In order to write to a Distributed table, it must have a sharding key set (the last parameter). In addition, if there is only one shard, the write operation works without specifying the sharding key, since it doesn&#39;t have any meaning in this case.
2448

2449
Each shard can have a weight defined in the config file. By default, the weight is equal to one. Data is distributed across shards in the amount proportional to the shard weight. For example, if there are two shards and the first has a weight of 9 while the second has a weight of 10, the first will be sent 9 / 19 parts of the rows, and the second will be sent 10 / 19.
2450

2451
Each shard can have the &#39;internal_replication&#39; parameter defined in the config file.
2452

2453
If this parameter is set to &#39;true&#39;, the write operation selects the first healthy replica and writes data to it. Use this alternative if the Distributed table &quot;looks at&quot; replicated tables. In other words, if the table where data will be written is going to replicate them itself.
2454

2455
If it is set to &#39;false&#39; (the default), data is written to all replicas. In essence, this means that the Distributed table replicates data itself. This is worse than using replicated tables, because the consistency of replicas is not checked, and over time they will contain slightly different data.
2456

2457
To select the shard that a row of data is sent to, the sharding expression is analyzed, and its remainder is taken from dividing it by the total weight of the shards. The row is sent to the shard that corresponds to the half-interval of the remainders from &#39;prev_weight&#39; to &#39;prev_weights + weight&#39;, where &#39;prev_weights&#39; is the total weight of the shards with the smallest number, and &#39;weight&#39; is the weight of this shard. For example, if there are two shards, and the first has a weight of 9 while the second has a weight of 10, the row will be sent to the first shard for the remainders from the range [0, 9), and to the second for the remainders from the range [10, 19).
2458

2459
The sharding expression can be any expression from constants and table columns that returns an integer. For example, you can use the expression &#39;rand()&#39; for random distribution of data, or &#39;UserID&#39; for distribution by the remainder from dividing the user&#39;s ID (then the data of a single user will reside on a single shard, which simplifies running IN and JOIN by users). If one of the columns is not distributed evenly enough, you can wrap it in a hash function: intHash64(UserID).
2460

2461
A simple remainder from division is a limited solution for sharding and isn&#39;t always appropriate. It works for medium and large volumes of data (dozens of servers), but not for very large volumes of data (hundreds of servers or more). In the latter case, use the sharding scheme required by the subject area, rather than using entries in Distributed tables.
2462

2463
When using Replicated tables, it is possible to reshard data - look at "Resharding" section. But in many cases, better to do without it. SELECT queries are sent to all the shards, and work regardless of how data is distributed across the shards (they can be distributed completely randomly). When you add a new shard, you don&#39;t have to transfer the old data to it. You can write new data with a heavier weight - the data will be distributed slightly unevenly, but queries will work correctly and efficiently.
2464

2465
You should be concerned about the sharding scheme in the following cases:
2466
- Queries are used that require joining data (IN or JOIN) by a specific key. If data is sharded by this key, you can use local IN or JOIN instead of GLOBAL IN or GLOBAL JOIN, which is much more efficient.
2467
- A large number of servers is used (hundreds or more) with a large number of small queries (queries of individual clients - websites, advertisers, or partners). In order for the small queries to not affect the entire cluster, it makes sense to locate data for a single client on a single shard. Alternatively, as we&#39;ve done in Yandex.Metrica, you can set up bi-level sharding: divide the entire cluster into &quot;layers&quot;, where a layer may consist of multiple shards. Data for a single client is located on a single layer, but shards can be added to a layer as necessary, and data is randomly distributed within them. Distributed tables are created for each layer, and a single shared distributed table is created for global queries.
2468

2469 2470
Data is written asynchronously. For an INSERT to a Distributed table, the data block is just written to the local file system. The data is sent to the remote servers in the background as soon as possible. You should check whether data is sent successfully by checking the list of files (data waiting to be sent) in the table directory:
/opt/clickhouse/data/<i>database</i>/<i>table</i>/.
2471

2472
If the server ceased to exist or had a rough restart (for example, after a device failure) after an INSERT to a Distributed table, the inserted data might be lost. If a damaged data part is detected in the table directory, it is transferred to the &#39;broken&#39; subdirectory and no longer used.
2473 2474


2475
==MergeTree==
2476

2477 2478
The MergeTree engine supports an index by primary key and by date, and provides the possibility to update data in real time.
This is the most advanced table engine in ClickHouse. Don&#39;t confuse it with the Merge engine.
2479

2480 2481
The engine accepts parameters: the name of a Date type column containing the date, a sampling expression (optional), a tuple that defines the table&#39;s primary key, and the index granularity.
Example:
2482

2483 2484
Example without sampling support:
%%MergeTree(EventDate, (CounterID, EventDate), 8192)%%
2485

2486 2487
Example with sampling support:
%%MergeTree(EventDate, intHash32(UserID), (CounterID, EventDate, intHash32(UserID)), 8192)%%
2488

2489
A MergeTree type table must have a separate column containing the date. In this example, it is the &#39;EventDate&#39; column. The type of the date column must be &#39;Date&#39; (not &#39;DateTime&#39;).
2490

2491
The primary key may be a tuple from any expressions (usually this is just a tuple of columns), or a single expression.
2492

2493
The sampling expression (optional) can be any expression. It must also be present in the primary key. The example uses a hash of user IDs to pseudo-randomly disperse data in the table for each CounterID and EventDate. In other words, when using the SAMPLE clause in a query, you get an evenly pseudo-random sample of data for a subset of users.
2494

2495
The table is implemented as a set of parts. Each part is sorted by the primary key. In addition, each part has the minimum and maximum date assigned. When inserting in the table, a new sorted part is created. The merge process is periodically initiated in the background. When merging, several parts are selected, usually the smallest ones, and then merged into one large sorted part.
2496

2497
In other words, incremental sorting occurs when inserting to the table. Merging is implemented so that the table always consists of a small number of sorted parts, and the merge itself doesn&#39;t do too much work.
2498

2499
During insertion, data belonging to different months is separated into different parts. The parts that correspond to different months are never combined. The purpose of this is to provide local data modification (for ease in backups).
2500

2501
Parts are combined up to a certain size threshold, so there aren&#39;t any merges that are too long.
2502

2503
For each part, an index file is also written. The index file contains the primary key value for every &#39;index_granularity&#39; row in the table. In other words, this is an abbreviated index of sorted data.
2504

2505
For columns, &quot;marks&quot; are also written to each &#39;index_granularity&#39; row so that data can be read in a specific range.
2506

2507
When reading from a table, the SELECT query is analyzed for whether indexes can be used. An index can be used if the WHERE or PREWHERE clause has an expression (as one of the conjunction elements, or entirely) that represents an equality or inequality comparison operation, or if it has IN above columns that are in the primary key or date, or Boolean operators over them.
2508

2509
Thus, it is possible to quickly run queries on one or many ranges of the primary key. In the example given, queries will work quickly for a specific counter, for a specific counter and range of dates, for a specific counter and date, for multiple counters and a range of dates, and so on.
2510

2511 2512 2513
%%SELECT count() FROM table WHERE EventDate = toDate(now()) AND CounterID = 34%%
%%SELECT count() FROM table WHERE EventDate = toDate(now()) AND (CounterID = 34 OR CounterID = 42)%%
%%SELECT count() FROM table WHERE ((EventDate >= toDate(&#39;2014-01-01&#39;) AND EventDate &lt;= toDate(&#39;2014-01-31&#39;)) OR EventDate = toDate(&#39;2014-05-01&#39;)) AND CounterID IN (101500, 731962, 160656) AND (CounterID = 101500 OR EventDate != toDate(&#39;2014-05-01&#39;))%%
2514

2515
All of these cases will use the index by date and by primary key. The index is used even for complex expressions. Reading from the table is organized so that using the index can&#39;t be slower than a full scan.
2516

2517 2518
In this example, the index can&#39;t be used:
%%SELECT count() FROM table WHERE CounterID = 34 OR URL LIKE &#39;%upyachka%&#39;%%
2519

2520
The index by date only allows reading those parts that contain dates from the desired range. However, a data part may contain data for many dates (up to an entire month), while within a single part the data is ordered by the primary key, which might not contain the date as the first column. Because of this, using a query with only a date condition that does not specify the primary key prefix will cause more data to be read than for a single date.
2521

2522
For concurrent table access, we use multi-versioning. In other words, when a table is simultaneously read and updated, data is read from a set of parts that is current at the time of the query. There are no lengthy locks. Inserts do not get in the way of read operations.
2523

2524
Reading from a table is automatically parallelized.
2525

2526
The OPTIMIZE query is supported, which calls an extra merge step.
2527

2528
You can use a single large table and continually add data to it in small chunks - this is what MergeTree is intended for.
2529

2530
Data replication is possible for all types of tables in the MergeTree family (see the section &quot;Data replication&quot;).
2531 2532


2533
==CollapsingMergeTree==
2534

2535
This engine differs from MergeTree in that it allows automatic deletion, or &quot;collapsing&quot; certain pairs of rows when merging.
2536

2537
Yandex.Metrica has normal logs (such as hit logs) and change logs. Change logs are used for incrementally calculating statistics on data that is constantly changing. Examples are the log of session changes, or logs of changes to user histories. Sessions are constantly changing in Yandex.Metrica. For example, the number of hits per session increases. We refer to changes in any object as a pair (?old values, ?new values). Old values may be missing if the object was created. New values may be missing if the object was deleted. If the object was changed, but existed previously and was not deleted, both values are present. In the change log, one or two entries are made for each change. Each entry contains all the attributes that the object has, plus a special attribute for differentiating between the old and new values. When objects change, only the new entries are added to the change log, and the existing ones are not touched.
2538

2539
The change log makes it possible to incrementally calculate almost any statistics. To do this, we need to consider &quot;new&quot; rows with a plus sign, and &quot;old&quot; rows with a minus sign. In other words, incremental calculation is possible for all statistics whose algebraic structure contains an operation for taking the inverse of an element. This is true of most statistics. We can also calculate &quot;idempotent&quot; statistics, such as the number of unique visitors, since the unique visitors are not deleted when making changes to sessions.
2540

2541
This is the main concept that allows Yandex.Metrica to work in real time.
2542

2543
CollapsingMergeTree accepts an additional parameter - the name of an Int8-type column that contains the row&#39;s &quot;sign&quot;. Example:
2544

2545
%%CollapsingMergeTree(EventDate, (CounterID, EventDate, intHash32(UniqID), VisitID), 8192, Sign)%%
2546

2547
Here, &#39;Sign&#39; is a column containing -1 for &quot;old&quot; values and 1 for &quot;new&quot; values.
2548

2549
When merging, each group of consecutive identical primary key values (columns for sorting data) is reduced to no more than one row with the column value &#39;sign_column = -1&#39; (the &quot;negative row&quot;) and no more than one row with the column value &#39;sign_column = 1&#39; (the &quot;positive row&quot;). In other words, entries from the change log are collapsed.
2550

2551
If the number of positive and negative rows matches, the first negative row and the last positive row are written.
2552 2553
If there is one more positive row than negative rows, only the last positive row is written.
If there is one more negative row than positive rows, only the first negative row is written.
2554
Otherwise, there will be a logical error and none of the rows will be written. (A logical error can occur if the same section of the log was accidentally inserted more than once. The error is just recorded in the server log, and the merge continues.)
2555

2556
Thus, collapsing should not change the results of calculating statistics.
2557
Changes are gradually collapsed so that in the end only the last value of almost every object is left.
2558
Compared to MergeTree, the CollapsingMergeTree engine allows a multifold reduction of data volume.
2559

2560
There are several ways to get completely &quot;collapsed&quot; data from a CollapsingMergeTree table:
2561
1. Write a query with GROUP BY and aggregate functions that accounts for the sign. For example, to calculate quantity, write &#39;sum(Sign)&#39; instead of &#39;count()&#39;. To calculate the sum of something, write &#39;sum(Sign * x)&#39; instead of &#39;sum(x)&#39;, and so on, and also add &#39;HAVING sum(Sign) > 0&#39;. Not all amounts can be calculated this way. For example, the aggregate functions &#39;min&#39; and &#39;max&#39; can&#39;t be rewritten.
2562
2. If you must extract data without aggregation (for example, to check whether rows are present whose newest values match certain conditions), you can use the FINAL modifier for the FROM clause. This approach is significantly less efficient.
2563 2564


2565
==SummingMergeTree==
2566

2567
This engine differs from MergeTree in that it totals data while merging.
2568

2569
%%SummingMergeTree(EventDate, (OrderID, EventDate, BannerID, ...), 8192)%%
2570

2571
The columns to total are implicit. When merging, all rows with the same primary key value (in the example, OrderId, EventDate, BannerID, ...) have their values totaled in numeric columns that are not part of the primary key.
2572

2573
%%SummingMergeTree(EventDate, (OrderID, EventDate, BannerID, ...), 8192, (Shows, Clicks, Cost, ...))%%
2574

2575
The columns to total are set explicitly (the last parameter - Shows, Clicks, Cost, ...). When merging, all rows with the same primary key value have their values totaled in the specified columns. The specified columns also must be numeric and must not be part of the primary key.
2576

2577
If the values were null in all of these columns, the row is deleted. (The exception is cases when the data part would not have any rows left in it.)
2578

2579
For the other rows that are not part of the primary key, the first value that occurs is selected when merging.
2580

2581
Summation is not performed for a read operation. If it is necessary, write the appropriate GROUP BY.
2582

2583
In addition, a table can have nested data structures that are processed in a special way.
2584 2585 2586 2587
If the name of a nested table ends in &#39;Map&#39; and it contains at least two columns that meet the following criteria:
- for the first table, numeric ((U)IntN, Date, DateTime), we&#39;ll refer to it as &#39;key&#39;
- for other tables, arithmetic ((U)IntN, Float32/64), we&#39;ll refer to it as &#39;(values...)&#39;
then this nested table is interpreted as a mapping of key => (values...), and when merging its rows, the elements of two data sets are merged by &#39;key&#39; with a summation of the corresponding (values...).
2588
Examples:
2589

2590
%%
2591 2592 2593 2594
[(1, 100)] + [(2, 150)] -> [(1, 100), (2, 150)]
[(1, 100)] + [(1, 150)] -> [(1, 250)]
[(1, 100)] + [(1, 150), (2, 150)] -> [(1, 250), (2, 150)]
[(1, 100), (2, 150)] + [(1, -100)] -> [(2, 150)]
2595
%%
2596

2597
For nested data structures, you don&#39;t need to specify the columns as a list of columns for totaling.
2598

2599
This table engine is not particularly useful. Remember that when saving just pre-aggregated data, you lose some of the system&#39;s advantages.
2600 2601


2602
==AggregatingMergeTree==
2603

2604
This engine differs from MergeTree in that the merge combines the states of aggregate functions stored in the table for rows with the same primary key value.
2605

2606
In order for this to work, it uses the AggregateFunction data type and the -State and -Merge modifiers for aggregate functions. Let&#39;s examine it more closely.
2607

2608 2609
There is an AggregateFunction data type, which is a parametric data type. As parameters, the name of the aggregate function is passed, then the types of its arguments.
Examples:
2610

2611
%%CREATE TABLE t
2612 2613 2614 2615 2616
(
    column1 AggregateFunction(uniq, UInt64),
    column2 AggregateFunction(anyIf, String, UInt8),
    column3 AggregateFunction(quantiles(0.5, 0.9), UInt64)
) ENGINE = ...
2617
%%
2618

2619
This type of column stores the state of an aggregate function.
2620

2621 2622
To get this type of value, use aggregate functions with the &#39;State&#39; suffix.
Example: uniqState(UserID), quantilesState(0.5, 0.9)(SendTiming) - in contrast to the corresponding &#39;uniq&#39; and &#39;quantiles&#39; functions, these functions return the state, rather than the prepared value. In other words, they return an AggregateFunction type value.
2623

2624
An AggregateFunction type value can&#39;t be output in Pretty formats. In other formats, these types of values are output as implementation-specific binary data. The AggregateFunction type values are not intended for output or saving in a dump.
2625

2626 2627
The only useful thing you can do with AggregateFunction type values is combine the states and get a result, which essentially means to finish aggregation. Aggregate functions with the &#39;Merge&#39; suffix are used for this purpose.
Example: uniqMerge(UserIDState), where UserIDState has the AggregateFunction type.
2628

2629 2630
In other words, an aggregate function with the &#39;Merge&#39; suffix takes a set of states, combines them, and returns the result.
As an example, these two queries return the same result:
2631

2632
%%SELECT uniq(UserID) FROM table%%
2633

2634
%%SELECT uniqMerge(state) FROM (SELECT uniqState(UserID) AS state FROM table GROUP BY RegionID)%%
2635

2636
There is an AggregatingMergeTree engine. Its job during a merge is to combine the states of aggregate functions from different table rows with the same primary key value.
2637

2638
You can&#39;t use a normal INSERT to insert a row in a table containing AggregateFunction columns, because you can&#39;t explicitly define the AggregateFunction value. Instead, use INSERT SELECT with &#39;-State&#39; aggregate functions for inserting data.
2639

2640
With SELECT from an AggregatingMergeTree table, use GROUP BY and aggregate functions with the &#39;-Merge&#39; modifier in order to complete data aggregation.
2641

2642
You can use AggregatingMergeTree tables for incremental data aggregation, including for aggregated materialized views.
2643

2644 2645
Example:
Creating a materialized AggregatingMergeTree view that tracks the &#39;test.visits&#39; table:
2646

2647
%%
2648 2649 2650 2651 2652 2653 2654 2655 2656
CREATE MATERIALIZED VIEW test.basic
ENGINE = AggregatingMergeTree(StartDate, (CounterID, StartDate), 8192)
AS SELECT
    CounterID,
    StartDate,
    sumState(Sign)    AS Visits,
    uniqState(UserID) AS Users
FROM test.visits
GROUP BY CounterID, StartDate;
2657
%%
2658

2659
Inserting data in the &#39;test.visits&#39; table. Data will also be inserted in the view, where it will be aggregated:
2660

2661
%%
2662
INSERT INTO test.visits ...
2663
%%
2664

2665
Performing SELECT from the view using GROUP BY to finish data aggregation:
2666

2667
%%
2668 2669 2670 2671 2672 2673 2674
SELECT
    StartDate,
    sumMerge(Visits) AS Visits,
    uniqMerge(Users) AS Users
FROM test.basic
GROUP BY StartDate
ORDER BY StartDate;
2675
%%
2676

2677
You can create a materialized view like this and assign a normal view to it that finishes data aggregation.
2678

2679
Note that in most cases, using AggregatingMergeTree is not justified, since queries can be run efficiently enough on non-aggregated data.
2680 2681


2682
==Null==
2683

2684
When writing to a Null table, data is ignored. When reading from a Null table, the response is empty.
2685

2686
However, you can create a materialized view on a Null table, so the data written to the table will end up in the view.
2687 2688


2689
==View==
2690

2691
Used for implementing views (for more information, see the CREATE VIEW query). It does not store data, but only stores the specified SELECT query. When reading from a table, it runs this query (and deletes all unnecessary columns from the query).
2692 2693


2694
==MaterializedView==
2695

2696
Used for implementing materialized views (for more information, see CREATE MATERIALIZED VIEW). For storing data, it uses a different engine that was specified when creating the view. When reading from a table, it just uses this engine.
2697 2698


2699
==Set==
2700

2701
A data set that is always in RAM. It is intended for use on the right side of the IN operator (see the section &quot;IN operators&quot;).
2702

2703 2704
You can use INSERT to insert data in the table. New elements will be added to the data set, while duplicates will be ignored.
But you can&#39;t perform SELECT from the table. The only way to retrieve data is by using it in the right half of the IN operator.
2705

2706
Data is always located in RAM. For INSERT, the blocks of inserted data are also written to the directory of tables on the disk. When starting the server, this data is loaded to RAM. In other words, after restarting, the data remains in place.
2707

2708
For a rough server restart, the block of data on the disk might be lost or damaged. In the latter case, you may need to manually delete the file with damaged data.
2709 2710


2711
==Join==
2712

2713
A prepared data structure for JOIN that is always located in RAM.
2714

2715
%%Join(ANY|ALL, LEFT|INNER, k1[, k2, ...])%%
2716

2717
Engine parameters:  ANY|ALL - strictness, and LEFT|INNER - the type. These parameters are set without quotes and must match the JOIN that the table will be used for. k1, k2, ... are the key columns from the USING clause that the join will be made on.
2718

2719
The table can&#39;t be used for GLOBAL JOINs.
2720

2721
You can use INSERT to add data to the table, similar to the Set engine. For ANY, data for duplicated keys will be ignored. For ALL, it will be counted. You can&#39;t perform SELECT directly from the table. The only way to retrieve data is to use it as the &quot;right-hand&quot; table for JOIN.
2722

2723
Storing data on the disk is the same as for the Set engine.
2724 2725


2726
==Buffer==
2727

2728
Buffers the data to write in RAM, periodically flushing it to another table. During the read operation, data is read from the buffer and the other table simultaneously.
2729

2730
%%Buffer(database, table, num_layers, min_time, max_time, min_rows, max_rows, min_bytes, max_bytes)%%
2731

2732
Engine parameters:
2733 2734
database, table - The table to flush data to. Instead of the database name, you can use a constant expression that returns a string.
num_layers - The level of parallelism. Physically, the table will be represented as &#39;num_layers&#39; of independent buffers. The recommended value is 16.
2735
min_time, max_time, min_rows, max_rows, min_bytes, and max_bytes are conditions for flushing data from the buffer.
2736

2737
Data is flushed from the buffer and written to the destination table if all the &#39;min&#39; conditions or at least one &#39;max&#39; condition are met.
2738 2739
min_time, max_time - Condition for the time in seconds from the moment of the first write to the buffer.
min_rows, max_rows - Condition for the number of rows in the buffer.
2740
min_bytes, max_bytes - Condition for the number of bytes in the buffer.
2741

2742
During the write operation, data is inserted to a &#39;num_layers&#39; number of random buffers. Or, if the data part to insert is large enough (greater than &#39;max_rows&#39; or &#39;max_bytes&#39;), it is written directly to the destination table, omitting the buffer.
2743

2744
The conditions for flushing the data are calculated separately for each of the &#39;num_layers&#39; buffers. For example, if num_layers = 16 and max_bytes = 100000000, the maximum RAM consumption is 1.6 GB.
2745

2746
Example:
2747

2748
%%CREATE TABLE merge.hits_buffer AS merge.hits ENGINE = Buffer(merge, hits, 16, 10, 100, 10000, 1000000, 10000000, 100000000)%%
2749

2750
Creating a &#39;merge.hits_buffer&#39; table with the same structure as &#39;merge.hits&#39; and using the Buffer engine. When writing to this table, data is buffered in RAM and later written to the &#39;merge.hits&#39; table. 16 buffers are created. The data in each of them is flushed if either 100 seconds have passed, or one million rows have been written, or 100 MB of data have been written; or if simultaneously 10 seconds have passed and 10,000 rows and 10 MB of data have been written. For example, if just one row has been written, after 100 seconds it will be flushed, no matter what. But if many rows have been written, the data will be flushed sooner.
2751

2752
When the server is stopped, with DROP TABLE or DETACH TABLE, buffer data is also flushed to the destination table.
2753

2754
You can set empty strings in single quotation marks for the database and table name. This indicates the absence of a destination table. In this case, when the data flush conditions are reached, the buffer is simply cleared. This may be useful for keeping a window of data in memory.
2755

2756 2757
When reading from a Buffer table, data is processed both from the buffer and from the destination table (if there is one).
Note that the Buffer tables does not support an index. In other words, data in the buffer is fully scanned, which might be slow for large buffers. (For data in a subordinate table, the index it supports will be used.)
2758

2759
If the set of columns in the Buffer table doesn&#39;t match the set of columns in a subordinate table, a subset of columns that exist in both tables is inserted.
2760

2761 2762
If the types don&#39;t match for one of the columns in the Buffer table and a subordinate table, an error message is entered in the server log and the buffer is cleared.
The same thing happens if the subordinate table doesn&#39;t exist when the buffer is flushed.
2763

2764
If you need to run ALTER for a subordinate table and the Buffer table, we recommend first deleting the Buffer table, running ALTER for the subordinate table, then creating the Buffer table again.
2765

2766
If the server is restarted abnormally, the data in the buffer is lost.
2767

2768
PREWHERE, FINAL and SAMPLE do not work correctly for Buffer tables. These conditions are passed to the destination table, but are not used for processing data in the buffer. Because of this, we recommend only using the Buffer table for writing, while reading from the destination table.
2769

2770
When adding data to a Buffer, one of the buffers is locked. This causes delays if a read operation is simultaneously being performed from the table.
2771

2772
Data that is inserted to a Buffer table may end up in the subordinate table in a different order and in different blocks. Because of this, a Buffer table is difficult to use for writing to a CollapsingMergeTree correctly. To avoid problems, you can set &#39;num_layers&#39; to 1.
2773

2774
If the destination table is replicated, some expected characteristics of replicated tables are lost when writing to a Buffer table. The random changes to the order of rows and sizes of data parts cause data deduplication to quit working, which means it is not possible to have a reliable &#39;exactly once&#39; write to replicated tables.
2775

2776
Due to these disadvantages, we can only recommend using a Buffer table in rare cases.
2777

2778
A Buffer table is used when too many INSERTs are received from a large number of servers over a unit of time and data can&#39;t be buffered before insertion, which means the INSERTs can&#39;t run fast enough.
2779

2780
Note that it doesn&#39;t make sense to insert data one row at a time, even for Buffer tables. This will only produce a speed of a few thousand rows per second, while inserting larger blocks of data can produce over a million rows per second (see the section &quot;Performance&quot;).
2781 2782


2783
==Data replication==
2784

2785 2786 2787 2788
===ReplicatedMergeTree===
===ReplicatedCollapsingMergeTree===
===ReplicatedAggregatingMergeTree===
===ReplicatedSummingMergeTree===
2789

2790
Replication is only supported for tables in the MergeTree family. Replication works at the level of an individual table, not the entire server. A server can store both replicated and non-replicated tables at the same time.
2791

2792 2793
INSERT and ALTER are replicated (for more information, see ALTER). Compressed data is replicated, not query texts.
The CREATE, DROP, ATTACH, DETACH, and RENAME queries are not replicated. In other words, they belong to a single server. The CREATE TABLE query creates a new replicatable table on the server where the query is run. If this table already exists on other servers, it adds a new replica. The DROP TABLE query deletes the replica located on the server where the query is run. The RENAME query renames the table on one of the replicas. In other words, replicated tables can have different names on different replicas.
2794

2795
Replication is not related to sharding in any way. Replication works independently on each shard.
2796

2797
Replication is an optional feature. To use replication, set the addresses of the ZooKeeper cluster in the config file. Example:
2798

2799
%%
2800 2801 2802 2803 2804 2805 2806 2807 2808 2809 2810 2811 2812 2813
&lt;zookeeper>
	&lt;node index=&quot;1&quot;>
		&lt;host>example1&lt;/host>
		&lt;port>2181&lt;/port>
	&lt;/node>
	&lt;node index=&quot;2&quot;>
		&lt;host>example2&lt;/host>
		&lt;port>2181&lt;/port>
	&lt;/node>
	&lt;node index=&quot;3&quot;>
		&lt;host>example3&lt;/host>
		&lt;port>2181&lt;/port>
	&lt;/node>
&lt;/zookeeper>
2814
%%
2815

2816
Use ZooKeeper version 3.4.5 or later. For example, the version in the Ubuntu Precise package is too old.
2817

2818
You can specify any existing ZooKeeper cluster - the system will use a directory on it for its own data (the directory is specified when creating a replicatable table).
2819

2820
If ZooKeeper isn&#39;t set in the config file, you can&#39;t create replicated tables, and any existing replicated tables will be read-only.
2821

2822
ZooKeeper isn&#39;t used for SELECT queries. In other words, replication doesn&#39;t affect the productivity of SELECT queries - they work just as fast as for non-replicated tables.
2823

2824
For each INSERT query (more precisely, for each inserted block of data; the INSERT query contains a single block, or per block for every max_insert_block_size = 1048576 rows), approximately ten entries are made in ZooKeeper in several transactions. This leads to slightly longer latencies for INSERT compared to non-replicated tables. But if you follow the recommendations to insert data in batches of no more than one INSERT per second, it doesn&#39;t create any problems. The entire ClickHouse cluster used for coordinating one ZooKeeper cluster has a total of several hundred INSERTs per second. The throughput on data inserts (the number of rows per second) is just as high as for non-replicated data.
2825

2826
For very large clusters, you can use different ZooKeeper clusters for different shards. However, this hasn&#39;t proven necessary on the Yandex.Metrica cluster (approximately 300 servers).
2827

O
Oleg Komarov 已提交
2828
Replication is asynchronous and multi-master. INSERT queries (as well as ALTER) can be sent to any available server. Data is inserted on this server, then sent to the other servers. Because it is asynchronous, recently inserted data appears on the other replicas with some latency. If a part of the replicas is not available, the data on them is written when they become available. If a replica is available, the latency is the amount of time it takes to transfer the block of compressed data over the network.
2829

2830
There are no quorum writes. You can&#39;t write data with confirmation that it was received by more than one replica. If you write a batch of data to one replica and the server with this data ceases to exist before the data has time to get to the other replicas, this data will be lost.
2831

2832
Each block of data is written atomically. The INSERT query is divided into blocks up to max_insert_block_size = 1048576 rows. In other words, if the INSERT query has less than 1048576 rows, it is made atomically.
2833

2834
Blocks of data are duplicated. For multiple writes of the same data block (data blocks of the same size containing the same rows in the same order), the block is only written once. The reason for this is in case of network failures when the client application doesn&#39;t know if the data was written to the DB, so the INSERT query can simply be repeated. It doesn&#39;t matter which replica INSERTs were sent to with identical data - INSERTs are idempotent. This only works for the last 100 blocks inserted in a table.
2835

2836
During replication, only the source data to insert is transferred over the network. Further data transformation (merging) is coordinated and performed on all the replicas in the same way. This minimizes network usage, which means that replication works well when replicas reside in different datacenters. (Note that duplicating data in different datacenters is the main goal of replication.)
2837

2838
You can have any number of replicas of the same data. Yandex.Metrica uses double replication in production. Each server uses RAID-5 or RAID-6, and RAID-10 in some cases. This is a relatively reliable and convenient solution.
2839

2840
The system monitors data synchronicity on replicas and is able to recover after a failure. Failover is automatic (for small differences in data) or semi-automatic (when data differs too much, which may indicate a configuration error).
2841 2842


2843
===Creating replicated tables===
2844

2845
The &#39;Replicated&#39; prefix is added to the table engine name. For example, ReplicatedMergeTree.
2846

2847
Two parameters are also added in the beginning of the parameters list - the path to the table in ZooKeeper, and the replica name in ZooKeeper.
2848

2849 2850
Example:
<span class="text-example">ReplicatedMergeTree(<b>&#39;/clickhouse/tables/{layer}-{shard}/hits&#39;</b>, <b>&#39;{replica}&#39;</b>, EventDate, intHash32(UserID), (CounterID, EventDate, intHash32(UserID), EventTime), 8192)</span>
2851

2852
As the example shows, these parameters can contain substitutions in curly brackets. The substituted values are taken from the &#39;macros&#39; section of the config file. Example:
2853

2854
%%
2855 2856 2857 2858 2859
&lt;macros>
	&lt;layer>05&lt;/layer>
	&lt;shard>02&lt;/shard>
	&lt;replica>example05-02-1.yandex.ru&lt;/replica>
&lt;/macros>
2860
%%
2861

2862 2863
The path to the table in ZooKeeper should be unique for each replicated table. Tables on different shards should have different paths.
In this case, the path consists of the following parts:
2864

2865
%%/clickhouse/tables/%% is the common prefix. We recommend using exactly this one.
2866

2867
%%{layer}-{shard}%% is the shard identifier. In this example it consists of two parts, since the Yandex.Metrica cluster uses bi-level sharding. For most tasks, you can leave just the {shard} substitution, which will be expanded to the shard identifier.
2868

2869
%%hits%% is the name of the node for the table in ZooKeeper. It is a good idea to make it the same as the table name. It is defined explicitly, because in contrast to the table name, it doesn&#39;t change after a RENAME query.
2870

2871
The replica name identifies different replicas of the same table. You can use the server name for this, as in the example. The name only needs to be unique within each shard.
2872

2873
You can define everything explicitly instead of using substitutions. This might be convenient for testing and for configuring small clusters, but it is inconvenient when working with large clusters.
2874

2875
Run CREATE TABLE on each replica. This query creates a new replicated table, or adds a new replica to an existing one.
2876

2877
If you add a new replica after the table already contains some data on other replicas, the data will be copied from the other replicas to the new one after running the query. In other words, the new replica syncs itself with the others.
2878

2879
To delete a replica, run DROP TABLE. However, only one replica is deleted - the one that resides on the server where you run the query.
2880 2881


2882
===Recovery after failures===
2883

2884
If ZooKeeper is unavailable when a server starts, replicated tables switch to read-only mode. The system periodically attempts to connect to ZooKeeper.
2885

2886
If ZooKeeper is unavailable during an INSERT, or an error occurs when interacting with ZooKeeper, an exception is thrown.
2887

2888
After connecting to ZooKeeper, the system checks whether the set of data in the local file system matches the expected set of data (ZooKeeper stores this information). If there are minor inconsistencies, the system resolves them by syncing data with the replicas.
2889

2890
If the system detects broken data parts (with the wrong size of files) or unrecognized parts (parts written to the file system but not recorded in ZooKeeper), it moves them to the &#39;detached&#39; subdirectory (they are not deleted). Any missing parts are copied from the replicas.
2891

2892
Note that ClickHouse does not perform any destructive actions such as automatically deleting a large amount of data.
2893

2894
When the server starts (or establishes a new session with ZooKeeper), it only checks the quantity and sizes of all files. If the file sizes match but bytes have been changed somewhere in the middle, this is not detected immediately, but only when attempting to read the data for a SELECT query. The query throws an exception about a non-matching checksum or size of a compressed block. In this case, data parts are added to the verification queue and copied from the replicas if necessary.
2895

2896
If the local set of data differs too much from the expected one, a safety mechanism is triggered. The server enters this in the log and refuses to launch. The reason for this is that this case may indicate a configuration error, such as if a replica on a shard was accidentally configured like a replica on a different shard. However, the thresholds for this mechanism are set fairly low, and this situation might occur during normal failure recovery. In this case, data is restored semi-automatically - by &quot;pushing a button&quot;.
2897

2898
To start recovery, create the node <span class="inline-example">/<i>path_to_table</i>/<i>replica_name</i>/flags/force_restore_data</span>  in ZooKeeper with any content, and launch the server. On start, the server deletes this flag and starts recovery.
2899 2900


2901
===Recovery after complete data loss===
2902

2903
If all data and metadata disappeared from one of the servers, follow these steps for recovery:
2904

2905
1. Install ClickHouse on the server. Define substitutions correctly in the config file that contains the shard identifier and replicas, if you use them.
2906

2907
2. If you had unreplicated tables that must be manually duplicated on the servers, copy their data from a replica (in the directory <span class="inline-example">/opt/clickhouse/data/<i>db_name</i>/<i>table_name</i>/</span>). If replicated tables had unreplicated parts, synchronize them as well. Note that these exist only if you migrated from MergeTree to ReplicatedMergeTree (see &quot;Converting from MergeTree to ReplicatedMergeTree&quot;).
2908

2909
3. Copy table definitions located in %%/opt/clickhouse/metadata/%% from a replica. If a shard or replica identifier is defined explicitly in the table definitions, correct it so that it corresponds to this replica. (Alternatively, launch the server and make all the ATTACH TABLE queries that should have been in the .sql files in %%/opt/clickhouse/metadata/%%.)
2910

2911
4. Create the <span class="inline-example">/<i>path_to_table</i>/<i>replica_name</i>/flags/force_restore_data</span> node in ZooKeeper with any content, and launch the server (restart it if it is already running). Data will be downloaded from replicas.
2912

2913
An alternative recovery option is to delete information about the lost replica from ZooKeeper ( <span class="inline-example">/<i>path_to_table</i>/<i>replica_name</i></span>), then create the replica again as described in &quot;Creating replicated tables&quot;.
2914

2915
There is no restriction on network bandwidth during recovery. Keep this in mind if you are restoring many replicas at once.
2916 2917


2918
===Converting from MergeTree to ReplicatedMergeTree===
2919

2920
From here on, we use &quot;MergeTree&quot; to refer to all the table engines in the MergeTree family, including ReplicatedMergeTree.
2921

2922
If you had a MergeTree table that was manually replicated, you can convert it to a replicatable table. You might need to do this if you have already collected a large amount of data in a MergeTree table and now you want to enable replication.
2923

2924
There are two ways to do this:
2925

2926
1. Leave the old data &quot;as is&quot; without syncing it.
2927

2928 2929
To do this, rename the existing MergeTree table, then create a ReplicatedMergeTree table with the old name.
In the directory with data for the new table (<span class="inline-example">/opt/clickhouse/data/<i>db_name</i>/<i>table_name</i>/</span>), create the &#39;unreplicated&#39; subdirectory and move the data from the old table to it. Then restart the server.
2930

2931
For read requests, the replicated table will also read from the &#39;unreplicated&#39; data set. The integrity of this data is not monitored in any way.
2932

2933
2. Add the old data to the set of replicatable data.
2934

2935
If the data differs on various replicas, first sync it, or delete this data on all the replicas except one.
2936

2937
Rename the existing MergeTree table, then create a ReplicatedMergeTree table with the old name.
2938
Move the data from the old table to the &#39;detached&#39; subdirectory inside the directory with the new table data (<span class="inline-example">/opt/clickhouse/data/<i>db_name</i>/<i>table_name</i>/</span>).
2939
Then run ALTER TABLE ATTACH PART on one of the replicas to add these data parts to the working set.
2940

2941
If exactly the same parts exist on the other replicas, they are added to the working set on them. If not, the parts are downloaded from the replica that has them.
2942 2943


2944
===Converting from ReplicatedMergeTree to MergeTree===
2945

2946
Create a MergeTree table with a different name. Move all the data from the directory with the ReplicatedMergeTree table data to the new table&#39;s data directory. Then delete the ReplicatedMergeTree table and restart the server.
2947

2948 2949
If you want to get rid of a ReplicatedMergeTree table without launching the server:
- Delete the corresponding .sql file in the metadata directory (%%/opt/clickhouse/metadata/%%).
2950
- Delete the corresponding path in ZooKeeper (<span class="inline-example">/<i>path_to_table</i>/<i>replica_name</i></span>).
2951
After this, you can launch the server, create a MergeTree table, move the data to its directory, and then restart the server.
2952 2953


2954
===Recovery when metadata in the ZooKeeper cluster is lost or damaged===
2955

2956
If you lost ZooKeeper, you can save data by moving it to an unreplicated table as described above.
2957 2958


2959 2960 2961 2962 2963 2964 2965 2966 2967 2968 2969 2970 2971 2972 2973 2974 2975 2976 2977 2978 2979 2980 2981 2982 2983 2984 2985
==Resharding==

%%ALTER TABLE t RESHARD [COPY] [PARTITION partition] TO <i>cluster description</i> USING <i>sharding key</i>%%

Query works only for Replicated tables and for Distributed tables that are looking at Replicated tables.

When executing, query first checks correctness of query, sufficiency of free space on nodes and writes to ZooKeeper at some path a task to to. Next work is done asynchronously.

For using resharding, you must specify path in ZooKeeper for task queue in configuration file:

%%
&lt;resharding&gt;
	&lt;task_queue_path&gt;/clickhouse/task_queue&lt;/task_queue_path&gt;
&lt;/resharding&gt;
%%

When running %%ALTER TABLE t RESHARD%% query, node in ZooKeeper is created if not exists.

Cluster description is list of shards with weights to distribute the data.
Shard is specified as address of table in ZooKeeper. Example: %%/clickhouse/tables/01-03/hits%%
Relative weight of shard (optional, default is 1) could be specified after %%WEIGHT%% keyword.
Example:

%%
ALTER TABLE merge.hits
RESHARD PARTITION 201501
TO
2986 2987 2988 2989
	'/clickhouse/tables/01-01/hits' WEIGHT 1,
	'/clickhouse/tables/01-02/hits' WEIGHT 2,
	'/clickhouse/tables/01-03/hits' WEIGHT 1,
	'/clickhouse/tables/01-04/hits' WEIGHT 1
2990 2991 2992 2993 2994 2995 2996 2997 2998 2999 3000 3001 3002 3003 3004 3005 3006 3007 3008 3009 3010 3011 3012 3013 3014 3015 3016 3017 3018 3019 3020 3021 3022 3023 3024 3025 3026 3027 3028 3029 3030 3031 3032 3033 3034 3035 3036 3037
USING UserID
%%

Sharding key (%%UserID%% in example) has same semantic as for Distributed tables. You could specify %%rand()%% as sharding key for random distribution of data.

When query is run, it checks:
- identity of table structure on all shards.
- availability of free space on local node in amount of partition size in bytes, with additional 10% reserve.
- availability of free space on all replicas of all specified shards, except local replica, if exists, in amount of patition size times ratio of shard weight to total weight of all shards, with additional 10% reserve.

Next, asynchronous processing of query is of following steps:

1. Split patition to parts on local node.
It merges all parts forming a partition and in the same time, splits them to several, according sharding key.
Result is placed to /reshard directory in table data directory.
Source parts doesn't modified and all process doesn't intervent table working data set.

2. Copying all parts to remote nodes (to each replica of corresponding shard).

3. Execution of queries %%ALTER TABLE t DROP PARTITION%% on local node and %%ALTER TABLE t ATTACH PARTITION%% on all shards.
Note: this operation is not atomic. There are time point when user could see absence of data.

When %%COPY%% keyword is specified, source data is not removed. It is suitable for copying data from one cluster to another with changing sharding scheme in same time.

4. Removing temporary data from local node.

When having multiple resharding queries, their tasks will be done sequentially.

Query in example is to reshard single partition.
If you don't specify partition in query, then tasks to reshard all partitions will be created. Example:

%%
ALTER TABLE merge.hits
RESHARD
TO ...
%%

When resharding Distributed tables, each shard will be resharded (corresponding query is sent to each shard).

You could reshard Distributed table to itself or to another table.

Resharding is intended for "old" data: in case when during job, resharded partition was modified, task for that partition will be cancelled.

On each server, resharding is done in single thread. It is doing that way to not disturb normal query processing.

As of June 2016, resharding is in "beta" state: it was tested only for small data sets - up to 5 TB.


3038 3039

</div>
3040
<div class="island">
3041 3042
<h1>System tables</h1>
</div>
3043
<div class="island content">
3044

3045
System tables are used for implementing part of the system&#39;s functionality, and for providing access to information about how the system is working.
3046 3047 3048
You can&#39;t delete a system table (but you can perform DETACH).
System tables don&#39;t have files with data on the disk or files with metadata. The server creates all the system tables when it starts.
System tables are read-only.
3049
System tables are located in the &#39;system&#39; database.
3050

3051
==system.one==
3052

3053
This table contains a single row with a single &#39;dummy&#39; UInt8 column containing the value 0.
3054
This table is used if a SELECT query doesn&#39;t specify the FROM clause.
3055
This is similar to the DUAL table found in other DBMSs.
3056

3057
==system.numbers==
3058

3059
This table contains a single UInt64 column named &#39;number&#39; that contains almost all the natural numbers starting from zero.
3060
You can use this table for tests, or if you need to do a brute force search.
3061
Reads from this table are not parallelized.
3062

3063
==system.numbers_mt==
3064

3065 3066
The same as &#39;system.numbers&#39; but reads are parallelized. The numbers can be returned in any order.
Used for tests.
3067

3068
==system.tables==
3069

3070
This table contains the String columns &#39;database&#39;, &#39;name&#39;, and &#39;engine&#39;.
3071 3072
Each table that the server knows about is entered in the &#39;system.tables&#39; table.
There is an issue: table engines are specified without parameters.
3073
This system table is used for implementing SHOW TABLES queries.
3074

3075
==system.databases==
3076

3077
This table contains a single String column called &#39;name&#39; - the name of a database.
3078
Each database that the server knows about has a corresponding entry in the table.
3079
This system table is used for implementing the SHOW DATABASES query.
3080

3081
==system.processes==
3082

3083
This system table is used for implementing the SHOW PROCESSLIST query.
3084
Columns:
3085
%%
3086 3087 3088 3089 3090 3091 3092 3093 3094 3095 3096 3097 3098 3099 3100 3101
user String              - Name of the user who made the request. For distributed query processing, this is the user who helped the requestor server send the query to this server, not the user who made the distributed request on the requestor server.

address String           - The IP address the request was made from. The same for distributed processing.

elapsed Float64          - The time in seconds since request execution started.

rows_read UInt64         - The number of rows read from the table. For distributed processing, on the requestor server, this is the total for all remote servers.

bytes_read UInt64        - The number of uncompressed bytes read from the table. For distributed processing, on the requestor server, this is the total for all remote servers.

total_rows_approx UInt64 - The approximation of the total number of rows that should be read. For distributed processing, on the requestor server, this is the total for all remote servers. It can be updated during request processing, when new sources to process become known.

memory_usage UInt64      - How much memory the request uses. It might not include some types of dedicated memory.

query String             - The query text. For INSERT, it doesn&#39;t include the data to insert.

3102 3103
query_id String          - Query ID, if defined.
%%
3104

3105
==system.events==
3106

3107
Contains information about the number of events that have occurred in the system. This is used for profiling and monitoring purposes.
3108
Example: The number of processed SELECT queries.
3109
Columns: &#39;event String&#39; - the event name, and &#39;value UInt64&#39; - the quantity.
3110

3111
==system.clusters==
3112

3113 3114
Contains information about clusters available in the config file and the servers in them.
Columns:
3115

3116
%%
3117 3118 3119 3120 3121 3122 3123 3124
cluster String      - Cluster name.
shard_num UInt32    - Number of a shard in the cluster, starting from 1.
shard_weight UInt32 - Relative weight of a shard when writing data.
replica_num UInt32  - Number of a replica in the shard, starting from 1.
host_name String    - Host name as specified in the config.
host_address String - Host&#39;s IP address obtained from DNS.
port UInt16         - The port used to access the server.
user String         - The username to use for connecting to the server.
3125
%%
3126

3127
==system.columns==
3128

3129 3130
Contains information about the columns in all tables.
You can use this table to get information similar to DESCRIBE TABLE, but for multiple tables at once.
3131

3132
%%
3133 3134 3135 3136 3137 3138
database String           - Name of the database the table is located in.
table String              - Table name.
name String               - Column name.
type String               - Column type.
default_type String       - Expression type (DEFAULT, MATERIALIZED, ALIAS) for the default value, or an empty string if it is not defined.
default_expression String - Expression for the default value, or an empty string if it is not defined.
3139
%%
3140

3141
==system.dictionaries==
3142

3143 3144
Contains information about external dictionaries.
Columns:
3145

3146
%%
3147 3148 3149 3150 3151 3152 3153 3154 3155 3156 3157 3158 3159
name String                   - Dictionary name.
type String                   - Dictionary type: Flat, Hashed, Cache.
origin String                 - Path to the config file where the dictionary is described.
attribute.names Array(String) - Array of attribute names provided by the dictionary.
attribute.types Array(String) - Corresponding array of attribute types provided by the dictionary.
has_hierarchy UInt8           - Whether the dictionary is hierarchical.
bytes_allocated UInt64        - The amount of RAM used by the dictionary.
hit_rate Float64              - For cache dictionaries, the percent of usage for which the value was in the cache.
element_count UInt64          - The number of items stored in the dictionary.
load_factor Float64           - The filled percentage of the dictionary (for a hashed dictionary, it is the filled percentage of the hash table).
creation_time DateTime        - Time spent for the creation or last successful reload of the dictionary.
last_exception String         - Text of an error that occurred when creating or reloading the dictionary, if the dictionary couldn&#39;t be created.
source String                 - Text describing the data source for the dictionary.
3160
%%
3161

3162
Note that the amount of memory used by the dictionary is not proportional to the number of items stored in it. So for flat and cached dictionaries, all the memory cells are pre-assigned, regardless of how full the dictionary actually is.
3163 3164


3165
==system.functions==
3166

3167 3168
Contains information about normal and aggregate functions.
Columns:
3169

3170
%%
3171 3172
name String           - Function name.
is_aggregate UInt8    - Whether it is an aggregate function.
3173
%%
3174

3175
==system.merges==
3176

3177 3178
Contains information about merges currently in process for tables in the MergeTree family.
Columns:
3179

3180
%%
3181 3182 3183 3184 3185 3186 3187 3188 3189 3190 3191 3192
database String                    - Name of the database the table is located in.
table String                       - Name of the table.
elapsed Float64                    - Time in seconds since the merge started.
progress Float64                   - Percent of progress made, from 0 to 1.
num_parts UInt64                   - Number of parts to merge.
result_part_name String            - Name of the part that will be formed as the result of the merge.
total_size_bytes_compressed UInt64 - Total size of compressed data in the parts being merged.
total_size_marks UInt64            - Total number of marks in the parts being merged.
bytes_read_uncompressed UInt64     - Amount of bytes read, decompressed.
rows_read UInt64                   - Number of rows read.
bytes_written_uncompressed UInt64  - Amount of bytes written, uncompressed.
rows_written UInt64                - Number of rows written.
3193
%%
3194

3195
==system.parts==
3196

3197 3198
Contains information about parts of a table in the MergeTree family.
Columns:
3199

3200
%%
3201 3202 3203 3204 3205 3206 3207 3208 3209 3210 3211 3212
database String            - Name of the database where the table that this part belongs to is located.
table String               - Name of the table that this part belongs to.
engine String              - Name of the table engine, without parameters.
partition String           - Name of the partition, in the format YYYYMM.
name String                - Name of the part.
replicated UInt8           - Whether the part belongs to replicated data.
active UInt8               - Whether the part is used in a table, or is no longer needed and will be deleted soon. Inactive parts remain after merging.
marks UInt64               - Number of marks - multiply by the index granularity (usually 8192) to get the approximate number of rows in the part.
bytes UInt64               - Number of bytes when compressed.
modification_time DateTime - Time the directory with the part was modified. Usually corresponds to the part&#39;s creation time.
remove_time DateTime       - For inactive parts only - the time when the part became inactive.
refcount UInt32            - The number of places where the part is used. A value greater than 2 indicates that this part participates in queries or merges.
3213
%%
3214

3215
==system.replicas==
3216

3217
Contains information and status for replicated tables residing on the local server. This table can be used for monitoring. The table contains a row for every Replicated* table.
3218

3219
Example:
3220

3221
%%
3222 3223 3224 3225 3226 3227 3228 3229 3230 3231 3232 3233 3234 3235 3236 3237 3238 3239 3240 3241 3242 3243 3244 3245 3246 3247
SELECT *
FROM system.replicas
WHERE table = &#39;visits&#39;
FORMAT Vertical

Row 1:
──────
database:           merge
table:              visits
engine:             ReplicatedCollapsingMergeTree
is_leader:          1
is_readonly:        0
is_session_expired: 0
future_parts:       1
parts_to_check:     0
zookeeper_path:     /clickhouse/tables/01-06/visits
replica_name:       example01-06-1.yandex.ru
replica_path:       /clickhouse/tables/01-06/visits/replicas/example01-06-1.yandex.ru
columns_version:    9
queue_size:         1
inserts_in_queue:   0
merges_in_queue:    1
log_max_index:      596273
log_pointer:        596274
total_replicas:     2
active_replicas:    2
3248
%%
3249

3250
Columns:
3251

3252
%%
3253 3254 3255 3256 3257 3258 3259 3260 3261 3262 3263 3264 3265 3266 3267 3268 3269 3270 3271 3272 3273 3274 3275 3276 3277 3278 3279 3280 3281 3282 3283 3284 3285 3286 3287 3288 3289 3290 3291
database:          Database name.
table:              Table name.
engine:             Table engine name.

is_leader:          Whether the replica is the leader.
Only one replica can be the leader at a time. The leader is responsible for selecting background merges to perform.
Note that writes can be performed to any replica that is available and has a session in ZK, regardless of whether it is a leader.

is_readonly:        Whether the replica is in read-only mode.
This mode is turned on if the config doesn&#39;t have sections with ZK, if an unknown error occurred when reinitializing sessions in ZK, and during session reinitialization in ZK.

is_session_expired: Whether the session with ZK has expired.
Basically the same as &#39;is_readonly&#39;.

future_parts:       The number of data parts that will appear as the result of INSERTs or merges that haven&#39;t been done yet.

parts_to_check:     The number of data parts in the queue for verification.
A part is put in the verification queue if there is suspicion that it might be damaged.

zookeeper_path:     Path to table data in ZK.
replica_name:       Replica name in ZK. Different replicas of the same table have different names.
replica_path:      Path to replica data in ZK. The same as concatenating &#39;zookeeper_path/replicas/replica_path&#39;.

columns_version:    Version number of the table structure. Indicates how many times ALTER was performed. If replicas have different versions, it means some replicas haven&#39;t made all of the ALTERs yet.

queue_size:         Size of the queue for operations waiting to be performed. Operations include inserting blocks of data, merges, and certain other actions. It usually coincides with &#39;future_parts&#39;.

inserts_in_queue:   Number of inserts of blocks of data that need to be made. Insertions are usually replicated fairly quickly. If this number is large, it means something is wrong.

merges_in_queue:    The number of merges waiting to be made. Sometimes merges are lengthy, so this value may be greater than one for a long time.

The next 4 columns have a non-zero value only where there is an active session with ZK.

log_max_index:      Maximum entry number in the log of general activity.
log_pointer:        Maximum entry number from the log of general activity that the replica copied to its queue for execution, plus one.
If log_pointer is much smaller than log_max_index, something is wrong.

total_replicas:     The total number of known replicas of this table.
active_replicas:    The number of replicas of this table that have a session in ZK (i.e., the number of functioning replicas).
3292
%%
3293

3294 3295
If you request all the columns, the table may work a bit slowly, since several reads from ZK are made for each row.
If you don&#39;t request the last 4 columns (log_max_index, log_pointer, total_replicas, active_replicas), the table works quickly.
3296

3297
For example, you can check that everything is working correctly like this:
3298

3299
%%
3300 3301 3302 3303 3304 3305 3306 3307 3308 3309 3310 3311 3312 3313 3314 3315 3316 3317 3318 3319 3320 3321 3322 3323 3324 3325 3326
SELECT
    database,
    table,
    is_leader,
    is_readonly,
    is_session_expired,
    future_parts,
    parts_to_check,
    columns_version,
    queue_size,
    inserts_in_queue,
    merges_in_queue,
    log_max_index,
    log_pointer,
    total_replicas,
    active_replicas
FROM system.replicas
WHERE
       is_readonly
    OR is_session_expired
    OR future_parts > 20
    OR parts_to_check > 10
    OR queue_size > 20
    OR inserts_in_queue > 10
    OR log_max_index - log_pointer > 10
    OR total_replicas &lt; 2
    OR active_replicas &lt; total_replicas
3327
%%
3328

3329
If this query doesn&#39;t return anything, it means that everything is fine.
3330

3331
==system.settings==
3332

3333
Contains information about settings that are currently in use (i.e. used for executing the query you are using to read from the system.settings table).
3334

3335
Columns:
3336

3337
%%
3338 3339 3340
name String   - Setting name.
value String  - Setting value.
changed UInt8 - Whether the setting was explicitly defined in the config or explicitly changed.
3341
%%
3342

3343
Example:
3344

3345
%%
3346 3347 3348 3349 3350 3351 3352 3353 3354 3355
SELECT *
FROM system.settings
WHERE changed

┌─name───────────────────┬─value───────┬─changed─┐
│ max_threads            │ 8           │       1 │
│ use_uncompressed_cache │ 0           │       1 │
│ load_balancing         │ random      │       1 │
│ max_memory_usage       │ 10000000000 │       1 │
└────────────────────────┴─────────────┴─────────┘
3356
%%
3357 3358


3359
==system.zookeeper==
3360

3361 3362
Allows reading data from the ZooKeeper cluster defined in the config.
The query must have a &#39;path&#39; equality condition in the WHERE clause. This is the path in ZooKeeper for the children that you want to get data for.
3363

3364
Query SELECT * FROM system.zookeeper WHERE path = &#39;/clickhouse&#39; outputs data for all children on the /clickhouse node.
3365
To output data for all root nodes, write path = &#39;/&#39;.
3366
If the path specified in &#39;path&#39; doesn&#39;t exist, an exception will be thrown.
3367

3368
Columns:
3369

3370
%%
3371 3372 3373 3374 3375 3376 3377 3378 3379 3380 3381 3382 3383 3384
name String          - Name of the node.
path String          - Path to the node.
value String         - Value of the node.
dataLength Int32     - Size of the value.
numChildren Int32    - Number of children.
czxid Int64          - ID of the transaction that created the node.
mzxid Int64          - ID of the transaction that last changed the node.
pzxid Int64          - ID of the transaction that last added or removed children.
ctime DateTime       - Time of node creation.
mtime DateTime       - Time of the last node modification.
version Int32        - Node version - the number of times the node was changed.
cversion Int32       - Number of added or removed children.
aversion Int32       - Number of changes to ACL.
ephemeralOwner Int64 - For ephemeral nodes, the ID of the session that owns this node.
3385
%%
3386

3387
Example:
3388

3389
%%
3390 3391 3392 3393 3394 3395 3396 3397 3398 3399 3400 3401 3402 3403 3404 3405 3406 3407 3408 3409 3410 3411 3412 3413 3414 3415 3416 3417 3418 3419 3420 3421 3422 3423 3424 3425 3426 3427
SELECT *
FROM system.zookeeper
WHERE path = &#39;/clickhouse/tables/01-08/visits/replicas&#39;
FORMAT Vertical

Row 1:
──────
name:           example01-08-1.yandex.ru
value:
czxid:          932998691229
mzxid:          932998691229
ctime:          2015-03-27 16:49:51
mtime:          2015-03-27 16:49:51
version:        0
cversion:       47
aversion:       0
ephemeralOwner: 0
dataLength:     0
numChildren:    7
pzxid:          987021031383
path:           /clickhouse/tables/01-08/visits/replicas

Row 2:
──────
name:           example01-08-2.yandex.ru
value:
czxid:          933002738135
mzxid:          933002738135
ctime:          2015-03-27 16:57:01
mtime:          2015-03-27 16:57:01
version:        0
cversion:       37
aversion:       0
ephemeralOwner: 0
dataLength:     0
numChildren:    7
pzxid:          987021252247
path:           /clickhouse/tables/01-08/visits/replicas
3428
%%
3429 3430 3431 3432



</div>
3433
<div class="island">
3434 3435
<h1>Table functions</h1>
</div>
3436
<div class="island content">
3437

3438
Table functions can be specified in the FROM clause instead of the database and table names.
3439
Table functions can only be used if &#39;readonly&#39; is not set.
3440
Table functions aren&#39;t related to other functions.
3441

3442
==merge==
3443

3444 3445
%%merge(db_name, &#39;tables_regexp&#39;)%% creates a temporary Merge table. For more information, see the section &quot;Table engines, Merge&quot;.
The table structure is taken from the first table encountered that matches the regular expression.
3446

3447
==remote==
3448

3449 3450 3451
%%remote(&#39;addresses_expr&#39;, db, table[, &#39;user&#39;[, &#39;password&#39;]])%%
or %%remote(&#39;addresses_expr&#39;, db.table[, &#39;user&#39;[, &#39;password&#39;]])%%
- Allows accessing a remote server without creating a Distributed table.
3452

3453
%%addresses_expr%% - An expression that generates addresses of remote servers.
3454

3455
This may be just one server address. The server address is host:port, or just the host. The host can be specified as the server name, or as the IPv4 or IPv6 address. An IPv6 address is specified in square brackets. The port is the TCP port on the remote server. If the port is omitted, it uses %%tcp_port%% from the server&#39;s config file (by default, 9000).
3456

3457
Note: As an exception, when specifying an IPv6 address, the port is required.
3458

3459 3460
Examples:
%%
3461 3462 3463 3464 3465
example01-01-1
example01-01-1:9000
localhost
127.0.0.1
[::]:9000
3466
[2a02:6b8:0:1111::11]:9000%%
3467

3468
Multiple addresses can be comma-separated. In this case, the query goes to all the specified addresses (like to shards with different data) and uses distributed processing.
3469

3470 3471
Example:
%%example01-01-1,example01-02-1%%
3472

3473 3474
Part of the expression can be specified in curly brackets. The previous example can be written as follows:
%%example01-0{1,2}-1%%
3475

3476 3477 3478
Curly brackets can contain a range of numbers separated by two dots (non-negative integers). In this case, the range is expanded to a set of values that generate shard addresses. If the first number starts with zero, the values are formed with the same zero alignment.
The previous example can be written as follows:
%%example01-{01..02}-1%%
3479

3480
If you have multiple pairs of curly brackets, it generates the direct product of the corresponding sets.
3481

3482 3483
Addresses and fragments in curly brackets can be separated by the pipe (|) symbol. In this case, the corresponding sets of addresses are interpreted as replicas, and the query will be sent to the first healthy replica. The replicas are evaluated in the order currently set in the &#39;load_balancing&#39; setting.
Example:
3484

3485
%%example01-{01..02}-{1|2}%%
3486

3487
This example specifies two shards that each have two replicas.
3488

3489
The number of addresses generated is limited by a constant. Right now this is 1000 addresses.
3490

3491
Using the &#39;remote&#39; table function is less optimal than creating a Distributed table, because in this case, the server connection is re-established for every request. In addition, if host names are set, the names are resolved, and errors are not counted when working with various replicas. When processing a large number of queries, always create the Distributed table ahead of time, and don&#39;t use the &#39;remote&#39; table function.
3492

3493
The &#39;remote&#39; table function can be useful in the following cases:
3494 3495 3496
- Accessing a specific server for data comparison, debugging, and testing.
- Queries between various ClickHouse clusters for research purposes.
- Infrequent distributed requests that are made manually.
3497
- Distributed requests where the set of servers is re-defined each time.
3498

3499 3500
The username can be omitted. In this case, the &#39;default&#39; username is used.
The password can be omitted. In this case, an empty password is used.
3501 3502

</div>
3503
<div class="island">
3504 3505
<h1>Formats</h1>
</div>
3506
<div class="island content">
3507

3508 3509
The format determines how data is given (written by server as output) to you after SELECTs, and how it is accepted (read by server as input) for INSERTs.

3510 3511


3512
==Native==
3513

3514
The most efficient format. Data is written and read by blocks in binary format. For each block, the number of rows, number of columns, column names and types, and parts of columns in this block are recorded one after another. In other words, this format is &quot;columnar&quot; - it doesn&#39;t convert columns to rows. This is the format used in the native interface for interaction between servers, for using the command-line client, and for C++ clients.
3515

3516
You can use this format to quickly generate dumps that can only be read by the ClickHouse DBMS. It doesn&#39;t make sense to work with this format yourself.
3517 3518


3519
==TabSeparated==
3520

3521
In TabSeparated format, data is written by row. Each row contains values separated by tabs. Each value is follow by a tab, except the last value in the row, which is followed by a line break. Strictly Unix line breaks are assumed everywhere. The last row also must contain a line break at the end. Values are written in text format, without enclosing quotation marks, and with special characters escaped.
3522

3523
Numbers are written in decimal form. Numbers may contain an extra &quot;+&quot; symbol at the beginning (but it is not recorded during an output). Non-negative numbers can&#39;t contain the negative sign. When parsing, it is allowed to parse an empty string as a zero, or (for signed types) a string consisting of just a minus sign as a zero. Numbers that do not fit into the corresponding data type may be parsed as a different number, without an error message.
3524

3525 3526 3527
Floating-point numbers are formatted in decimal form. The dot is used as the decimal separator. Exponential entries are supported, as are &#39;inf&#39;, &#39;+inf&#39;, &#39;-inf&#39;, and &#39;nan&#39;. An entry of floating-point numbers may begin or end with a decimal point.
During formatting, accuracy may be lost on floating-point numbers.
During parsing, a result is not necessarily the nearest machine-representable number.
3528

3529 3530 3531 3532
Dates are formatted in YYYY-MM-DD format and parsed in the same format, but with any characters as separators.
DateTimes are formatted in the format YYYY-MM-DD hh:mm:ss and parsed in the same format, but with any characters as separators.
This all occurs in the system time zone at the time the client or server starts (depending on which one formats data). For DateTimes, daylight saving time is not specified. So if a dump has times during daylight saving time, the dump does not unequivocally match the data, and parsing will select one of the two times.
During a parsing operation, incorrect dates and dates with times can be parsed with natural overflow or as null dates and times, without an error message.
3533

3534
As an exception, parsing DateTime is also supported in Unix timestamp format, if it consists of exactly 10 decimal digits. The result is not time zone-dependent. The formats YYYY-MM-DD hh:mm:ss and NNNNNNNNNN are differentiated automatically.
3535

3536
Strings are parsed and formatted with backslash-escaped special characters. The following escape sequences are used while formatting: %%\b%%, %%\f%%, %%\r,%% %%\n%%, %%\t%%, %%\0%%, %%\&#39;%%, and %%\\%%. For parsing, also supported %%\a%%, %%\v%% and <span class="inline-example">\x<i>HH</i></span> (hex escape sequence) and any sequences of the type <span class="inline-example">\<i>c</i></span> where <i>c</i> is any character (these sequences are converted to <i>c</i>). This means that parsing supports formats where a line break can be written as %%\n%% or as %%\%% and a line break. For example, the string &#39;Hello world&#39; with a line break between the words instead of a space can be retrieved in any of the following variations:
3537

3538
%%Hello\nworld%%
3539

3540 3541
%%Hello\
world%%
3542

3543
The second variant is supported because MySQL uses it when writing tab-separated dumps.
3544

3545
Only a small set of symbols are escaped. You can easily stumble onto a string value that your terminal will ruin in output.
3546

3547
Arrays are formatted as a list of comma-separated values in square brackets. Number items in the array are formatted as normally, but dates, dates with times, and strings are formatted in single quotes with the same escaping rules as above.
3548

3549
The TabSeparated format is convenient for processing data using custom programs and scripts. It is used by default in the HTTP interface, and in the command-line client&#39;s batch mode. This format also allows transferring data between different DBMSs. For example, you can get a dump from MySQL and upload it to ClickHouse, or vice versa.
3550

3551
The TabSeparated format supports outputting total values (when using WITH TOTALS) and extreme values (when &#39;extremes&#39; is set to 1). In these cases, the total values and extremes are output after the main data. The main result, total values, and extremes are separated from each other by an empty line. Example:
3552

3553
%%SELECT EventDate, count() AS c FROM test.hits GROUP BY EventDate WITH TOTALS ORDER BY EventDate FORMAT TabSeparated%%
3554

3555
%%
3556 3557 3558 3559 3560 3561 3562 3563 3564 3565 3566 3567
2014-03-17      1406958
2014-03-18      1383658
2014-03-19      1405797
2014-03-20      1353623
2014-03-21      1245779
2014-03-22      1031592
2014-03-23      1046491

0000-00-00      8873898

2014-03-17      1031592
2014-03-23      1406958
3568
%%
3569

3570
==TabSeparatedWithNames==
3571

3572 3573 3574
Differs from the TabSeparated format in that the column names are output in the first row.
For parsing, the first row is completely ignored. You can&#39;t use column names to determine their position or to check their correctness.
(Support for using header while parsing could be added in future.)
3575 3576


3577
==TabSeparatedWithNamesAndTypes==
3578

3579 3580
Differs from the TabSeparated format in that the column names are output to the first row, while the column types are in the second row.
For parsing, the first and second rows are completely ignored.
3581 3582


3583
==TabSeparatedRaw==
3584

3585 3586
Differs from the TabSeparated format in that the rows are formatted without escaping.
This format is only appropriate for outputting a query result, but not for parsing data to insert into a table.
3587 3588


3589
==BlockTabSeparated==
3590

3591
Data is not written by row, but by column and block.
3592 3593 3594 3595
Each block consists of parts of columns, each of which is written on a separate line.
The values are tab-separated. The last value in a column part is followed by a line break instead of a tab.
Blocks are separated by a double line break.
The rest of the rules are the same as in the TabSeparated format.
3596 3597 3598 3599 3600 3601 3602 3603 3604 3605 3606 3607 3608 3609 3610 3611 3612
This format is only appropriate for outputting a query result, not for parsing.


==CSV==

Comma separated values (<a href="https://tools.ietf.org/html/rfc4180">RFC</a>).

String values are output in double quotes. Double quote inside a string is output as two consecutive double quotes. That's all escaping rules. Date and DateTime values are output in double quotes. Numbers are output without quotes. Fields are delimited by commas. Rows are delimited by unix newlines (LF). Arrays are output in following way: first, array are serialized to String (as in TabSeparated or Values formats), and then the String value are output in double quotes. Tuples are narrowed and serialized as separate columns.

During parsing, values could be enclosed or not enclosed in quotes. Supported both single and double quotes. In particular, Strings could be represented without quotes - in that case, they are parsed up to comma or newline (CR or LF). Contrary to RFC, in case of parsing strings without quotes, leading and trailing spaces and tabs are ignored. As line delimiter, both Unix (LF), Windows (CR LF) or Mac OS Classic (LF CR) variants are supported.

CSV format supports output of totals and extremes similar to TabSeparated format.


==CSVWithNames==

Also contains header, similar to TabSeparatedWithNames.
3613 3614


3615
==RowBinary==
3616

3617 3618
Writes data by row in binary format. Rows and values are listed consecutively, without separators.
This format is less efficient than the Native format, since it is row-based.
3619

3620 3621 3622 3623 3624 3625 3626
Numbers is written in little endian, fixed width. For example, UInt64 takes 8 bytes.
DateTime is written as UInt32 with unix timestamp value.
Date is written as UInt16 with number of days since 1970-01-01 in value.
String is written as length in varint (unsigned <a href="https://en.wikipedia.org/wiki/LEB128">LEB128</a>) format and then bytes of string.
FixedString is written as just its bytes.
Array is written as length in varint (unsigned <a href="https://en.wikipedia.org/wiki/LEB128">LEB128</a>) format and then all elements, contiguously.

3627

3628
==Pretty==
3629

3630
Writes data as Unicode-art tables, also using ANSI-escape sequences for setting colors in the terminal.
3631 3632
A full grid of the table is drawn, and each row occupies two lines in the terminal. Each result block is output as a separate table. This is necessary so that blocks can be output without buffering results (buffering would be necessary in order to pre-calculate the visible width of all the values).
To avoid dumping too much data to the terminal, only the first 10,000 rows are printed. If the number of rows is greater than or equal to 10,000, the message &quot;Showed first 10,000&quot; is printed.
3633
This format is only appropriate for outputting a query result, not for parsing.
3634

3635
The Pretty format supports outputting total values (when using WITH TOTALS) and extremes (when &#39;extremes&#39; is set to 1). In these cases, total values and extreme values are output after the main data, in separate tables. Example (shown for the PrettyCompact format):
3636

3637
%%SELECT EventDate, count() AS c FROM test.hits GROUP BY EventDate WITH TOTALS ORDER BY EventDate FORMAT PrettyCompact%%
3638

3639
%%
3640 3641 3642 3643 3644 3645 3646 3647 3648 3649 3650 3651 3652 3653 3654 3655 3656 3657 3658 3659
┌──EventDate─┬───────c─┐
│ 2014-03-17 │ 1406958 │
│ 2014-03-18 │ 1383658 │
│ 2014-03-19 │ 1405797 │
│ 2014-03-20 │ 1353623 │
│ 2014-03-21 │ 1245779 │
│ 2014-03-22 │ 1031592 │
│ 2014-03-23 │ 1046491 │
└────────────┴─────────┘

Totals:
┌──EventDate─┬───────c─┐
│ 0000-00-00 │ 8873898 │
└────────────┴─────────┘

Extremes:
┌──EventDate─┬───────c─┐
│ 2014-03-17 │ 1031592 │
│ 2014-03-23 │ 1406958 │
└────────────┴─────────┘
3660
%%
3661

3662
==PrettyCompact==
3663

3664
Differs from Pretty in that the grid is drawn between rows and the result is more compact. This format is used by default in the command-line client in interactive mode.
3665 3666


3667
==PrettyCompactMonoBlock==
3668

3669
Differs from PrettyCompact in that up to 10,000 rows are buffered, then output as a single table, not by blocks.
3670 3671


3672
==PrettySpace==
3673

3674
Differs from PrettyCompact in that whitespace (space characters) is used instead of the grid.
3675 3676


3677
==PrettyNoEscapes==
3678

3679 3680
Differs from Pretty in that ANSI-escape sequences aren&#39;t used. This is necessary for displaying this format in a browser, as well as for using the &#39;watch&#39; command-line utility.
Example:
3681

3682
%%watch -n1 &quot;clickhouse-client --query=&#39;SELECT * FROM system.events FORMAT PrettyCompactNoEscapes&#39;&quot;%%
3683

3684
You can use the HTTP interface for displaying in the browser.
3685 3686


3687
==PrettyCompactNoEscapes==
3688

3689
The same.
3690 3691


3692
==PrettySpaceNoEscapes==
3693

3694
The same.
3695 3696


3697
==Vertical==
3698

3699
Prints each value on a separate line with the column name specified. This format is convenient for printing just one or a few rows, if each row consists of a large number of columns.
3700
This format is only appropriate for outputting a query result, not for parsing.
3701 3702


3703
==Values==
3704

3705
Prints every row in parentheses. Rows are separated by commas. There is no comma after the last row. The values inside the parentheses are also comma-separated. Numbers are output in decimal format without quotes. Arrays are output in square brackets. Strings, dates, and dates with times are output in quotes. Escaping rules and parsing are same as in the TabSeparated format. During formatting, extra spaces aren&#39;t inserted, but during parsing, they are allowed and skipped (except for spaces inside array values, which are not allowed).
3706

3707
This is the format that is used in INSERT INTO t VALUES ...
3708
But you can also use it for query result.
3709 3710


3711
==JSON==
3712

3713
Outputs data in JSON format. Besides data tables, it also outputs column names and types, along with some additional information - the total number of output rows, and the number of rows that could have been output if there weren&#39;t a LIMIT. Example:
3714

3715
%%SELECT SearchPhrase, count() AS c FROM test.hits GROUP BY SearchPhrase WITH TOTALS ORDER BY c DESC LIMIT 5 FORMAT JSON%%
3716

3717
%%
3718 3719 3720 3721 3722 3723 3724 3725 3726 3727 3728 3729 3730 3731 3732 3733 3734 3735 3736 3737 3738 3739 3740 3741 3742 3743 3744 3745 3746 3747 3748 3749 3750 3751 3752 3753 3754 3755 3756 3757 3758 3759 3760 3761 3762 3763 3764 3765 3766 3767 3768 3769 3770 3771 3772 3773 3774 3775 3776 3777 3778
{
        &quot;meta&quot;:
        [
                {
                        &quot;name&quot;: &quot;SearchPhrase&quot;,
                        &quot;type&quot;: &quot;String&quot;
                },
                {
                        &quot;name&quot;: &quot;c&quot;,
                        &quot;type&quot;: &quot;UInt64&quot;
                }
        ],

        &quot;data&quot;:
        [
                {
                        &quot;SearchPhrase&quot;: &quot;&quot;,
                        &quot;c&quot;: &quot;8267016&quot;
                },
                {
                        &quot;SearchPhrase&quot;: &quot;bath interiors&quot;,
                        &quot;c&quot;: &quot;2166&quot;
                },
                {
                        &quot;SearchPhrase&quot;: &quot;yandex&quot;,
                        &quot;c&quot;: &quot;1655&quot;
                },
                {
                        &quot;SearchPhrase&quot;: &quot;spring 2014 fashion&quot;,
                        &quot;c&quot;: &quot;1549&quot;
                },
                {
                        &quot;SearchPhrase&quot;: &quot;freeform photo&quot;,
                        &quot;c&quot;: &quot;1480&quot;
                }
        ],

        &quot;totals&quot;:
        {
                &quot;SearchPhrase&quot;: &quot;&quot;,
                &quot;c&quot;: &quot;8873898&quot;
        },

        &quot;extremes&quot;:
        {
                &quot;min&quot;:
                {
                        &quot;SearchPhrase&quot;: &quot;&quot;,
                        &quot;c&quot;: &quot;1480&quot;
                },
                &quot;max&quot;:
                {
                        &quot;SearchPhrase&quot;: &quot;&quot;,
                        &quot;c&quot;: &quot;8267016&quot;
                }
        },

        &quot;rows&quot;: 5,

        &quot;rows_before_limit_at_least&quot;: 141137
}
3779
%%
3780

3781
JSON is compatible with JavaScript. For this purpose, certain symbols are additionally escaped: the forward slash %%/%% is escaped as %%\/%%; alternative line breaks %%U+2028%% and %%U+2029%%, which don&#39;t work in some browsers, are escaped as <span class="inline-example">\u<i>XXXX</i></span>-sequences. ASCII control characters are escaped: backspace, form feed, line feed, carriage return, and horizontal tab as %%\b%%, %%\f%%, %%\n%%, %%\r%%, and %%\t%% respectively, along with the rest of the bytes from the range 00-1F using <span class="inline-example">\u<i>XXXX</i></span>-sequences. Invalid UTF-8 sequences are changed to the replacement character %%�%% and, thus, the output text will consist of valid UTF-8 sequences. UInt64 and Int64 numbers are output in double quotes for compatibility with JavaScript.
3782

3783 3784 3785
%%rows%% - The total number of output rows.
%%rows_before_limit_at_least%% - The minimal number of rows there would have been without a LIMIT. Output only if the query contains LIMIT.
If the query contains GROUP BY, %%rows_before_limit_at_least%% is the exact number of rows there would have been without a LIMIT.
3786

3787 3788
%%totals%% - Total values (when using %%WITH TOTALS%%).
%%extremes%% - Extreme values (when %%extremes%% is set to 1).
3789

3790
This format is only appropriate for outputting a query result, not for parsing.
N
Narek Galstyan 已提交
3791
See JSONEachRow format for INSERT queries.
3792

3793

3794
==JSONCompact==
3795

3796 3797 3798
Differs from JSON only in that data rows are output in arrays, not in objects. Example:

%%
3799 3800 3801 3802 3803 3804 3805 3806 3807 3808 3809 3810 3811 3812 3813 3814 3815 3816 3817 3818 3819 3820 3821 3822 3823 3824 3825 3826 3827 3828 3829 3830 3831 3832
{
        &quot;meta&quot;:
        [
                {
                        &quot;name&quot;: &quot;SearchPhrase&quot;,
                        &quot;type&quot;: &quot;String&quot;
                },
                {
                        &quot;name&quot;: &quot;c&quot;,
                        &quot;type&quot;: &quot;UInt64&quot;
                }
        ],

        &quot;data&quot;:
        [
                [&quot;&quot;, &quot;8267016&quot;],
                [&quot;bath interiors&quot;, &quot;2166&quot;],
                [&quot;yandex&quot;, &quot;1655&quot;],
                [&quot;spring 2014 fashion&quot;, &quot;1549&quot;],
                [&quot;freeform photo&quot;, &quot;1480&quot;]
        ],

        &quot;totals&quot;: [&quot;&quot;,&quot;8873898&quot;],

        &quot;extremes&quot;:
        {
                &quot;min&quot;: [&quot;&quot;,&quot;1480&quot;],
                &quot;max&quot;: [&quot;&quot;,&quot;8267016&quot;]
        },

        &quot;rows&quot;: 5,

        &quot;rows_before_limit_at_least&quot;: 141137
}
3833
%%
3834

3835 3836 3837
This format is only appropriate for outputting a query result, not for parsing.
See JSONEachRow format for INSERT queries.

3838

3839 3840
==JSONEachRow==

3841
If put in SELECT query, displays data in newline delimited JSON (JSON objects separated by \\n character) format.
N
Narek Galstyan 已提交
3842
If put in INSERT query, expects this kind of data as input.
3843 3844 3845 3846 3847 3848 3849 3850 3851 3852 3853 3854 3855 3856

%%
{"SearchPhrase":"","count()":"8267016"}
{"SearchPhrase":"bathroom interior","count()":"2166"}
{"SearchPhrase":"yandex","count()":"1655"}
{"SearchPhrase":"spring 2014 fashion","count()":"1549"}
{"SearchPhrase":"free-form photo","count()":"1480"}
{"SearchPhrase":"Angelina Jolie","count()":"1245"}
{"SearchPhrase":"omsk","count()":"1112"}
{"SearchPhrase":"photos of dog breeds","count()":"1091"}
{"SearchPhrase":"curtain design","count()":"1064"}
{"SearchPhrase":"baku","count()":"1000"}
%%

3857
Unlike JSON format, there are no replacements of invalid UTF-8 sequences. There can be arbitrary amount of bytes in a line.
3858 3859
This is done in order to avoid data loss during formatting. Values are displayed analogous to JSON format.

3860 3861 3862
In INSERT queries JSON data can be supplied with arbitrary order of columns (JSON key-value pairs). It is also possible to omit values in which case the default value of the column is inserted. N.B. when using JSONEachRow format, complex default values are not supported, so when omitting a column its value will be zeros or empty string depending on its type.

Space characters between JSON objects are skipped. Between objects there can be a comma which is ignored. Newline character is not a mandatory separator for objects.
3863 3864 3865 3866 3867 3868 3869 3870 3871 3872 3873 3874 3875 3876 3877 3878 3879 3880 3881 3882 3883


==TSKV==

Similar to TabSeparated, but displays data in %%name=value%% format. Names are displayed just as in TabSeparated. Additionally, a %%=%% symbol is displayed.

%%
SearchPhrase=   count()=8267016
SearchPhrase=bathroom interior    count()=2166
SearchPhrase=yandex     count()=1655
SearchPhrase=spring 2014 fashion    count()=1549
SearchPhrase=free-form photo       count()=1480
SearchPhrase=Angelina Jolie    count()=1245
SearchPhrase=omsk       count()=1112
SearchPhrase=photos of dog breeds    count()=1091
SearchPhrase=curtain design        count()=1064
SearchPhrase=baku       count()=1000
%%

In case of many small columns this format is obviously not effective and there usually is no reason to use it. This format is supported because it is used for some cases in Yandex.

3884
Format is supported both for input and output. In INSERT queries data can be supplied with arbitrary order of columns. It is also possible to omit values in which case the default value of the column is inserted. N.B. when using TSKV format, complex default values are not supported, so when omitting a column its value will be zeros or empty string depending on its type.
3885 3886 3887 3888


==XML==

3889
XML format is supported only for displaying data, not for INSERTS. Example:
3890 3891 3892 3893 3894 3895 3896 3897 3898 3899 3900 3901 3902 3903 3904 3905 3906 3907 3908 3909 3910 3911 3912 3913 3914 3915 3916 3917 3918 3919 3920 3921 3922 3923 3924 3925 3926 3927 3928 3929 3930 3931 3932 3933 3934 3935 3936 3937 3938 3939 3940 3941 3942 3943 3944 3945 3946 3947 3948 3949 3950 3951 3952 3953 3954 3955 3956 3957 3958 3959 3960 3961

%%
&lt;?xml version='1.0' encoding='UTF-8' ?&gt;
&lt;result&gt;
        &lt;meta&gt;
                &lt;columns&gt;
                        &lt;column&gt;
                                &lt;name&gt;SearchPhrase&lt;/name&gt;
                                &lt;type&gt;String&lt;/type&gt;
                        &lt;/column&gt;
                        &lt;column&gt;
                                &lt;name&gt;count()&lt;/name&gt;
                                &lt;type&gt;UInt64&lt;/type&gt;
                        &lt;/column&gt;
                &lt;/columns&gt;
        &lt;/meta&gt;
        &lt;data&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;&lt;/SearchPhrase&gt;
                        &lt;field&gt;8267016&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;bathroom interior&lt;/SearchPhrase&gt;
                        &lt;field&gt;2166&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;yandex&gt;
                        &lt;field&gt;1655&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;spring 2014 fashion&lt;/SearchPhrase&gt;
                        &lt;field&gt;1549&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;free-form photo&lt;/SearchPhrase&gt;
                        &lt;field&gt;1480&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;Angelina Jolie&lt;/SearchPhrase&gt;
                        &lt;field&gt;1245&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;omsk&lt;/SearchPhrase&gt;
                        &lt;field&gt;1112&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;photos of dog breeds&lt;/SearchPhrase&gt;
                        &lt;field&gt;1091&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;curtain design&lt;/SearchPhrase&gt;
                        &lt;field&gt;1064&lt;/field&gt;
                &lt;/row&gt;
                &lt;row&gt;
                        &lt;SearchPhrase&gt;baku&lt;/SearchPhrase&gt;
                        &lt;field&gt;1000&lt;/field&gt;
                &lt;/row&gt;
        &lt;/data&gt;
        &lt;rows&gt;10&lt;/rows&gt;
        &lt;rows_before_limit_at_least&gt;141137&lt;/rows_before_limit_at_least&gt;
&lt;/result&gt;
%%

If name of a column contains some unacceptable character, field is used as a name. In other aspects XML uses JSON structure.
As in case of JSON, invalid UTF-8 sequences are replaced by replacement character � so displayed text will only contain valid UTF-8 sequences.

In string values %%&lt;%% and %%&amp;%% are displayed as %%&amp;lt;%% and %%&amp;amp;%%.

Arrays are displayed as %%&lt;array&gt;&lt;elem&gt;Hello&lt;/elem&gt;&lt;elem&gt;World&lt;/elem&gt;...&lt;/array&gt;%%,
and tuples as %%&lt;tuple&gt;&lt;elem&gt;Hello&lt;/elem&gt;&lt;elem&gt;World&lt;/elem&gt;...&lt;/tuple&gt;%%.


3962
==Null==
3963

3964 3965
Nothing is output. However, the query is processed, and when using the command-line client, data is transmitted to the client. This is used for tests, including productivity testing. Obviously, this format is only appropriate for outputting a query result, not for parsing.

3966 3967

</div>
3968
<div class="island">
3969 3970
<h1>Data types</h1>
</div>
3971
<div class="island content">
3972

3973
==UInt8, UInt16, UInt32, UInt64, Int8, Int16, Int32, Int64==
3974

3975
Fixed-length integers, with or without a sign.
3976 3977


3978
==Float32, Float64==
3979

3980
Floating-point numbers are just like &#39;float&#39; and &#39;double&#39; in the C language.
3981 3982
In contrast to standard SQL, floating-point numbers support &#39;inf&#39;, &#39;-inf&#39;, and even &#39;nan&#39;s.
See the notes on sorting nans in &quot;ORDER BY clause&quot;.
3983
We do not recommend storing floating-point numbers in tables.
3984 3985


3986
==String==
3987

3988 3989
Strings of an arbitrary length. The length is not limited. The value can contain an arbitrary set of bytes, including null bytes.
The String type replaces the types VARCHAR, BLOB, CLOB, and others from other DBMSs.
3990

3991
===Encodings===
3992

3993
ClickHouse doesn&#39;t have the concept of encodings. Strings can contain an arbitrary set of bytes, which are stored and output as-is.
3994 3995
If you need to store texts, we recommend using UTF-8 encoding. At the very least, if your terminal uses UTF-8 (as recommended), you can read and write your values without making conversions.
Similarly, certain functions for working with strings have separate variations that work under the assumption that the string contains a set of bytes representing a UTF-8 encoded text.
3996
For example, the &#39;length&#39; function calculates the string length in bytes, while the &#39;lengthUTF8&#39; function calculates the string length in Unicode code points, assuming that the value is UTF-8 encoded.
3997 3998


3999
==FixedString(N)==
4000

4001
A fixed-length string of N bytes (not characters or code points). N must be a strictly positive natural number.
4002 4003 4004
When server reads a string (as an input passed in INSERT query, for example) that contains fewer bytes, the string is padded to N bytes by appending null bytes at the right.
When server reads a string that contains more bytes, an error message is returned.
When server writes a string (as an output of SELECT query, for example), null bytes are not trimmed off of the end of the string, but are output.
4005
Note that this behavior differs from MySQL behavior for the CHAR type (where strings are padded with spaces, and the spaces are removed for output).
4006

4007
Fewer functions can work with the FixedString(N) type than with String, so it is less convenient to use.
4008 4009


4010
==Date==
4011

4012 4013
A date. Stored in two bytes as the number of days since 1970-01-01 (unsigned). Allows storing values from just after the beginning of the Unix Epoch to the upper threshold defined by a constant at the compilation stage (currently, this is until the year 2038, but it may be expanded to 2106).
The minimum value is output as 0000-00-00.
4014

4015
The date is stored without the time zone.
4016 4017


4018
==DateTime==
4019

4020
Date with time. Stored in four bytes as a Unix timestamp (unsigned). Allows storing values in the same range as for the Date type. The minimal value is output as 0000-00-00 00:00:00. The time is stored with accuracy up to one second (without leap seconds).
4021

4022
===Time zones===
4023

4024
The date with time is converted from text (divided into component parts) to binary and back, using the system&#39;s time zone at the time the client or server starts. In text format, information about daylight savings is lost.
4025

4026
Supports only those time zones that never had the time differ from UTC for a partial number of hours (without leap seconds) over the entire time range you will be working with.
4027

4028
So when working with a textual date (for example, when saving text dumps), keep in mind that there may be ambiguity during changes for daylight savings time, and there may be problems matching data if the time zone changed.
4029

W
William Shallum 已提交
4030 4031 4032 4033 4034 4035 4036 4037 4038 4039 4040 4041 4042 4043 4044 4045 4046 4047 4048 4049 4050 4051 4052 4053 4054
==Enum==

Enum8 or Enum16. A set of enumerated string values that are stored as Int8 or Int16. Example:

%%Enum8('hello' = 1, 'world' = 2)%%
- This data type has two possible values - 'hello' and 'world'.

The numeric values must be within -128..127 for %%Enum8%% and -32768..32767 for %%Enum16%%. Every member of the enum must also have different numbers. The empty string is a valid value. The numbers do not need to be sequential and can be in any order. The order does not matter.

In memory, the data is stored in the same way as the numeric types %%Int8%% and %%Int16%%.
When reading in text format, the string is read and the corresponding numeric value is looked up. An exception will be thrown if it is not found.
When writing in text format, the stored number is looked up and the corresponding string is written out. An exception will be thrown if the number does not correspond to a known value.
In binary format, the information is saved in the same way as %%Int8%% and %%Int16%%.
The implicit default value for an Enum is the value having the smallest numeric value.

In %%ORDER BY%%, %%GROUP BY%%, %%IN%%, %%DISTINCT%%, etc. Enums behave like the numeric value. e.g. they will be sorted by the numeric value in an %%ORDER BY%%. Equality and comparison operators behave like they do on the underlying numeric value.

Enum values cannot be compared to numbers, they must be compared to a string. If the string compared to is not a valid value for the Enum, an exception will be thrown. The %%IN%% operator is supported with the Enum on the left hand side and a set of strings on the right hand side.

Most numeric and string operations are not defined for Enum values, e.g. adding a number to an Enum or concatenating a string to an Enum. However, the %%toString%% function can be used to convert the Enum to its string value. Enum values are also convertible to numeric types using the %%to<i>T</i>%% function where <i>T</i> is a numeric type. When T corresponds to the enum's underlying numeric type, this conversion is zero-cost.

It is possible to add new members to the Enum using ALTER. If the only change is to the set of values, the operation will be almost instant. It is also possible to remove members of the Enum using ALTER. Removing members is only safe if the removed value has never been used in the table. As a safeguard, changing the numeric value of a previously defined Enum member will throw an exception.

Using ALTER, it is possible to change an %%Enum8%% to an %%Enum16%% or vice versa - just like changing an %%Int8%% to %%Int16%%.

4055

4056
==Array(T)==
4057

4058 4059
Array of T-type items. The T type can be any type, including an array.
We don&#39;t recommend using multidimensional arrays, because they are not well supported (for example, you can&#39;t store multidimensional arrays in any tables except Memory tables).
4060 4061


4062
==Tuple(T1, T2, ...)==
4063

4064
Tuples can&#39;t be written to tables (other than Memory tables). They are used for temporary column grouping. Columns can be grouped when an IN expression is used in a query, and for specifying certain formal parameters of lambda functions. For more information, see &quot;IN operators&quot; and &quot;Higher order functions&quot;.
4065

4066
Tuples can be output as the result of running a query. In this case, for text formats other than JSON*, values are comma-separated in brackets. In JSON* formats, tuples are output as arrays (in square brackets).
4067 4068


4069
==Nested data structures==
4070

4071
==Nested(Name1 Type1, Name2 Type2, ...)==
4072

4073
A nested data structure is like a nested table. The parameters of a nested data structure - the column names and types - are specified the same way as in a CREATE query. Each table row can correspond to any number of rows in a nested data structure.
4074

4075
Example:
4076

4077
%%
4078 4079 4080 4081 4082 4083 4084 4085 4086 4087 4088 4089 4090 4091 4092 4093 4094 4095 4096 4097
CREATE TABLE test.visits
(
    CounterID UInt32,
    StartDate Date,
    Sign Int8,
    IsNew UInt8,
    VisitID UInt64,
    UserID UInt64,
    ...
    Goals Nested
    (
        ID UInt32,
        Serial UInt32,
        EventTime DateTime,
        Price Int64,
        OrderID String,
        CurrencyID UInt32
    ),
    ...
) ENGINE = CollapsingMergeTree(StartDate, intHash32(UserID), (CounterID, StartDate, intHash32(UserID), VisitID), 8192, Sign)
4098
%%
4099

4100
This example declares the &#39;Goals&#39; nested data structure, which contains data about conversions (goals reached). Each row in the &#39;visits&#39; table can correspond to zero or any number of conversions.
4101

4102
Only a single nesting level is supported.
4103

4104
In most cases, when working with a nested data structure, its individual columns are specified. To do this, the column names are separated by a dot. These columns make up an array of matching types. All the column arrays of a single nested data structure have the same length.
4105

4106
Example:
4107

4108
%%
4109 4110 4111 4112 4113 4114 4115 4116 4117 4118 4119 4120 4121 4122 4123 4124 4125 4126 4127
SELECT
    Goals.ID,
    Goals.EventTime
FROM test.visits
WHERE CounterID = 101500 AND length(Goals.ID) &lt; 5
LIMIT 10

┌─Goals.ID───────────────────────┬─Goals.EventTime───────────────────────────────────────────────────────────────────────────┐
│ [1073752,591325,591325]        │ [&#39;2014-03-17 16:38:10&#39;,&#39;2014-03-17 16:38:48&#39;,&#39;2014-03-17 16:42:27&#39;]                       │
│ [1073752]                      │ [&#39;2014-03-17 00:28:25&#39;]                                                                   │
│ [1073752]                      │ [&#39;2014-03-17 10:46:20&#39;]                                                                   │
│ [1073752,591325,591325,591325] │ [&#39;2014-03-17 13:59:20&#39;,&#39;2014-03-17 22:17:55&#39;,&#39;2014-03-17 22:18:07&#39;,&#39;2014-03-17 22:18:51&#39;] │
│ []                             │ []                                                                                        │
│ [1073752,591325,591325]        │ [&#39;2014-03-17 11:37:06&#39;,&#39;2014-03-17 14:07:47&#39;,&#39;2014-03-17 14:36:21&#39;]                       │
│ []                             │ []                                                                                        │
│ []                             │ []                                                                                        │
│ [591325,1073752]               │ [&#39;2014-03-17 00:46:05&#39;,&#39;2014-03-17 00:46:05&#39;]                                             │
│ [1073752,591325,591325,591325] │ [&#39;2014-03-17 13:28:33&#39;,&#39;2014-03-17 13:30:26&#39;,&#39;2014-03-17 18:51:21&#39;,&#39;2014-03-17 18:51:45&#39;] │
└────────────────────────────────┴───────────────────────────────────────────────────────────────────────────────────────────┘
4128
%%
4129

4130
It is easiest to think of a nested data structure as a set of multiple column arrays of the same length.
4131

4132
The only place where a SELECT query can specify the name of an entire nested data structure instead of individual columns is the ARRAY JOIN clause. For more information, see &quot;ARRAY JOIN clause&quot;. Example:
4133

4134
%%
4135 4136 4137 4138 4139 4140 4141 4142 4143 4144 4145 4146 4147 4148 4149 4150 4151 4152 4153 4154
SELECT
    Goal.ID,
    Goal.EventTime
FROM test.visits
ARRAY JOIN Goals AS Goal
WHERE CounterID = 101500 AND length(Goals.ID) &lt; 5
LIMIT 10

┌─Goal.ID─┬──────Goal.EventTime─┐
│ 1073752 │ 2014-03-17 16:38:10 │
│  591325 │ 2014-03-17 16:38:48 │
│  591325 │ 2014-03-17 16:42:27 │
│ 1073752 │ 2014-03-17 00:28:25 │
│ 1073752 │ 2014-03-17 10:46:20 │
│ 1073752 │ 2014-03-17 13:59:20 │
│  591325 │ 2014-03-17 22:17:55 │
│  591325 │ 2014-03-17 22:18:07 │
│  591325 │ 2014-03-17 22:18:51 │
│ 1073752 │ 2014-03-17 11:37:06 │
└─────────┴─────────────────────┘
4155
%%
4156

4157
You can&#39;t perform SELECT for an entire nested data structure. You can only explicitly list individual columns that are part of it.
4158

4159
For an INSERT query, you should pass all the component column arrays of a nested data structure separately (as if they were individual column arrays). During insertion, the system checks that they have the same length.
4160

4161
For a DESCRIBE query, the columns in a nested data structure are listed separately in the same way.
4162

4163
The ALTER query is very limited for elements in a nested data structure.
4164 4165


4166
==AggregateFunction(name, types_of_arguments...)==
4167

4168
The intermediate state of an aggregate function. To get it, use aggregate functions with the &#39;-State&#39; suffix. For more information, see &quot;AggregatingMergeTree&quot;.
4169 4170


4171
==Special data types==
4172

4173
Special data type values can&#39;t be saved to a table or output in results, but are used as the intermediate result of running a query.
4174

4175
===Set===
4176

4177
Used for the right half of an IN expression.
4178

4179
===Expression===
4180

4181
Used for representing lambda expressions in high-order functions.
4182 4183


4184
==Boolean values==
4185

4186
There isn&#39;t a separate type for boolean values. They use the UInt8 type, restricted to the values 0 or 1.
4187 4188

</div>
4189
<div class="island">
4190 4191
<h1>Operators</h1>
</div>
4192
<div class="island content">
4193

4194
All operators are transformed to the corresponding functions at the query parsing stage, in accordance with their precedence and associativity.
4195

4196
==Access operators==
4197

4198 4199
%%a[N]%% - Access to an array element, arrayElement(a, N) function.
%%a.N%% - Access to a tuple element, tupleElement(a, N) function.
4200

4201
==Numeric negation operator==
4202

4203
%%-a%% - negate(a) function
4204

4205
==Multiplication and division operators==
4206

4207 4208 4209
%%a * b%% - multiply(a, b) function
%%a / b%% - divide(a, b) function
%%a % b%% - modulo(a, b) function
4210

4211
==Addition and subtraction operators==
4212

4213 4214
%%a + b%% - plus(a, b) function
%%a - b%% - minus(a, b) function
4215

4216
==Comparison operators==
4217

4218 4219 4220
%%a = b%% - equals(a, b) function
%%a == b%% - equals(a, b) function
%%a != b%% - notEquals(a, b) function
4221
<span class="inline-example">a &lt;> b</span> - notEquals(a, b) function
4222
%%a &lt;= b%% - lessOrEquals(a, b) function
4223
<span class="inline-example">a >= b</span> - greaterOrEquals(a, b) function
4224
%%a &lt; b%% - less(a, b) function
4225
<span class="inline-example">a > b</span> - greater(a, b) function
4226 4227
%%a LIKE s%% - like(a, b) function
%%a NOT LIKE s%% - notLike(a, b) function
4228

4229
==Operators for working with data sets==
4230

4231
See the section &quot;IN operators&quot;.
4232

4233 4234 4235 4236
%%a IN ...%% - in(a, b) function
%%a NOT IN ...%% - notIn(a, b) function
%%a GLOBAL IN ...%% - globalIn(a, b) function
%%a GLOBAL NOT IN ...%% - globalNotIn(a, b) function
4237

4238
==Logical negation operator==
4239

4240
%%NOT a%% - not(a) function
4241

4242
==Logical &quot;AND&quot; operator==
4243

4244
%%a AND b%% - and(a, b) function
4245

4246
==Logical &quot;OR&quot; operator==
4247

4248
%%a OR b%% - or(a, b) function
4249

4250
==Conditional operator==
4251

4252
%%a ? b : c%% - if(a, b, c) function
4253

4254
==Lambda creation operator==
4255

4256
<span class="inline-example">x -> expr</span> - lambda(x, expr) function
4257

4258
The following operators do not have a priority, since they are brackets:
4259

4260
==Array creation operator==
4261

4262
%%[x1, ...]%% - array(x1, ...) function
4263

4264
==Tuple creation operator==
4265

4266
%%(x1, x2, ...)%% - tuple(x2, x2, ...) function
4267 4268


4269
==Associativity==
4270

4271 4272
All binary operators have left associativity. For example, &#39;1 + 2 + 3&#39; is transformed to &#39;plus(plus(1, 2), 3)&#39;.
Sometimes this doesn&#39;t work the way you expect. For example, &#39;SELECT 4 > 3 > 2&#39; results in 0.
4273

4274
For efficiency, the &#39;and&#39; and &#39;or&#39; functions accept any number of arguments. The corresponding chains of AND and OR operators are transformed to a single call of these functions.
4275 4276

</div>
4277
<div class="island">
4278 4279
<h1>Functions</h1>
</div>
4280
<div class="island content">
4281

4282
There are at least* two types of functions - regular functions (they are just called &quot;functions&quot;) and aggregate functions. These are completely different concepts. Regular functions work as if they are applied to each row separately (for each row, the result of the function doesn&#39;t depend on the other rows). Aggregate functions accumulate a set of values from various rows (i.e. they depend on the entire set of rows).
4283

4284 4285
In this section we discuss regular functions. For aggregate functions, see the section &quot;Aggregate functions&quot;.
* - There is a third type of function that the &#39;arrayJoin&#39; function belongs to; table functions can also be mentioned separately.
4286

4287
===Strong typing===
4288

4289
In contrast to standard SQL, ClickHouse has strong typing. In other words, it doesn&#39;t make implicit conversions between types. Each function works for a specific set of types. This means that sometimes you need to use type conversion functions.
4290

4291
===Сommon subexpression elimination===
4292

4293
All expressions in a query that have the same AST (the same record or same result of syntactic parsing) are considered to have identical values. Such expressions are concatenated and executed once. Identical subqueries are also eliminated this way.
4294

4295
===Types of results===
4296

4297
All functions return a single return as the result (not several values, and not zero values). The type of result is usually defined only by the types of arguments, not by the values. Exceptions are the tupleElement function (the a.N operator), and the toFixedString function.
4298

4299
===Constants===
4300

4301
For simplicity, certain functions can only work with constants for some arguments. For example, the right argument of the LIKE operator must be a constant.
4302 4303
Almost all functions return a constant for constant arguments. The exception is functions that generate random numbers.
The &#39;now&#39; function returns different values for queries that were run at different times, but the result is considered a constant, since constancy is only important within a single query.
4304
A constant expression is also considered a constant (for example, the right half of the LIKE operator can be constructed from multiple constants).
4305

4306
Functions can be implemented in different ways for constant and non-constant arguments (different code is executed). But the results for a constant and for a true column containing only the same value should match each other.
4307

4308
===Immutability===
4309

4310
Functions can&#39;t change the values of their arguments - any changes are returned as the result. Thus, the result of calculating separate functions does not depend on the order in which the functions are written in the query.
4311

4312
===Error handling===
4313

4314
Some functions might throw an exception if the data is invalid. In this case, the query is canceled and an error text is returned to the client. For distributed processing, when an exception occurs on one of the servers, the other servers also attempt to abort the query.
4315

4316
===Evaluation of argument expressions===
4317

4318 4319
In almost all programming languages, one of the arguments might not be evaluated for certain operators. This is usually for the operators &amp;&amp;, ||, ?:.
But in ClickHouse, arguments of functions (operators) are always evaluated. This is because entire parts of columns are evaluated at once, instead of calculating each row separately.
4320

4321
===Performing functions for distributed query processing===
4322

4323
For distributed query processing, as many stages of query processing as possible are performed on remote servers, and the rest of the stages (merging intermediate results and everything after that) are performed on the requestor server.
4324

4325
This means that functions can be performed on different servers.
4326
For example, in the query <span class="inline-example">SELECT <b>f</b>(sum(<b>g</b>(x))) FROM distributed_table GROUP BY <b>h</b>(y)</span>,
4327 4328
- if %%distributed_table%% has at least two shards, the functions %%g%% and %%h%% are performed on remote servers, and the function %%f%% - is performed on the requestor server.
- if %%distributed_table%% has only one shard, all the functions %%f%%, %%g%%, and %%h%% are performed on this shard&#39;s server.
4329

4330
The result of a function usually doesn&#39;t depend on which server it is performed on. However, sometimes this is important.
4331
For example, functions that work with dictionaries use the dictionary that exists on the server they are running on.
4332
Another example is the %%hostName%% function, which returns the name of the server it is running on in order to make GROUP BY by servers in a SELECT query.
4333

4334
If a function in a query is performed on the requestor server, but you need to perform it on remote servers, you can wrap it in an &#39;any&#39; aggregate function or add it to a key in GROUP BY.
4335 4336


4337
==Arithmetic functions==
4338

4339
For all arithmetic functions, the result type is calculated as the smallest number type that the result fits in, if there is such a type. The minimum is taken simultaneously based on the number of bits, whether it is signed, and whether it floats. If there are not enough bits, the highest bit type is taken.
4340

4341
Example:
4342

4343
<pre class="terminal">
4344 4345
:) SELECT toTypeName(0), toTypeName(0 + 0), toTypeName(0 + 0 + 0), toTypeName(0 + 0 + 0 + 0)

4346
┌─<i class="c15">toTypeName(0)</i>─┬─<i class="c15">toTypeName(plus(0, 0))</i>─┬─<i class="c15">toTypeName(plus(plus(0, 0), 0))</i>─┬─<i class="c15">toTypeName(plus(plus(plus(0, 0), 0), 0))</i>─┐
4347 4348 4349 4350
│ UInt8         │ UInt16                 │ UInt32                          │ UInt64                                   │
└───────────────┴────────────────────────┴─────────────────────────────────┴──────────────────────────────────────────┘
</pre>

4351
Arithmetic functions work for any pair of types from UInt8, UInt16, UInt32, UInt64, Int8, Int16, Int32, Int64, Float32, or Float64.
4352

4353
Overflow is produced the same way as in C++.
4354 4355


4356
===plus(a, b), a + b operator===
4357

4358
Calculates the sum of the numbers.
4359

4360
You can also add whole numbers with a date or date and time. In the case of a date, adding a whole number means adding the corresponding number of days. For a date with time, it means adding the corresponding number of seconds.
4361

4362
===minus(a, b), a - b operator===
4363

4364
Calculates the difference. The result is always signed.
4365

4366
You can also calculate whole numbers from a date or date with time. The idea is the same - see above for &#39;plus&#39;.
4367

4368
===multiply(a, b), a * b operator===
4369

4370
Calculates the product of the numbers.
4371

4372
===divide(a, b), a / b operator===
4373

4374
Calculates the quotient of the numbers. The result type is always a floating-point type.
4375
It is not integer division. For integer division, use the &#39;intDiv&#39; function.
4376
When dividing by zero you get &#39;inf&#39;, &#39;-inf&#39;, or &#39;nan&#39;.
4377

4378
===intDiv(a, b)===
4379

4380 4381
Calculates the quotient of the numbers. Divides into integers, rounding down (by the absolute value).
When dividing by zero or when dividing a minimal negative number by minus one, an exception is thrown.
4382

4383
===intDivOrZero(a, b)===
4384

4385
Differs from &#39;intDiv&#39; in that it returns zero when dividing by zero or when dividing a minimal negative number by minus one.
4386

4387
===modulo(a, b), a % b operator===
4388

4389
Calculates the remainder after division.
4390
If arguments are floating-point numbers, they are pre-converted to integers by dropping the decimal portion. The remainder is taken in the same sense as in C++. Truncated division is used for negative numbers.
4391
An exception is thrown when dividing by zero or when dividing a minimal negative number by minus one.
4392

4393
===negate(a), -a operator===
4394

4395
Calculates a number with the reverse sign. The result is always signed.
4396

4397
===abs(a)===
4398

4399 4400
Calculates the absolute value of the number &#39;a&#39;. That is, if a&lt; 0, it returns -a.
For unsigned types, it doesn&#39;t do anything. For signed integer types, it returns an unsigned number.
4401

4402
==Bit functions==
4403

4404
Bit functions work for any pair of types from UInt8, UInt16, UInt32, UInt64, Int8, Int16, Int32, Int64, Float32, or Float64.
4405

4406
The result type is an integer with bits equal to the maximum bits of its arguments. If at least one of the arguments is signed, the result is a signed number. If an argument is a floating-point number, it is cast to Int64.
4407

4408
===bitAnd(a, b)===
4409

4410
===bitOr(a, b)===
4411

4412
===bitXor(a, b)===
4413

4414
===bitNot(a)===
4415

4416
===bitShiftLeft(a, b)===
4417

4418
===bitShiftRight(a, b)===
4419 4420


4421
==Comparison functions==
4422

4423
Comparison functions always return 0 or 1 (Uint8).
4424

4425
The following types can be compared:
4426 4427 4428 4429
- numbers
- strings and fixed strings
- dates
- dates with times
4430
within each group, but not between different groups.
4431

4432
For example, you can&#39;t compare a date with a string. You have to use a function to convert the string to a date, or vice versa.
4433

4434
Strings are compared by bytes. A shorter string is smaller than all strings that start with it and that contain at least one more character.
4435

4436
Signed and unsigned numbers are compared the same way as in C++. That is, you can get an incorrect result in some cases. Example: SELECT 9223372036854775807 > -1
4437 4438


4439
===equals, a = b and a == b operator===
4440 4441 4442

<h3>notEquals, a != b and a &lt;> b operator</h3>

4443
===less, &lt; operator===
4444 4445 4446

<h3>greater, > operator</h3>

4447
===lessOrEquals, &lt;= operator===
4448 4449 4450 4451

<h3>greaterOrEquals, >= operator</h3>


4452
==Logical functions==
4453

4454
Logical functions accept any numeric types, but return a UInt8 number equal to 0 or 1.
4455

4456
Zero as an argument is considered &quot;false,&quot; while any non-zero value is considered &quot;true&quot;.
4457 4458


4459
===and, AND operator===
4460

4461
===or, OR operator===
4462

4463
===not, NOT operator===
4464

4465
===xor===
4466 4467


4468
==Type conversion functions==
4469

4470 4471 4472 4473 4474
===toUInt8, toUInt16, toUInt32, toUInt64===
===toInt8, toInt16, toInt32, toInt64===
===toFloat32, toFloat64===
===toDate, toDateTime===
===toString===
4475

4476
Functions for converting between numbers, strings (but not fixed strings), dates, and dates with times. All these functions accept one argument.
4477

4478
When converting to or from a string, the value is formatted or parsed using the same rules as for the TabSeparated format (and almost all other text formats). If the string can&#39;t be parsed, an exception is thrown and the request is canceled.
4479

4480 4481
When converting dates to numbers or vice versa, the date corresponds to the number of days since the beginning of the Unix epoch.
When converting dates with times to numbers or vice versa, the date with time corresponds to the number of seconds since the beginning of the Unix epoch.
4482

4483 4484 4485 4486 4487 4488
Formats of date and date with time for toDate/toDateTime functions are defined as follows:
%%
YYYY-MM-DD
YYYY-MM-DD hh:mm:ss
%%

4489
As an exception, if converting from UInt32, Int32, UInt64, or Int64 type numbers to Date, and if the number is greater than or equal to 65536, the number is interpreted as a Unix timestamp (and not as the number of days) and is rounded to the date. This allows support for the common occurrence of writing &#39;toDate(unix_timestamp)&#39;, which otherwise would be an error and would require writing the more cumbersome &#39;toDate(toDateTime(unix_timestamp))&#39;.
4490

4491
Conversion between a date and date with time is performed the natural way: by adding a null time or dropping the time.
4492

4493
Conversion between numeric types uses the same rules as assignments between different numeric types in C++.
4494

4495
===toFixedString(s, N)===
4496

4497
Converts a String type argument to a FixedString(N) type (a string with fixed length N). N must be a constant. If the string has fewer bytes than N, it is passed with null bytes to the right. If the string has more bytes than N, an exception is thrown.
4498

4499
===toStringCutToZero(s)===
4500

4501
Accepts a String or FixedString argument. Returns a String and removes the null bytes from the end of the string.
4502

4503 4504 4505 4506
===reinterpretAsUInt8, reinterpretAsUInt16, reinterpretAsUInt32, reinterpretAsUInt64===
===reinterpretAsInt8, reinterpretAsInt16, reinterpretAsInt32, reinterpretAsInt64===
===reinterpretAsFloat32, reinterpretAsFloat64===
===reinterpretAsDate, reinterpretAsDateTime===
4507

4508
These functions accept a string and interpret the bytes placed at the beginning of the string as a number in host order (little endian). If the string isn&#39;t long enough, the functions work as if the string is padded with the necessary number of null bytes. If the string is longer than needed, the extra bytes are ignored. A date is interpreted as the number of days since the beginning of the Unix Epoch, and a date with time is interpreted as the number of seconds since the beginning of the Unix Epoch.
4509

4510
===reinterpretAsString===
4511

4512
This function accepts a number or date or date with time, and returns a string containing bytes representing the corresponding value in host order (little endian). Null bytes are dropped from the end. For example, a UInt32 type value of 255 is a string that is one byte long.
4513 4514


4515
==Functions for working with dates and times==
4516

4517 4518
===toYear===
- Converts a date or date with time to a UInt16 number containing the year number (AD).
4519

4520 4521
===toMonth===
- Converts a date or date with time to a UInt8 number containing the month number (1-12).
4522

4523 4524
===toDayOfMonth===
- Converts a date or date with time to a UInt8 number containing the number of the day of the month (1-31).
4525

4526 4527
===toDayOfWeek===
- Converts a date or date with time to a UInt8 number containing the number of the day of the week (Monday is 1, and Sunday is 7).
4528

4529 4530 4531
===toHour===
- Converts a date with time to a UInt8 number containing the number of the hour in 24-hour time (0-23).
This function assumes that if clocks are moved ahead, it is by one hour and occurs at 2 a.m., and if clocks are moved back, it is by one hour and occurs at 3 a.m. (which is not always true - even in Moscow the clocks were once changed at a different time).
4532

4533 4534
===toMinute===
- Converts a date with time to a UInt8 number containing the number of the minute of the hour (0-59).
4535

4536 4537 4538
===toSecond===
- Converts a date with time to a UInt8 number containing the number of the second in the minute (0-59).
Leap seconds are not accounted for.
4539

4540 4541 4542
===toMonday===
- Rounds down a date or date with time to the nearest Monday.
Returns the date.
4543

4544 4545 4546
===toStartOfMonth===
- Rounds down a date or date with time to the first day of the month.
Returns the date.
4547

4548 4549 4550
===toStartOfQuarter===
- Rounds down a date or date with time to the first day of the quarter.
The first day of the quarter is either 1 January, 1 April, 1 July, or 1 October. Returns the date.
4551

4552 4553 4554
===toStartOfYear===
- Rounds down a date or date with time to the first day of the year.
Returns the date.
4555

4556 4557
===toStartOfMinute===
- Rounds down a date with time to the start of the minute.
4558

4559 4560
===toStartOfHour===
- Rounds down a date with time to the start of the hour.
4561

4562 4563
===toTime===
- Converts a date with time to the date of the start of the Unix Epoch, while preserving the time.
4564

4565 4566
===toRelativeYearNum===
- Converts a date with time or date to the number of the year, starting from a certain fixed point in the past.
4567

4568 4569
===toRelativeMonthNum===
- Converts a date with time or date to the number of the month, starting from a certain fixed point in the past.
4570

4571 4572
===toRelativeWeekNum===
- Converts a date with time or date to the number of the week, starting from a certain fixed point in the past.
4573

4574 4575
===toRelativeDayNum===
- Converts a date with time or date to the number of the day, starting from a certain fixed point in the past.
4576

4577 4578
===toRelativeHourNum===
- Converts a date with time or date to the number of the hour, starting from a certain fixed point in the past.
4579

4580 4581
===toRelativeMinuteNum===
- Converts a date with time or date to the number of the minute, starting from a certain fixed point in the past.
4582

4583 4584
===toRelativeSecondNum===
- Converts a date with time or date to the number of the second, starting from a certain fixed point in the past.
4585

4586 4587 4588
===now===
Accepts zero arguments and returns the current time at one of the moments of request execution.
This function returns a constant, even if the request took a long time to complete.
4589

4590 4591 4592
===today===
Accepts zero arguments and returns the current date at one of the moments of request execution.
The same as &#39;toDate(now())&#39;.
4593

4594 4595 4596
===yesterday===
Accepts zero arguments and returns yesterday&#39;s date at one of the moments of request execution.
The same as &#39;today() - 1&#39;.
4597

4598 4599 4600
===timeSlot===
- Rounds the time to the half hour.
This function is specific to Yandex.Metrica, since half an hour is the minimum amount of time for breaking a session into two sessions if a counter shows a single user&#39;s consecutive pageviews that differ in time by strictly more than this amount. This means that tuples (the counter number, user ID, and time slot) can be used to search for pageviews that are included in the corresponding session.
4601

4602 4603 4604 4605
===timeSlots(StartTime, Duration)===
- For a time interval starting at &#39;StartTime&#39; and continuing for &#39;Duration&#39; seconds, it returns an array of moments in time, consisting of points from this interval rounded down to the half hour.
For example, %%timeSlots(toDateTime(&#39;2012-01-01 12:20:00&#39;), 600) = [toDateTime(&#39;2012-01-01 12:00:00&#39;), toDateTime(&#39;2012-01-01 12:30:00&#39;)]%%.
This is necessary for searching for pageviews in the corresponding session.
4606 4607


4608
==Functions for working with strings==
4609

4610 4611
===empty===
- Returns 1 for an empty string or 0 for a non-empty string.
4612 4613
The result type is UInt8.
A string is considered non-empty if it contains at least one byte, even if this is a space or a null byte.
4614
The function also works for arrays.
4615

4616 4617
===notEmpty===
- Returns 0 for an empty string or 1 for a non-empty string.
4618
The result type is UInt8.
4619
The function also works for arrays.
4620

4621 4622
===length===
- Returns the length of a string in bytes (not in characters, and not in code points).
4623
The result type is UInt64.
4624
The function also works for arrays.
4625

4626 4627 4628
===lengthUTF8===
- Returns the length of a string in Unicode code points (not in characters), assuming that the string contains a set of bytes that make up UTF-8 encoded text. If this assumption is not met, it returns some result (it doesn&#39;t throw an exception).
The result type is UInt64.
4629

4630 4631
===lower===
- Converts ASCII Latin symbols in a string to lowercase.
4632

4633 4634
===upper===
- Converts ASCII Latin symbols in a string to uppercase.
4635

4636 4637
===lowerUTF8===
- Converts a string to lowercase, assuming the string contains a set of bytes that make up a UTF-8 encoded text. It doesn&#39;t detect the language. So for Turkish the result might not be exactly correct.
4638 4639
If length of UTF-8 sequence is different for upper and lower case of code point, then result for that code point could be incorrect.
If value contains invalid UTF-8, the behavior is unspecified.
4640

4641 4642
===upperUTF8===
- Converts a string to uppercase, assuming the string contains a set of bytes that make up a UTF-8 encoded text. It doesn&#39;t detect the language. So for Turkish the result might not be exactly correct.
4643 4644
If length of UTF-8 sequence is different for upper and lower case of code point, then result for that code point could be incorrect.
If value contains invalid UTF-8, the behavior is unspecified.
4645

4646 4647
===reverse===
- Reverses the string (as a sequence of bytes).
4648

4649 4650
===reverseUTF8===
- Reverses a sequence of Unicode code points, assuming that the string contains a set of bytes representing a UTF-8 text. Otherwise, it does something else (it doesn&#39;t throw an exception).
4651

4652 4653 4654
===concat(s1, s2)===
- Concatenates two strings, without a separator.
If you need to concatenate more than two strings, write &#39;concat&#39; multiple times.
4655

4656 4657
===substring(s, offset, length)===
- Returns a substring starting with the byte from the &#39;offset&#39; index that is &#39;length&#39; bytes long. Character indexing starts from one (as in standard SQL). The &#39;offset&#39; and &#39;length&#39; arguments must be constants.
4658

4659 4660
===substringUTF8(s, offset, length)===
The same as &#39;substring&#39;, but for Unicode code points. Works under the assumption that the string contains a set of bytes representing a UTF-8 encoded text. If this assumption is not met, it returns some result (it doesn&#39;t throw an exception).
4661

4662 4663
===appendTrailingCharIfAbsent(s, c)===
If the %%s%% string is non-empty and does not contain the %%c%% character at the end, it appends the %%c%% character to the end.
4664 4665


4666
==Functions for searching strings==
4667

4668 4669
The search is case-sensitive in all these functions.
The search substring or regular expression must be a constant in all these functions.
4670

4671 4672 4673
===position(haystack, needle)===
- Search for the &#39;needle&#39; substring in the &#39;haystack&#39; string.
Returns the position (in bytes) of the found substring, starting from 1, or returns 0 if the substring was not found.
4674

4675 4676
===positionUTF8(haystack, needle)===
The same as &#39;position&#39;, but the position is returned in Unicode code points. Works under the assumption that the string contains a set of bytes representing a UTF-8 encoded text. If this assumption is not met, it returns some result (it doesn&#39;t throw an exception).
4677

4678 4679
===match(haystack, pattern)===
- Checks whether the string matches the &#39;pattern&#39; regular expression.
4680
The regular expression is re2.
4681
Returns 0 if it doesn&#39;t match, or 1 if it matches.
4682

4683
Note that the backslash symbol (%%\%%) is used for escaping in the regular expression. The same symbol is used for escaping in string literals. So in order to escape the symbol in a regular expression, you must write two backslashes (%%\\%%) in a string literal.
4684

4685
The regular expression works with the string as if it is a set of bytes.
4686
The regular expression can&#39;t contain null bytes.
4687
For patterns to search for substrings in a string, it is better to use LIKE or &#39;position&#39;, since they work much faster.
4688

4689 4690
===extract(haystack, pattern)===
Extracts a fragment of a string using a regular expression. If &#39;haystack&#39; doesn&#39;t match the &#39;pattern&#39; regex, an empty string is returned. If the regex doesn&#39;t contain subpatterns, it takes the fragment that matches the entire regex. Otherwise, it takes the fragment that matches the first subpattern.
4691

4692 4693
===extractAll(haystack, pattern)===
Extracts all the fragments of a string using a regular expression. If &#39;haystack&#39; doesn&#39;t match the &#39;pattern&#39; regex, an empty string is returned. Returns an array of strings consisting of all matches to the regex. In general, the behavior is the same as the &#39;extract&#39; function (it takes the first subpattern, or the entire expression if there isn&#39;t a subpattern).
4694

4695 4696 4697 4698
===like(haystack, pattern), haystack LIKE pattern operator===
- Checks whether a string matches a simple regular expression. The regular expression can contain the metasymbols %%%%% and %%_%%.
%%%%% indicates any quantity of any bytes (including zero characters).
%%_%% indicates any one byte.
4699

4700
Use the backslash (%%\%%) for escaping metasymbols. See the note on escaping in the description of the &#39;match&#39; function.
4701

4702
For regular expressions like%%%needle%%%, the code is more optimal and works as fast as the &#39;position&#39; function. For other regular expressions, the code is the same as for the &#39;match&#39; function.
4703

4704 4705
===notLike(haystack, pattern), haystack NOT LIKE pattern operator===
The same thing as &#39;like&#39;, but negative.
4706 4707


4708
==Functions for searching and replacing in strings==
4709

4710 4711 4712
===replaceOne(haystack, pattern, replacement)===
Replaces the first occurrence, if it exists, of the &#39;pattern&#39; substring in &#39;haystack&#39; with the &#39;replacement&#39; substring.
Hereafter, &#39;pattern&#39; and &#39;replacement&#39; must be constants.
4713

4714 4715
===replaceAll(haystack, pattern, replacement)===
Replaces all occurrences of the &#39;pattern&#39; substring in &#39;haystack&#39; with the &#39;replacement&#39; substring.
4716

4717 4718
===replaceRegexpOne(haystack, pattern, replacement)===
Replacement using the &#39;pattern&#39; regular expression. A re2 regular expression. Replaces only the first occurrence, if it exists.
4719 4720 4721 4722
A pattern can be specified as &#39;replacement&#39;. This pattern can include substitutions \0-\9\.
The substitution \0 includes the entire regular expression.
The substitutions \1-\9 include the subpattern corresponding to the number.
In order to specify the \ symbol in a pattern, you must use a \ symbol to escape it.
4723
Also keep in mind that a string literal requires an extra escape.
4724

4725
Example 1. Converting the date to American format:
4726

4727
%%
4728 4729 4730 4731 4732 4733 4734 4735 4736 4737 4738 4739 4740 4741
SELECT DISTINCT
    EventDate,
    replaceRegexpOne(toString(EventDate), &#39;(\\d{4})-(\\d{2})-(\\d{2})&#39;, &#39;\\2/\\3/\\1&#39;) AS res
FROM test.hits
LIMIT 7
FORMAT TabSeparated

2014-03-17      03/17/2014
2014-03-18      03/18/2014
2014-03-19      03/19/2014
2014-03-20      03/20/2014
2014-03-21      03/21/2014
2014-03-22      03/22/2014
2014-03-23      03/23/2014
4742
%%
4743

4744
Example 2. Copy the string ten times:
4745

4746
%%
4747 4748 4749 4750 4751
SELECT replaceRegexpOne(&#39;Hello, World!&#39;, &#39;.*&#39;, &#39;\\0\\0\\0\\0\\0\\0\\0\\0\\0\\0&#39;) AS res

┌─res────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────┐
│ Hello, World!Hello, World!Hello, World!Hello, World!Hello, World!Hello, World!Hello, World!Hello, World!Hello, World!Hello, World! │
└────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────┘
4752
%%
4753

4754 4755
===replaceRegexpAll(haystack, pattern, replacement)===
This does the same thing, but replaces all the occurrences. Example:
4756

4757
%%
4758 4759 4760 4761 4762
SELECT replaceRegexpAll(&#39;Hello, World!&#39;, &#39;.&#39;, &#39;\\0\\0&#39;) AS res

┌─res────────────────────────┐
│ HHeelllloo,,  WWoorrlldd!! │
└────────────────────────────┘
4763
%%
4764

4765
As an exception, if a regular expression worked on an empty substring, the replacement is not made more than once. Example:
4766

4767
%%
4768 4769 4770 4771 4772
SELECT replaceRegexpAll(&#39;Hello, World!&#39;, &#39;^&#39;, &#39;here: &#39;) AS res

┌─res─────────────────┐
│ here: Hello, World! │
└─────────────────────┘
4773
%%
4774

4775
==Functions for working with arrays==
4776

4777 4778
===empty===
- Returns 1 for an empty array, or 0 for a non-empty array.
4779
The result type is UInt8.
4780
The function also works for strings.
4781

4782 4783
===notEmpty===
- Returns 0 for an empty array, or 1 for a non-empty array.
4784
The result type is UInt8.
4785
The function also works for strings.
4786

4787 4788
===length===
- Returns the number of items in the array.
4789
The result type is UInt64.
4790
The function also works for strings.
4791

4792 4793 4794 4795 4796 4797
===emptyArrayUInt8, emptyArrayUInt16, emptyArrayUInt32, emptyArrayUInt64===
===emptyArrayInt8, emptyArrayInt16, emptyArrayInt32, emptyArrayInt64===
===emptyArrayFloat32, emptyArrayFloat64===
===emptyArrayDate, emptyArrayDateTime===
===emptyArrayString===
Accepts zero arguments and returns an empty array of the appropriate type.
4798

4799 4800 4801
===range(N)===
- Returns an array of numbers from 0 to N-1.
Just in case, an exception is thrown if arrays with a total length of more than 100,000,000 elements are created in a data block.
4802

4803 4804
===array(x1, ...), [x1, ...] operator===
- Creates an array from the function arguments.
4805
The arguments must be constants and have types that have the smallest common type. At least one argument must be passed, because otherwise it isn&#39;t clear which type of array to create. That is, you can&#39;t use this function to create an empty array (to do that, use the &#39;emptyArray*&#39; function described above).
4806
Returns an &#39;Array(T)&#39; type result, where &#39;T&#39; is the smallest common type out of the passed arguments.
4807

4808 4809
===arrayElement(arr, n), arr[n] operator===
- Get the element with the index &#39;n&#39; from the array &#39;arr&#39;.
4810 4811
&#39;n&#39; should be any integer type.
Indexes in an array begin from one.
4812
Negative indexes are supported - in this case, it selects the corresponding element numbered from the end. For example, &#39;arr[-1]&#39; is the last item in the array.
4813

4814
If the index goes beyond the array bounds:
4815
- if both arguments are constants, an exception is thrown.
4816
- otherwise, a default value is returned (0 for numbers, an empty string for strings, etc.).
4817

4818 4819
===has(arr, elem)===
- Checking whether the &#39;arr&#39; array has the &#39;elem&#39; element.
4820
Returns 0 if the the element is not in the array, or 1 if it is.
4821
&#39;elem&#39; must be a constant.
4822

4823 4824
===indexOf(arr, x)===
- Returns the index of the &#39;x&#39; element (starting from 1) if it is in the array, or 0 if it is not.
4825

4826 4827
===countEqual(arr, x)===
- Returns the number of elements in the array equal to &#39;x&#39;. Equivalent to <span class="inline-example">arrayCount(elem -> elem = x, arr)</span>.
4828

4829 4830
===arrayEnumerate(arr)===
- Returns the array %%[1, 2, 3, ..., length(arr)]%%
4831

4832
This function is normally used together with ARRAY JOIN. It allows counting something just once for each array after applying ARRAY JOIN. Example:
4833

4834
%%
4835 4836 4837 4838 4839 4840 4841 4842 4843 4844 4845 4846 4847
SELECT
    count() AS Reaches,
    countIf(num = 1) AS Hits
FROM test.hits
ARRAY JOIN
    GoalsReached,
    arrayEnumerate(GoalsReached) AS num
WHERE CounterID = 160656
LIMIT 10

┌─Reaches─┬──Hits─┐
│   95606 │ 31406 │
└─────────┴───────┘
4848
%%
4849

4850
In this example, Reaches is the number of conversions (the strings received after applying ARRAY JOIN), and Hits is the number of pageviews (strings before ARRAY JOIN). In this particular case, you can get the same result in an easier way:
4851

4852
%%
4853 4854 4855 4856 4857 4858 4859 4860 4861
SELECT
    sum(length(GoalsReached)) AS Reaches,
    count() AS Hits
FROM test.hits
WHERE (CounterID = 160656) AND notEmpty(GoalsReached)

┌─Reaches─┬──Hits─┐
│   95606 │ 31406 │
└─────────┴───────┘
4862
%%
4863

4864
This function can also be used in higher-order functions. For example, you can use it to get array indexes for elements that match a condition.
4865

4866 4867 4868
===arrayEnumerateUniq(arr, ...)===
- Returns an array the same size as the source array, indicating for each element what its position is among elements with the same value.
For example: %%arrayEnumerateUniq([10, 20, 10, 30]) = [1,  1,  2,  1]%%.
4869

4870
This function is useful when using ARRAY JOIN and aggregation of array elements. Example:
4871

4872
%%
4873 4874 4875 4876 4877 4878 4879 4880 4881 4882 4883 4884 4885 4886 4887 4888 4889 4890 4891 4892 4893 4894 4895 4896 4897
SELECT
    Goals.ID AS GoalID,
    sum(Sign) AS Reaches,
    sumIf(Sign, num = 1) AS Visits
FROM test.visits
ARRAY JOIN
    Goals,
    arrayEnumerateUniq(Goals.ID) AS num
WHERE CounterID = 160656
GROUP BY GoalID
ORDER BY Reaches DESC
LIMIT 10

┌──GoalID─┬─Reaches─┬─Visits─┐
│   53225 │    3214 │   1097 │
│ 2825062 │    3188 │   1097 │
│   56600 │    2803 │    488 │
│ 1989037 │    2401 │    365 │
│ 2830064 │    2396 │    910 │
│ 1113562 │    2372 │    373 │
│ 3270895 │    2262 │    812 │
│ 1084657 │    2262 │    345 │
│   56599 │    2260 │    799 │
│ 3271094 │    2256 │    812 │
└─────────┴─────────┴────────┘
4898
%%
4899

4900
In this example, each goal ID has a calculation of the number of conversions (each element in the Goals nested data structure is a goal that was reached, which we refer to as a conversion) and the number of sessions. Without ARRAY JOIN, we would have counted the number of sessions as %%sum(Sign)%%. But in this particular case, the rows were multiplied by the nested Goals structure, so in order to count each session one time after this, we apply a condition to the value of the %%arrayEnumerateUniq(Goals.ID)%% function.
4901

4902
The arrayEnumerateUniq function can take multiple arrays of the same size as arguments. In this case, uniqueness is considered for tuples of elements in the same positions in all the arrays.
4903

4904
%%
4905 4906 4907 4908 4909
SELECT arrayEnumerateUniq([1, 1, 1, 2, 2, 2], [1, 1, 2, 1, 1, 2]) AS res

┌─res───────────┐
│ [1,2,1,1,2,1] │
└───────────────┘
4910
%%
4911

4912
This is necessary when using ARRAY JOIN with a nested data structure and further aggregation across multiple elements in this structure.
4913

4914 4915
===arrayJoin(arr)===
- A special function. See the section &quot;arrayJoin function&quot;.
4916 4917


4918
==Higher-order functions==
4919

4920
<h3><span class="inline-example">-></span> operator, lambda(params, expr) function</h3>
4921
Allows describing a lambda function for passing to a higher-order function. The left side of the arrow has a formal parameter - any ID, or multiple formal parameters - any IDs in a tuple. The right side of the arrow has an expression that can use these formal parameters, as well as any table columns.
4922

4923
Examples: <span class="inline-example">x -> 2 * x</span>, <span class="inline-example">str -> str != Referer</span>.
4924

4925
Higher-order functions can only accept lambda functions as their functional argument.
4926

4927
A lambda function that accepts multiple arguments can be passed to a higher-order function. In this case, the higher-order function is passed several arrays of identical length that these arguments will correspond to.
4928

4929
For all functions other than &#39;arrayMap&#39; and &#39;arrayFilter&#39;, the first argument (the lambda function) can be omitted. In this case, identical mapping is assumed.
4930

4931 4932
===arrayMap(func, arr1, ...)===
Returns an array obtained from the original application of the &#39;func&#39; function to each element in the &#39;arr&#39; array.
4933

4934 4935
===arrayFilter(func, arr1, ...)===
Returns an array containing only the elements in &#39;arr1&#39; for which &#39;func&#39; returns something other than 0.
4936

4937
Examples:
4938

4939
%%
4940 4941 4942 4943 4944 4945 4946 4947 4948 4949 4950 4951 4952 4953 4954 4955
SELECT arrayFilter(x -> x LIKE &#39;%World%&#39;, [&#39;Hello&#39;, &#39;abc World&#39;]) AS res

┌─res───────────┐
│ [&#39;abc World&#39;] │
└───────────────┘

SELECT
    arrayFilter(
        (i, x) -> x LIKE &#39;%World%&#39;,
        arrayEnumerate(arr),
        [&#39;Hello&#39;, &#39;abc World&#39;] AS arr)
    AS res

┌─res─┐
│ [2] │
└─────┘
4956
%%
4957

4958 4959
===arrayCount([func,] arr1, ...)===
Returns the number of elements in &#39;arr&#39; for which &#39;func&#39; returns something other than 0. If &#39;func&#39; is not specified, it returns the number of non-zero items in the array.
4960

4961 4962
===arrayExists([func,] arr1, ...)===
Returns 1 if there is at least one element in &#39;arr&#39; for which &#39;func&#39; returns something other than 0. Otherwise, it returns 0.
4963

4964 4965
===arrayAll([func,] arr1, ...)===
Returns 1 if &#39;func&#39; returns something other than 0 for all the elements in &#39;arr&#39;. Otherwise, it returns 0.
4966

4967 4968
===arraySum([func,] arr1, ...)===
Returns the sum of the &#39;func&#39; values. If the function is omitted, it just returns the sum of the array elements.
4969

4970 4971
===arrayFirst(func, arr1, ...)===
Returns the first element in the &#39;arr1&#39; array for which &#39;func&#39; returns something other than 0.
4972

4973 4974
===arrayFirstIndex(func, arr1, ...)===
Returns the index of the first element in the &#39;arr1&#39; array for which &#39;func&#39; returns something other than 0.
4975 4976


4977
==Functions for splitting and merging strings and arrays==
4978

4979 4980
===splitByChar(separator, s)===
- Splits a string into substrings, using &#39;separator&#39; as the separator.
4981
&#39;separator&#39; must be a string constant consisting of exactly one character.
4982
Returns an array of selected substrings. Empty substrings may be selected if the separator occurs at the beginning or end of the string, or if there are multiple consecutive separators.
4983

4984 4985
===splitByString(separator, s)===
- The same as above, but it uses a string of multiple characters as the separator. The string must be non-empty.
4986

4987 4988 4989
===alphaTokens(s)===
- Selects substrings of consecutive bytes from the range a-z and A-Z.
Returns an array of selected substrings.
4990 4991


4992
==Functions for working with URLs==
4993

4994
All these functions don&#39;t follow the RFC. They are maximally simplified for improved performance.
4995

4996
===Functions that extract part of a URL===
4997

4998
If there isn&#39;t anything similar in a URL, an empty string is returned.
4999 5000

<h4>protocol</h4>
5001
- Selects the protocol. Examples: http, ftp, mailto, magnet...
5002 5003

<h4>domain</h4>
5004
- Selects the domain.
5005 5006

<h4>domainWithoutWWW</h4>
5007
- Selects the domain and removes no more than one &#39;www.&#39; from the beginning of it, if present.
5008 5009

<h4>topLevelDomain</h4>
5010
- Selects the top-level domain. Example: .ru.
5011 5012

<h4>firstSignificantSubdomain</h4>
5013
- Selects the &quot;first significant subdomain&quot;. This is a non-standard concept specific to Yandex.Metrica.
5014 5015
The first significant subdomain is a second-level domain if it is &#39;com&#39;, &#39;net&#39;, &#39;org&#39;, or &#39;co&#39;. Otherwise, it is a third-level domain.
For example, firstSignificantSubdomain(&#39;https://news.yandex.ru/&#39;) = &#39;yandex&#39;, firstSignificantSubdomain(&#39;https://news.yandex.com.tr/&#39;) = &#39;yandex&#39;.
5016
The list of &quot;insignificant&quot; second-level domains and other implementation details may change in the future.
5017 5018

<h4>cutToFirstSignificantSubdomain</h4>
5019 5020
- Selects the part of the domain that includes top-level subdomains up to the &quot;first significant subdomain&quot; (see the explanation above).
For example, cutToFirstSignificantSubdomain(&#39;https://news.yandex.com.tr/&#39;) = &#39;yandex.com.tr&#39;.
5021 5022

<h4>path</h4>
5023 5024
- Selects the path. Example: /top/news.html
The path does not include the query-string.
5025 5026

<h4>pathFull</h4>
5027
- The same as above, but including query-string and fragment. Example: /top/news.html?page=2#comments
5028 5029

<h4>queryString</h4>
5030 5031
- Selects the query-string. Example: page=1&amp;lr=213.
query-string does not include the first question mark, or # and everything that comes after #.
5032 5033

<h4>fragment</h4>
5034 5035
- Selects the fragment identifier.
fragment does not include the first number sign (#).
5036 5037

<h4>queryStringAndFragment</h4>
5038
- Selects the query-string and fragment identifier. Example: page=1#29390.
5039 5040

<h4>extractURLParameter(URL, name)</h4>
5041
- Selects the value of the &#39;name&#39; parameter in the URL, if present. Otherwise, selects an empty string. If there are many parameters with this name, it returns the first occurrence. This function works under the assumption that the parameter name is encoded in the URL in exactly the same way as in the argument passed.
5042 5043

<h4>extractURLParameters(URL)</h4>
5044
- Gets an array of name=value strings corresponding to the URL parameters. The values are not decoded in any way.
5045 5046

<h4>extractURLParameterNames(URL)</h4>
5047
- Gets an array of name=value strings corresponding to the names of URL parameters. The values are not decoded in any way.
5048 5049

<h4>URLHierarchy(URL)</h4>
5050
- Gets an array containing the URL trimmed to the %%/%%, %%?%% characters in the path and query-string.  Consecutive separator characters are counted as one. The cut is made in the position after all the consecutive separator characters. Example:
5051 5052

<h4>URLPathHierarchy(URL)</h4>
5053
- The same thing, but without the protocol and host in the result. The / element (root) is not included. Example:
5054

5055
This function is used for implementing tree-view reports by URL in Yandex.Metrica.
5056

5057
%%
5058 5059 5060 5061 5062
URLPathHierarchy(&#39;https://example.com/browse/CONV-6788&#39;) =
[
    &#39;/browse/&#39;,
    &#39;/browse/CONV-6788&#39;
]
5063
%%
5064

5065
===Functions that remove part of a URL.===
5066

5067
If the URL doesn&#39;t have anything similar, the URL remains unchanged.
5068 5069

<h4>cutWWW</h4>
5070
- Removes no more than one &#39;www.&#39; from the beginning of the URL&#39;s domain, if present.
5071 5072

<h4>cutQueryString</h4>
5073
- Removes the query-string. The question mark is also removed.
5074 5075

<h4>cutFragment</h4>
5076
- Removes the fragment identifier. The number sign is also removed.
5077 5078

<h4>cutQueryStringAndFragment</h4>
5079
- Removes the query-string and fragment identifier. The question mark and number sign are also removed.
5080 5081

<h4>cutURLParameter(URL, name)</h4>
5082
- Removes the URL parameter named &#39;name&#39;, if present. This function works under the assumption that the parameter name is encoded in the URL exactly the same way as in the passed argument.
5083 5084


5085
==Functions for working with IP addresses==
5086

5087 5088
===IPv4NumToString(num)===
Takes a UInt32 number. Interprets it as an IPv4 address in big endian. Returns a string containing the corresponding IPv4 address in the format A.B.C.d (dot-separated numbers in decimal form).
5089

5090 5091
===IPv4StringToNum(s)===
The reverse function of IPv4NumToString. If the IPv4 address has an invalid format, it returns 0.
5092

5093 5094
===IPv4NumToStringClassC(num)===
Similar to IPv4NumToString, but using %%xxx%% instead of the last octet. Example:
5095

5096
%%
5097 5098 5099 5100 5101 5102 5103 5104 5105 5106 5107 5108 5109 5110 5111 5112 5113 5114 5115 5116
SELECT
    IPv4NumToStringClassC(ClientIP) AS k,
    count() AS c
FROM test.hits
GROUP BY k
ORDER BY c DESC
LIMIT 10

┌─k──────────────┬─────c─┐
│ 83.149.9.xxx   │ 26238 │
│ 217.118.81.xxx │ 26074 │
│ 213.87.129.xxx │ 25481 │
│ 83.149.8.xxx   │ 24984 │
│ 217.118.83.xxx │ 22797 │
│ 78.25.120.xxx  │ 22354 │
│ 213.87.131.xxx │ 21285 │
│ 78.25.121.xxx  │ 20887 │
│ 188.162.65.xxx │ 19694 │
│ 83.149.48.xxx  │ 17406 │
└────────────────┴───────┘
5117
%%
5118

5119
Since using &#39;xxx&#39; is highly unusual, this may be changed in the future. We recommend that you don&#39;t rely on the exact format of this fragment.
5120

5121 5122 5123
===IPv6NumToString(x)===
Accepts a FixedString(16) value containing the IPv6 address in binary format. Returns a string containing this address in text format.
IPv6-mapped IPv4 addresses are output in the format %%::ffff:111.222.33.44%%. Examples:
5124

5125
%%
5126 5127 5128 5129 5130
SELECT IPv6NumToString(toFixedString(unhex(&#39;2A0206B8000000000000000000000011&#39;), 16)) AS addr

┌─addr─────────┐
│ 2a02:6b8::11 │
└──────────────┘
5131
%%
5132

5133
%%
5134 5135 5136 5137 5138 5139 5140 5141 5142 5143 5144 5145 5146 5147 5148 5149 5150 5151 5152 5153 5154
SELECT
    IPv6NumToString(ClientIP6 AS k),
    count() AS c
FROM hits_all
WHERE EventDate = today() AND substring(ClientIP6, 1, 12) != unhex(&#39;00000000000000000000FFFF&#39;)
GROUP BY k
ORDER BY c DESC
LIMIT 10

┌─IPv6NumToString(ClientIP6)──────────────┬─────c─┐
│ 2a02:2168:aaa:bbbb::2                   │ 24695 │
│ 2a02:2698:abcd:abcd:abcd:abcd:8888:5555 │ 22408 │
│ 2a02:6b8:0:fff::ff                      │ 16389 │
│ 2a01:4f8:111:6666::2                    │ 16016 │
│ 2a02:2168:888:222::1                    │ 15896 │
│ 2a01:7e00::ffff:ffff:ffff:222           │ 14774 │
│ 2a02:8109:eee:ee:eeee:eeee:eeee:eeee    │ 14443 │
│ 2a02:810b:8888:888:8888:8888:8888:8888  │ 14345 │
│ 2a02:6b8:0:444:4444:4444:4444:4444      │ 14279 │
│ 2a01:7e00::ffff:ffff:ffff:ffff          │ 13880 │
└─────────────────────────────────────────┴───────┘
5155
%%
5156

5157
%%
5158 5159 5160 5161 5162 5163 5164 5165 5166 5167 5168 5169 5170 5171 5172 5173 5174 5175 5176 5177 5178
SELECT
    IPv6NumToString(ClientIP6 AS k),
    count() AS c
FROM hits_all
WHERE EventDate = today()
GROUP BY k
ORDER BY c DESC
LIMIT 10

┌─IPv6NumToString(ClientIP6)─┬──────c─┐
│ ::ffff:94.26.111.111       │ 747440 │
│ ::ffff:37.143.222.4        │ 529483 │
│ ::ffff:5.166.111.99        │ 317707 │
│ ::ffff:46.38.11.77         │ 263086 │
│ ::ffff:79.105.111.111      │ 186611 │
│ ::ffff:93.92.111.88        │ 176773 │
│ ::ffff:84.53.111.33        │ 158709 │
│ ::ffff:217.118.11.22       │ 154004 │
│ ::ffff:217.118.11.33       │ 148449 │
│ ::ffff:217.118.11.44       │ 148243 │
└────────────────────────────┴────────┘
5179
%%
5180

5181 5182 5183
===IPv6StringToNum(s)===
The reverse function of IPv6NumToString. If the IPv6 address has an invalid format, it returns a string of null bytes.
HEX can be uppercase or lowercase.
5184 5185


5186
==Functions for generating pseudo-random numbers==
5187

5188
Non-cryptographic generators of pseudo-random numbers are used.
5189

5190
All the functions accept zero arguments or one argument.
5191
If an argument is passed, it can be any type, and its value is not used for anything.
5192
The only purpose of this argument is to prevent common subexpression elimination, so that two different instances of the same function return different columns with different random numbers.
5193

5194 5195 5196
===rand===
- Returns a pseudo-random UInt32 number, evenly distributed among all UInt32-type numbers.
Uses a linear congruential generator.
5197

5198 5199 5200
===rand64===
- Returns a pseudo-random UInt64 number, evenly distributed among all UInt64-type numbers.
Uses a linear congruential generator.
5201 5202


5203
==Hash functions==
5204

5205
Hash functions can be used for deterministic pseudo-random shuffling of elements.
5206

5207 5208
===halfMD5===
- Calculates the MD5 from a string. Then it takes the first 8 bytes of the hash and interprets them as UInt64 in big endian.
5209 5210
Accepts a String-type argument. Returns UInt64.
This function works fairly slowly (5 million short strings per second per processor core).
5211
If you don&#39;t need MD5 in particular, use the &#39;sipHash64&#39; function instead.
5212

5213 5214
===MD5===
- Calculates the MD5 from a string and returns the resulting set of bytes as FixedString(16).
5215
If you don&#39;t need MD5 in particular, but you need a decent cryptographic 128-bit hash, use the &#39;sipHash128&#39; function instead.
5216
If you need the same result as gives 'md5sum' utility, write %%lower(hex(MD5(s)))%%.
5217

5218 5219
===sipHash64===
- Calculates SipHash from a string.
5220
Accepts a String-type argument. Returns UInt64.
5221
SipHash is a cryptographic hash function. It works at least three times faster than MD5. For more information, see <a href="https://131002.net/siphash/">https://131002.net/siphash/</a>
5222

5223 5224
===sipHash128===
- Calculates SipHash from a string.
5225
Accepts a String-type argument. Returns FixedString(16).
5226
Differs from sipHash64 in that the final xor-folding state is only done up to 128 bytes.
5227

5228 5229
===cityHash64===
- Calculates CityHash64 from a string or a similar hash function for any number of any type of arguments.
5230 5231 5232
For String-type arguments, CityHash is used. This is a fast non-cryptographic hash function for strings with decent quality.
For other types of arguments, a decent implementation-specific fast non-cryptographic hash function is used.
If multiple arguments are passed, the function is calculated using the same rules and chain combinations using the CityHash combinator.
5233
For example, you can compute the checksum of an entire table with accuracy up to the row order: %%SELECT sum(cityHash64(*)) FROM table%%.
5234

5235 5236 5237
===intHash32===
- Calculates a 32-bit hash code from any type of integer.
This is a relatively fast non-cryptographic hash function of average quality for numbers.
5238

5239 5240 5241
===intHash64===
- Calculates a 64-bit hash code from any type of integer.
It works faster than intHash32. Average quality.
5242

5243 5244 5245 5246
===SHA1===
===SHA224===
===SHA256===
- Calculates SHA-1, SHA-224, or SHA-256 from a string and returns the resulting set of bytes as FixedString(20), FixedString(28), or FixedString(32).
5247 5248
The function works fairly slowly (SHA-1 processes about 5 million short strings per second per processor core, while SHA-224 and SHA-256 process about 2.2 million).
We recommend using this function only in cases when you need a specific hash function and you can&#39;t select it.
5249
Even in these cases, we recommend applying the function offline and pre-calculating values when inserting them into the table, instead of applying it in SELECTS.
5250

5251 5252
===URLHash(url[, N])===
A fast, decent-quality non-cryptographic hash function for a string obtained from a URL using some type of normalization.
5253 5254
URLHash(s) - Calculates a hash from a string without one of the trailing symbols /,? or # at the end, if present.
URL Hash(s, N) - Calculates a hash from a string up to the N level in the URL hierarchy, without one of the trailing symbols /,? or # at the end, if present.
5255
Levels are the same as in URLHierarchy. This function is specific to Yandex.Metrica.
5256

5257
==Encoding functions==
5258

5259 5260
===hex===
Accepts a string, number, date, or date with time. Returns a string containing the argument&#39;s hexadecimal representation. Uses uppercase letters A-F. Doesn&#39;t use %%0x%% prefixes or %%h%% suffixes. For strings, all bytes are simply encoded as two hexadecimal numbers. Numbers are converted to big endian (&quot;human readable&quot;) format. For numbers, older zeros are trimmed, but only by entire bytes. For example, %%hex(1) = &#39;01&#39;%%. Dates are encoded as the number of days since the beginning of the Unix Epoch. Dates with times are encoded as the number of seconds since the beginning of the Unix Epoch.
5261

5262 5263 5264
===unhex(str)===
Accepts a string containing any number of hexadecimal digits, and returns a string containing the corresponding bytes. Supports both uppercase and lowercase letters A-F. The number of hexadecimal digits doesn&#39;t have to be even. If it is odd, the last digit is interpreted as the younger half of the 00-0F byte. If the argument string contains anything other than hexadecimal digits, some implementation-defined result is returned (an exception isn&#39;t thrown).
If you want to convert the result to a number, you can use the functions &#39;reverse&#39; and &#39;reinterpretAs<i>Type</i>&#39;.
5265

5266 5267
===bitmaskToList(num)===
Accepts an integer. Returns a string containing the list of powers of two that total the source number when summed. They are comma-separated without spaces in text format, in ascending order.
5268

5269 5270
===bitmaskToArray(num)===
Accepts an integer. Returns an array of UInt64 numbers containing the list of powers of two that total the source number when summed. Numbers in the array are in ascending order.
5271 5272


5273
==Rounding functions==
5274

5275 5276 5277
===floor(x[, N])===
Returns a rounder number that is less than or equal to &#39;x&#39;.
A round number is a multiple of <span class="inline-example">1 / 10<sup>N</sup></span>, or the nearest number of the appropriate data type if <span class="inline-example">1 / 10<sup>N</sup></span> isn&#39;t exact.
5278 5279
&#39;N&#39; is an integer constant, optional parameter. By default it is zero, which means to round to an integer.
&#39;N&#39; may be negative.
5280
Examples: %%floor(123.45, 1) = 123.4%%, %%floor(123.45, -1) = 120%%.
5281 5282
&#39;x&#39; is any numeric type. The result is a number of the same type.
For integer arguments, it makes sense to round with a negative &#39;N&#39; value (for non-negative &#39;N&#39;, the function doesn&#39;t do anything).
5283
If rounding causes overflow (for example, %%floor(-128, -1)%%), an implementation-specific result is returned.
5284

5285 5286
===ceil(x[, N])===
Returns the smallest round number that is greater than or equal to &#39;x&#39;. In every other way, it is the same as the &#39;floor&#39; function (see above).
5287

5288 5289
===round(x[, N])===
Returns the round number nearest to &#39;num&#39;, which may be less than, greater than, or equal to &#39;x&#39;.
5290 5291
If &#39;x&#39; is exactly in the middle between the nearest round numbers, one of them is returned (implementation-specific).
The number &#39;-0.&#39; may or may not be considered round (implementation-specific).
5292
In every other way, this function is the same as &#39;floor&#39; and &#39;ceil&#39; described above.
5293

5294 5295
===roundToExp2(num)===
Accepts a number. If the number is less than one, it returns 0. Otherwise, it rounds the number down to the nearest (whole non-negative) degree of two.
5296

5297 5298
===roundDuration(num)===
Accepts a number. If the number is less than one, it returns 0. Otherwise, it rounds the number down to numbers from the set: 1, 10, 30, 60, 120, 180, 240, 300, 600, 1200, 1800, 3600, 7200, 18000, 36000. This function is specific to Yandex.Metrica and used for implementing the report on session length.
5299

5300 5301
===roundAge(num)===
Accepts a number. If the number is less than 18, it returns 0. Otherwise, it rounds the number down to numbers from the set: 18, 25, 35, 45. This function is specific to Yandex.Metrica and used for implementing the report on user age.
5302 5303 5304



5305
==Conditional functions==
5306

5307
===if(cond, then, else), cond ? then : else operator===
5308

5309 5310
Returns &#39;then&#39; if &#39;cond != 0&#39;, or &#39;else&#39; if &#39;cond = 0&#39;.
&#39;cond&#39; must be UInt 8, and &#39;then&#39; and &#39;else&#39; must be a type that has the smallest common type.
5311 5312


5313
==Mathematical functions==
5314

5315
All the functions return a Float64 number. The accuracy of the result is close to the maximum precision possible, but the result might not coincide with the machine representable number nearest to the corresponding real number.
5316

5317 5318
===e()===
Accepts zero arguments and returns a Float64 number close to the <i>e</i> number.
5319

5320 5321
===pi()===
Accepts zero arguments and returns a Float64 number close to <i>π</i>.
5322

5323 5324
===exp(x)===
Accepts a numeric argument and returns a Float64 number close to the exponent of the argument.
5325

5326 5327
===log(x)===
Accepts a numeric argument and returns a Float64 number close to the natural logarithm of the argument.
5328

5329 5330
===exp2(x)===
Accepts a numeric argument and returns a Float64 number close to 2<sup>x</sup>.
5331

5332 5333
===log2(x)===
Accepts a numeric argument and returns a Float64 number close to the binary logarithm of the argument.
5334

5335 5336
===exp10(x)===
Accepts a numeric argument and returns a Float64 number close to 10<sup>x</sup>.
5337

5338 5339
===log10(x)===
Accepts a numeric argument and returns a Float64 number close to the decimal logarithm of the argument.
5340

5341 5342
===sqrt(x)===
Accepts a numeric argument and returns a Float64 number close to the square root of the argument.
5343

5344 5345
===cbrt(x)===
Accepts a numeric argument and returns a Float64 number close to the cubic root of the argument.
5346

5347 5348 5349
===erf(x)===
<img src="https://upload.wikimedia.org/math/3/4/4/3443265ce8cb884d9c894401ab15fa71.png"/>
If &#39;x&#39; is non-negative, then %%erf(x / σ√2)%% is the probability that a random variable having a normal distribution with standard deviation &#39;σ&#39; takes the value that is separated from the expected value by more than &#39;x&#39;.
5350

5351
Example (three sigma rule):
5352

5353
%%
5354 5355 5356 5357 5358
SELECT erf(3 / sqrt(2))

┌─erf(divide(3, sqrt(2)))─┐
│      0.9973002039367398 │
└─────────────────────────┘
5359
%%
5360

5361 5362
===erfc(x)===
Accepts a numeric argument and returns a Float64 number close to 1 - erf(x), but without loss of precision for large &#39;x&#39; values.
5363

5364 5365
===lgamma(x)===
The logarithm of the gamma function.
5366

5367 5368
===tgamma(x)===
Gamma function.
5369

5370 5371
===sin(x)===
The sine.
5372

5373 5374
===cos(x)===
The cosine.
5375

5376 5377
===tan(x)===
The tangent.
5378

5379 5380
===asin(x)===
The arc sine.
5381

5382 5383
===acos(x)===
The arc cosine.
5384

5385 5386
===atan(x)===
The arc tangent.
5387

5388 5389
===pow(x, y)===
x<sup>y</sup>.
5390

5391
==Functions for working with Yandex.Metrica dictionaries==
5392

5393
In order for the functions below to work, the server config must specify the paths and addresses for getting all the Yandex.Metrica dictionaries. The dictionaries are loaded at the first call of any of these functions. If the reference lists can&#39;t be loaded, an exception is thrown.
5394

5395
For information about creating reference lists, see the section &quot;Dictionaries&quot;.
5396

5397
===Multiple geobases===
5398

5399
ClickHouse supports working with multiple alternative geobases (regional hierarchies) simultaneously, in order to support various perspectives on which countries certain regions belong to.
5400

5401 5402
The &#39;clickhouse-server&#39; config specifies the file with the regional hierarchy:
<span class="inline-example">&lt;path_to_regions_hierarchy_file>/opt/geo/regions_hierarchy.txt&lt;/path_to_regions_hierarchy_file></span>
5403

5404 5405
Besides this file, it also searches for files nearby that have the _ symbol and any suffix appended to the name (before the file extension).
For example, it will also find the file %%/opt/geo/regions_hierarchy_ua.txt%%, if present.
5406

5407
%%ua%% is called the dictionary key. For a dictionary without a suffix, the key is an empty string.
5408

5409
All the dictionaries are re-loaded in runtime (once every certain number of seconds, as defined in the builtin_dictionaries_reload_interval config parameter, or once an hour by default). However, the list of available dictionaries is defined one time, when the server starts.
5410

5411 5412 5413
All functions for working with regions have an optional argument at the end - the dictionary key. It is indicated as the <i>geobase</i>.
Example:
%%
5414 5415 5416
regionToCountry(RegionID) - Uses the default dictionary: /opt/geo/regions_hierarchy.txt
regionToCountry(RegionID, &#39;&#39;) - Uses the default dictionary: /opt/geo/regions_hierarchy.txt
regionToCountry(RegionID, &#39;ua&#39;) - Uses the dictionary for the &#39;ua&#39; key: /opt/geo/regions_hierarchy_ua.txt
5417
%%
5418

5419
===regionToCity(id[, geobase])===
5420

5421
Accepts a UInt32 number - the region ID from the Yandex geobase. If this region is a city or part of a city, it returns the region ID for the appropriate city. Otherwise, returns 0.
5422

5423
===regionToArea(id[, geobase])===
5424

5425
Converts a region to an area (type 5 in the geobase). In every other way, this function is the same as &#39;regionToCity&#39;.
5426

5427
%%
5428 5429 5430 5431 5432 5433 5434 5435 5436 5437 5438 5439 5440 5441 5442 5443 5444 5445 5446 5447 5448
SELECT DISTINCT regionToName(regionToArea(toUInt32(number), 'ua'), 'en')
FROM system.numbers
LIMIT 15

┌─regionToName(regionToArea(toUInt32(number), \'ua\'), \'en\')─┐
│                                                              │
│ Moscow and Moscow region                                     │
│ Saint-Petersburg and Leningradskaya oblast                   │
│ Belgorod District                                            │
│ Ivanovo district                                             │
│ Kaluga District                                              │
│ Kostroma District                                            │
│ Kursk District                                               │
│ Lipetsk District                                             │
│ Orel District                                                │
│ Ryazhan District                                             │
│ Smolensk District                                            │
│ Tambov District                                              │
│ Tver District                                                │
│ Tula District                                                │
└──────────────────────────────────────────────────────────────┘
5449
%%
5450

5451
===regionToDistrict(id[, geobase])===
5452

5453
Converts a region to a federal district (type 4 in the geobase). In every other way, this function is the same as &#39;regionToCity&#39;.
5454

5455
%%
5456 5457 5458 5459 5460 5461 5462 5463 5464 5465 5466 5467 5468 5469 5470 5471 5472 5473 5474 5475 5476
SELECT DISTINCT regionToName(regionToDistrict(toUInt32(number), 'ua'), 'en')
FROM system.numbers
LIMIT 15

┌─regionToName(regionToDistrict(toUInt32(number), \'ua\'), \'en\')─┐
│                                                                  │
│ Central                                                          │
│ Northwest                                                        │
│ South                                                            │
│ North Kavkaz                                                     │
│ Volga Region                                                     │
│ Ural                                                             │
│ Siberian                                                         │
│ Far East                                                         │
│ Scotland                                                         │
│ Faroe Islands                                                    │
│ Flemish Region                                                   │
│ Brussels-Capital Region                                          │
│ Wallonia                                                         │
│ Federation of Bosnia and Herzegovina                             │
└──────────────────────────────────────────────────────────────────┘
5477
%%
5478

5479
===regionToCountry(id[, geobase])===
5480

5481 5482
Converts a region to a country. In every other way, this function is the same as &#39;regionToCity&#39;.
Example: %%regionToCountry(toUInt32(213)) = 225%% converts Moscow (213) to Russia (225).
5483

5484
===regionToContinent(id[, geobase])===
5485

5486 5487
Converts a region to a continent. In every other way, this function is the same as &#39;regionToCity&#39;.
Example: %%regionToContinent(toUInt32(213)) = 10001%% converts Moscow (213) to Eurasia (10001).
5488

5489
===regionToPopulation(id[, geobase])===
5490

5491
Gets the population for a region.
5492 5493
The population can be recorded in files with the geobase. See the section &quot;External dictionaries&quot;.
If the population is not recorded for the region, it returns 0.
5494
In the Yandex geobase, the population might be recorded for child regions, but not for parent regions.
5495

5496
===regionIn(lhs, rhs[, geobase])===
5497

5498 5499
Checks whether a &#39;lhs&#39; region belongs to a &#39;rhs&#39; region. Returns a UInt8 number equal to 1 if it belongs, or 0 if it doesn&#39;t belong.
The relationship is reflexive - any region also belongs to itself.
5500

5501
===regionHierarchy(id[, geobase])===
5502

5503 5504
Accepts a UInt32 number - the region ID from the Yandex geobase. Returns an array of region IDs consisting of the passed region and all parents along the chain.
Example: %%regionHierarchy(toUInt32(213)) = [213,1,3,225,10001,10000]%%.
5505

5506
===regionToName(id[, lang])===
5507

5508
Accepts a UInt32 number - the region ID from the Yandex geobase. A string with the name of the language can be passed as a second argument. Supported languages are: ru, en, ua, uk, by, kz, tr. If the second argument is omitted, the language &#39;ru&#39; is used. If the language is not supported, an exception is thrown. Returns a string - the name of the region in the corresponding language. If the region with the specified ID doesn&#39;t exist, an empty string is returned.
5509

5510
&#39;ua&#39; and &#39;uk&#39; mean the same thing - Ukrainian.
5511

5512
===OSToRoot===
5513

5514
Accepts a UInt8 number - the ID of the operating system from the Yandex.Metrica dictionary. If any OS matches the passed number, it returns a UInt8 number - the ID of the corresponding root OS (for example, it converts Windows Vista to Windows). Otherwise, returns 0.
5515

5516
===OSIn(lhs, rhs)===
5517

5518
Checks whether the &#39;lhs&#39; operating system belongs to the &#39;rhs&#39; operating system.
5519

5520
===OSHierarchy===
5521

5522
Accepts a UInt8 number - the ID of the operating system from the Yandex.Metrica dictionary. Returns an array with a hierarchy of operating systems. Similar to the &#39;regionHierarchy&#39; function.
5523

5524
===SEToRoot===
5525

5526
Accepts a UInt8 number - the ID of the search engine from the Yandex.Metrica dictionary. If any search engine matches the passed number, it returns a UInt8 number - the ID of the corresponding root search engine (for example, it converts Yandex.Images to Yandex). Otherwise, returns 0.
5527

5528
===SEIn(lhs, rhs)===
5529

5530
Checks whether the &#39;lhs&#39; search engine belongs to the &#39;rhs&#39; search engine.
5531

5532
===SEHierarchy===
5533

5534
Accepts a UInt8 number - the ID of the search engine from the Yandex.Metrica dictionary. Returns an array with a hierarchy of search engines. Similar to the &#39;regionHierarchy&#39; function.
5535 5536


5537
==Functions for working with external dictionaries==
5538

5539
For more information, see the section &quot;External dictionaries&quot;.
5540

5541 5542 5543 5544 5545
===dictGetUInt8, dictGetUInt16, dictGetUInt32, dictGetUInt64===
===dictGetInt8, dictGetInt16, dictGetInt32, dictGetInt64===
===dictGetFloat32, dictGetFloat64===
===dictGetDate, dictGetDateTime===
===dictGetString===
5546

5547
<span class="inline-example">dictGet<i>T</i>(&#39;dict_name&#39;, &#39;attr_name&#39;, id)</span>
5548 5549 5550
- Gets the value of the &#39;attr_name&#39; attribute from the &#39;dict_name&#39; dictionary by the &#39;id&#39; key.
&#39;dict_name&#39; and &#39;attr_name&#39; are constant strings.
&#39;id&#39; must be UInt64.
5551
If the &#39;id&#39; key is not in the dictionary, it returns the default value set in the dictionary definition.
5552

5553 5554 5555
===dictIsIn===
%%dictIsIn(&#39;dict_name&#39;, child_id, ancestor_id)%%
- For the &#39;dict_name&#39; hierarchical dictionary, finds out whether the &#39;child_id&#39; key is located inside &#39;ancestor_id&#39; (or matches &#39;ancestor_id&#39;). Returns UInt8.
5556

5557 5558 5559
===dictGetHierarchy===
%%dictGetHierarchy(&#39;dict_name&#39;, id)%%
- For the &#39;dict_name&#39; hierarchical dictionary, returns an array of dictionary keys starting from &#39;id&#39; and continuing along the chain of parent elements. Returns Array(UInt64).
5560 5561


5562
==Functions for working with JSON.==
5563

5564
In Yandex.Metrica, JSON is passed by users as <i>session parameters</i>. There are several functions for working with this JSON. (Although in most of the cases, the JSONs are additionally pre-processed, and the resulting values are put in separate columns in their processed format.) All these functions are based on strong assumptions about what the JSON can be, but they try not to do anything.
5565

5566
The following assumptions are made:
5567 5568 5569

1. The field name (function argument) must be a constant.
2. The field name is somehow canonically encoded in JSON. For example,
5570
%%visitParamHas(&#39;{&quot;abc&quot;:&quot;def&quot;}&#39;, &#39;abc&#39;) = 1%%
5571
, but
5572
%%visitParamHas(&#39;{&quot;\\u0061\\u0062\\u0063&quot;:&quot;def&quot;}&#39;, &#39;abc&#39;) = 0%%
5573 5574 5575 5576
3. Fields are searched for on any nesting level, indiscriminately.  If there are multiple matching fields, the first occurrence is used.
4. JSON doesn&#39;t have space characters outside of string literals.


5577
===visitParamHas(params, name)===
5578

5579
Checks whether there is a field with the &#39;name&#39; name.
5580

5581
===visitParamExtractUInt(params, name)===
5582

5583
Parses UInt64 from the value of the field named &#39;name&#39;. If this is a string field, it tries to parse a number from the beginning of the string. If the field doesn&#39;t exist, or it exists but doesn&#39;t contain a number, it returns 0.
5584

5585
===visitParamExtractInt(params, name)===
5586

5587
The same as for Int64.
5588

5589
===visitParamExtractFloat(params, name)===
5590

5591
The same as for Float64.
5592

5593
===visitParamExtractBool(params, name)===
5594

5595
Parses a true/false value. The result is UInt8.
5596

5597
===visitParamExtractRaw(params, name)===
5598

5599 5600 5601
Returns the value of a field, including separators. Examples:
%%visitParamExtractRaw(&#39;{&quot;abc&quot;:&quot;\\n\\u0000&quot;}&#39;, &#39;abc&#39;) = &#39;&quot;\\n\\u0000&quot;&#39;%%
%%visitParamExtractRaw(&#39;{&quot;abc&quot;:{&quot;def&quot;:[1,2,3]}}&#39;, &#39;abc&#39;) = &#39;{&quot;def&quot;:[1,2,3]}&#39;%%
5602

5603
===visitParamExtractString(params, name)===
5604

5605 5606 5607 5608 5609 5610
Parses the string in double quotes. The value is unescaped. If unescaping failed, it returns an empty string. Examples:
%%visitParamExtractString(&#39;{&quot;abc&quot;:&quot;\\n\\u0000&quot;}&#39;, &#39;abc&#39;) = &#39;\n\0&#39;%%
%%visitParamExtractString(&#39;{&quot;abc&quot;:&quot;\\u263a&quot;}&#39;, &#39;abc&#39;) = &#39;&#39;%%
%%visitParamExtractString(&#39;{&quot;abc&quot;:&quot;\\u263&quot;}&#39;, &#39;abc&#39;) = &#39;&#39;%%
%%visitParamExtractString(&#39;{&quot;abc&quot;:&quot;hello}&#39;, &#39;abc&#39;) = &#39;&#39;%%
Currently, there is no support for code points not from the basic multilingual plane written in the format \uXXXX\uYYYY (they are converted to CESU-8 instead of UTF-8).
5611 5612


5613
==Functions for implementing the IN operator==
5614

5615
===in, notIn, globalIn, globalNotIn===
5616

5617
See the section &quot;IN operators&quot;.
5618

5619 5620 5621

===tuple(x, y, ...), operator (x, y, ...)===
- A function that allows grouping multiple columns.
5622
For columns with the types T1, T2, ..., it returns a Tuple(T1, T2, ...) type tuple containing these columns. There is no cost to execute the function.
5623
Tuples are normally used as intermediate values for an argument of IN operators, or for creating a list of formal parameters of lambda functions. Tuples can&#39;t be written to a table.
5624

5625 5626
===tupleElement(tuple, n), operator x.N===
- A function that allows getting columns from a tuple.
5627
&#39;N&#39; is the column index, starting from 1. &#39;N&#39; must be a constant. &#39;N&#39; must be a strict postive integer no greater than the size of the tuple.
5628
There is no cost to execute the function.
5629 5630


5631
==Other functions==
5632

5633 5634
===hostName()===
- Returns a string with the name of the host that this function was performed on. For distributed processing, this is the name of the remote server host, if the function is performed on a remote server.
5635

5636 5637
===visibleWidth(x)===
- Calculates the approximate width when outputting values to the console in text format (tab-separated). This function is used by the system for implementing Pretty formats.
5638

5639 5640
===toTypeName(x)===
- Gets the type name. Returns a string containing the type name of the passed argument.
5641

5642 5643 5644
===blockSize()===
- Gets the size of the block.
In ClickHouse, queries are always run on blocks (sets of column parts). This function allows getting the size of the block that you called it for.
5645

5646 5647 5648
===materialize(x)===
- Turns a constant into a full column containing just one value.
In ClickHouse, full columns and constants are represented differently in memory. Functions work differently for constant arguments and normal arguments (different code is executed), although the result is almost always the same. This function is for debugging this behavior.
5649

5650 5651 5652
===ignore(...)===
- A function that accepts any arguments and always returns 0.
However, the argument is still calculated. This can be used for benchmarks.
5653

5654 5655
===sleep(seconds)===
Sleeps &#39;seconds&#39; seconds on each data block. You can specify an integer or a floating-point number.
5656

5657 5658 5659
===currentDatabase()===
Returns the name of the current database.
You can use this function in table engine parameters in a CREATE TABLE query where you need to specify the database.
5660

5661 5662
===isFinite(x)===
Accepts Float32 and Float64 and returns UInt8 equal to 1 if the argument is not infinite and not a NaN, otherwise 0.
5663

5664 5665 5666
===isInfinite(x)===
Accepts Float32 and Float64 and returns UInt8 equal to 1 if the argument is infinite, otherwise 0.
Note that 0 is returned for a NaN.
5667

5668 5669
===isNaN(x)===
Accepts Float32 and Float64 and returns UInt8 equal to 1 if the argument is a NaN, otherwise 0.
5670

5671 5672
===bar===
Allows building a unicode-art diagram.
5673

5674
bar(x, min, max, width) - Draws a band with a width proportional to (x - min) and equal to &#39;width&#39; characters when x == max.
5675
min, max - Integer constants. The value must fit in Int64.
5676
width - Constant, positive number, may be a fraction.
5677

5678
The band is drawn with accuracy to one eighth of a symbol. Example:
5679

5680
%%
5681 5682 5683 5684 5685 5686 5687 5688 5689 5690 5691 5692 5693 5694 5695 5696 5697 5698 5699 5700 5701 5702 5703 5704 5705 5706 5707 5708 5709 5710 5711 5712 5713 5714
SELECT
    toHour(EventTime) AS h,
    count() AS c,
    bar(c, 0, 600000, 20) AS bar
FROM test.hits
GROUP BY h
ORDER BY h ASC

┌──h─┬──────c─┬─bar────────────────┐
│  0 │ 292907 │ █████████▋         │
│  1 │ 180563 │ ██████             │
│  2 │ 114861 │ ███▋               │
│  3 │  85069 │ ██▋                │
│  4 │  68543 │ ██▎                │
│  5 │  78116 │ ██▌                │
│  6 │ 113474 │ ███▋               │
│  7 │ 170678 │ █████▋             │
│  8 │ 278380 │ █████████▎         │
│  9 │ 391053 │ █████████████      │
│ 10 │ 457681 │ ███████████████▎   │
│ 11 │ 493667 │ ████████████████▍  │
│ 12 │ 509641 │ ████████████████▊  │
│ 13 │ 522947 │ █████████████████▍ │
│ 14 │ 539954 │ █████████████████▊ │
│ 15 │ 528460 │ █████████████████▌ │
│ 16 │ 539201 │ █████████████████▊ │
│ 17 │ 523539 │ █████████████████▍ │
│ 18 │ 506467 │ ████████████████▊  │
│ 19 │ 520915 │ █████████████████▎ │
│ 20 │ 521665 │ █████████████████▍ │
│ 21 │ 542078 │ ██████████████████ │
│ 22 │ 493642 │ ████████████████▍  │
│ 23 │ 400397 │ █████████████▎     │
└────┴────────┴────────────────────┘
5715
%%
5716

5717 5718 5719
===transform===
Transforms a value according to the explicitly defined mapping of some elements to other ones.
There are two variations of this function:
5720

5721
1. %%transform(x, array_from, array_to, default)%%
5722

5723 5724 5725 5726
%%x%% - What to transform.
%%array_from%% - Constant array of values for converting.
%%array_to%% - Constant array of values to convert the values in &#39;from&#39; to.
%%default%% - Constant. Which value to use if &#39;x&#39; is not equal to one of the values in &#39;from&#39;.
5727

5728
&#39;array_from&#39; and &#39;array_to&#39; are arrays of the same size.
5729

5730 5731
Types:
<span class="inline-example">transform(T, Array(T), Array(U), U) -> U</span>
5732

5733
&#39;T&#39; and &#39;U&#39; can be numeric, string, or Date or DateTime types.
5734
Where the same letter is indicated (T or U), for numeric types these might not be matching types, but types that have a common type.
5735
For example, the first argument can have the Int64 type, while the second has the Array(Uint16) type.
5736

5737
If the &#39;x&#39; value is equal to one of the elements in the &#39;array_from&#39; array, it returns the existing element (that is numbered the same) from the &#39;array_to&#39; array. Otherwise, it returns &#39;default&#39;. If there are multiple matching elements in &#39;array_from&#39;, it returns one of the matches.
5738

5739
Example:
5740

5741
%%
5742 5743 5744 5745 5746 5747 5748 5749 5750 5751 5752 5753 5754 5755

SELECT
    transform(SearchEngineID, [2, 3], [&#39;Yandex&#39;, &#39;Google&#39;], &#39;Others&#39;) AS title,
    count() AS c
FROM test.hits
WHERE SearchEngineID != 0
GROUP BY title
ORDER BY c DESC

┌─title──┬──────c─┐
│ Yandex │ 498635 │
│ Google │ 229872 │
│ Others │ 104472 │
└────────┴────────┘
5756
%%
5757

5758
2. %%transform(x, array_from, array_to)%%
5759

5760 5761
Differs from the first variation in that the &#39;default&#39; argument is omitted.
If the &#39;x&#39; value is equal to one of the elements in the &#39;array_from&#39; array, it returns the matching element (that is numbered the same) from the &#39;array_to&#39; array. Otherwise, it returns &#39;x&#39;.
5762

5763 5764
Types:
<span class="inline-example">transform(T, Array(T), Array(T)) -> T</span>
5765

5766
Example:
5767

5768
%%
5769 5770 5771 5772 5773 5774 5775 5776 5777 5778 5779 5780 5781 5782 5783 5784 5785 5786 5787 5788 5789

SELECT
    transform(domain(Referer), [&#39;yandex.ru&#39;, &#39;google.ru&#39;, &#39;vk.com&#39;], [&#39;www.yandex&#39;, &#39;ввв.яндекс.рф&#39;, &#39;example.com&#39;]) AS s,
    count() AS c
FROM test.hits
GROUP BY domain(Referer)
ORDER BY count() DESC
LIMIT 10

┌─s──────────────┬───────c─┐
│                │ 2906259 │
│ www.yandex     │  867767 │
│ ███████.ru     │  313599 │
│ mail.yandex.ru │  107147 │
│ ввв.яндекс.рф  │  105668 │
│ ██████.ru      │  100355 │
│ █████████.ru   │   65040 │
│ news.yandex.ru │   64515 │
│ ██████.net     │   59141 │
│ example.com    │   57316 │
└────────────────┴─────────┘
5790
%%
5791 5792


5793
==arrayJoin function==
5794

5795
This is a very unusual function.
5796

5797 5798
Normal functions don&#39;t change a set of rows, but just change the values in each row (map). Aggregate functions compress a set of rows (fold or reduce).
The &#39;arrayJoin&#39; function takes each row and generates a set of rows (unfold).
5799

5800 5801
This function takes an array as an argument, and propagates the source row to multiple rows for the number of elements in the array.
All the values in columns are simply copied, except the values in the column where this function is applied - it is replaced with the corresponding array value.
5802

5803
A query can use multiple &#39;arrayJoin&#39; functions. In this case, the transformation is performed multiple times.
5804

5805
Note the ARRAY JOIN syntax in the SELECT query, which provides broader possibilities.
5806

5807
Example:
5808

5809
%%
5810 5811 5812 5813 5814 5815 5816 5817 5818 5819 5820 5821
:) SELECT arrayJoin([1, 2, 3] AS src) AS dst, &#39;Hello&#39;, src

SELECT
    arrayJoin([1, 2, 3] AS src) AS dst,
    &#39;Hello&#39;,
    src

┌─dst─┬─\&#39;Hello\&#39;─┬─src─────┐
│   1 │ Hello     │ [1,2,3] │
│   2 │ Hello     │ [1,2,3] │
│   3 │ Hello     │ [1,2,3] │
└─────┴───────────┴─────────┘
5822
%%
5823 5824

</div>
5825
<div class="island">
5826 5827
<h1>Aggregate functions</h1>
</div>
5828
<div class="island content">
5829

5830
==count()==
5831

5832 5833
Counts the number of rows. Accepts zero arguments and returns UInt64.
The syntax COUNT(DISTINCT x) is not supported. The separate &#39;uniq&#39; aggregate function exists for this purpose.
5834

5835
A &#39;SELECT count() FROM table&#39; query is not optimized, because the number of entries in the table is not stored separately. It will select some small column from the table and count the number of values in it.
5836 5837


5838
==any(x)==
5839

5840
Selects the first encountered value.
5841
The query can be executed in any order and even in a different order each time, so the result of this function is indeterminate.
5842
To get a determinate result, you can use the &#39;min&#39; or &#39;max&#39; function instead of &#39;any&#39;.
5843

5844
In some cases, you can rely on the order of execution. This applies to cases when SELECT comes from a subquery that uses ORDER BY.
5845

5846
When a SELECT query has the GROUP BY clause or at least one aggregate function, ClickHouse (in contrast to MySQL) requires that all expressions in the SELECT, HAVING, and ORDER BY clauses be calculated from keys or from aggregate functions. That is, each column selected from the table must be used either in keys, or inside aggregate functions. To get behavior like in MySQL, you can put the other columns in the &#39;any&#39; aggregate function.
5847 5848


5849
==anyLast(x)==
5850

5851 5852
Selects the last value encountered.
The result is just as indeterminate as for the &#39;any&#39; function.
5853 5854


5855
==min(x)==
5856

5857
Calculates the minimum.
5858 5859


5860
==max(x)==
5861

5862
Calculates the maximum.
5863 5864


5865
==argMin(arg, val)==
5866

5867
Calculates the &#39;arg&#39; value for a minimal &#39;val&#39; value. If there are several different values of &#39;arg&#39; for minimal values of &#39;val&#39;, the first of these values encountered is output.
5868 5869


5870
==argMax(arg, val)==
5871

5872
Calculates the &#39;arg&#39; value for a maximum &#39;val&#39; value. If there are several different values of &#39;arg&#39; for maximum values of &#39;val&#39;, the first of these values encountered is output.
5873 5874


5875
==sum(x)==
5876

5877 5878
Calculates the sum.
Only works for numbers.
5879 5880


5881
==avg(x)==
5882

5883
Calculates the average.
5884
Only works for numbers.
5885
The result is always Float64.
5886 5887


5888
==uniq(x)==
5889

5890
Calculates the approximate number of different values of the argument. Works for numbers, strings, dates, and dates with times.
5891

5892 5893
Uses an adaptive sampling algorithm: for the calculation state, it uses a sample of element hash values with a size up to 65535.
Compared with the widely known HyperLogLog algorithm, this algorithm is less effective in terms of accuracy and memory consumption (even up to proportionality), but it is adaptive. This means that with fairly high accuracy, it consumes less memory during simultaneous computation of cardinality for a large number of data sets whose cardinality has power law distribution (i.e. in cases when most of the data sets are small). This algorithm is also very accurate for data sets with small cardinality (up to 65536) and very efficient on CPU (when computing not too many of these functions, using &#39;uniq&#39; is almost as fast as using other aggregate functions).
5894

5895
There is no compensation for the bias of an estimate, so for large data sets the results are systematically deflated. This function is normally used for computing the number of unique visitors in Yandex.Metrica, so this bias does not play a role.
5896

5897
The result is determinate (it doesn&#39;t depend on the order of query execution).
5898 5899


5900
==uniqHLL12(x)==
5901

5902
Uses the HyperLogLog algorithm to approximate the number of different values of the argument. It uses 2<sup>12</sup> 5-bit cells. The size of the state is slightly more than 2.5 KB.
5903

5904
The result is determinate (it doesn&#39;t depend on the order of query execution).
5905

5906
In most cases, use the &#39;uniq&#39; function. You should only use this function if you understand its advantages well.
5907 5908


5909
==uniqExact(x)==
5910

5911
Calculates the number of different values of the argument, exactly.
5912
There is no reason to fear approximations, so it&#39;s better to use the &#39;uniq&#39; function.
5913
You should use the &#39;uniqExact&#39; function if you definitely need an exact result.
5914

5915
The &#39;uniqExact&#39; function uses more memory than the &#39;uniq&#39; function, because the size of the state has unbounded growth as the number of different values increases.
5916 5917


5918
==groupArray(x)==
5919

5920 5921
Creates an array of argument values.
Values can be added to the array in any (indeterminate) order.
5922

5923
In some cases, you can rely on the order of execution. This applies to cases when SELECT comes from a subquery that uses ORDER BY.
5924 5925


5926
==groupUniqArray(x)==
5927

5928
Creates an array from different argument values. Memory consumption is the same as for the &#39;uniqExact&#39; function.
5929 5930


5931
==median(x)==
5932

5933
Approximates the median. Also see the similar &#39;quantile&#39; function.
5934
Works for numbers, dates, and dates with times.
5935
For numbers it returns Float64, for dates - a date, and for dates with times - a date with time.
5936

5937
Uses reservoir sampling with a reservoir size up to 8192.
5938
If necessary, the result is output with linear approximation from the two neighboring values.
5939
This algorithm proved to be more practical than another well-known algorithm - QDigest.
5940

5941
The result depends on the order of running the query, and is nondeterministic.
5942 5943


5944
==medianTiming(x)==
5945

5946
Calculates the median with fixed accuracy.
5947
Works for numbers. Intended for calculating medians of page loading time in milliseconds.
5948
Also see the similar &#39;quantileTiming&#39; function.
5949

5950
If the value is greater than 30,000 (a page loading time of more than 30 seconds), the result is equated to 30,000.
5951
If the value is less than 1024, the calculation is exact.
5952
If the value is from 1025 to 29,000, the calculation is rounded to a multiple of 16.
5953

5954
In addition, if the total number of values passed to the aggregate function was less than 32, the calculation is exact.
5955

5956
When passing negative values to the function, the behavior is undefined.
5957

5958
The returned value has the Float32 type. If no values were passed to the function (when using &#39;medianTimingIf&#39; or &#39;quantileTimingIf&#39;), &#39;nan&#39; is returned. The purpose of this is to differentiate these instances from zeros. See the note on sorting NaNs in &quot;ORDER BY clause&quot;.
5959

5960
The result is determinate (it doesn&#39;t depend on the order of query execution).
5961

5962
For its purpose (calculating quantiles of page loading times), using this function is more effective and the result is more accurate than for the &#39;median/quantile&#39; function.
5963 5964


5965
==medianDeterministic(x, determinator)==
5966

5967
This function works similarly to the &#39;median&#39; function - it approximates the median. However, in contrast to &#39;median&#39;, the result is deterministic and does not depend on the order of query execution.
5968

5969
To achieve this, the function takes a second argument - the &quot;determinator&quot;. This is a number whose hash is used instead of a random number generator in the reservoir sampling algorithm. For the function to work correctly, the same determinator value should not occur too often. For the determinator, you can use an event ID, user ID, and so on.
5970

5971
Don&#39;t use this function for calculating timings. The &#39;medianTiming&#39;, &#39;quantileTiming&#39;, and &#39;quantilesTiming&#39; functions are better suited to this purpose.
5972 5973


5974
==medianTimingWeighted(x, weight)==
5975

5976 5977
Differs from the &#39;medianTiming&#39; function in that it has a second argument - &quot;weights&quot;. Weight is a non-negative integer.
The result is calculated as if the &#39;x&#39; value were passed &#39;weight&#39; number of times to the &#39;medianTiming&#39; function.
5978 5979


5980
==varSamp(x)==
5981

5982
Calculates the amount <span class="inline-example">Σ((x - x̅)<sup>2</sup>) / (n - 1)</span>, where &#39;n&#39; is the sample size and &#39;&#39; is the average value of &#39;x&#39;.
5983

5984
It represents an unbiased estimate of the variance of a random variable, if the values passed to the function are a sample of this random amount.
5985

5986
Returns Float64. If n &lt;= 1, it returns +∞.
5987 5988


5989
==varPop(x)==
5990

5991
Calculates the amount <span class="inline-example">Σ((x - x̅)<sup>2</sup>) / n</span>, where &#39;n&#39; is the sample size and &#39;&#39; is the average value of &#39;x&#39;.
5992

5993
In other words, dispersion for a set of values. Returns Float64.
5994 5995


5996
==stddevSamp(x)==
5997

5998
The result is equal to the square root of &#39;varSamp(x)&#39;.
5999 6000


6001
==stddevPop(x)==
6002

6003
The result is equal to the square root of &#39;varPop(x)&#39;.
6004 6005


6006
==covarSamp(x, y)==
6007

6008
Calculates the value of %%Σ((x - x̅)(y - y̅)) / (n - 1)%%.
6009

6010
Returns Float64. If n &lt;= 1, it returns +∞.
6011 6012


6013
==covarPop(x, y)==
6014

6015
Calculates the value of %%Σ((x - x̅)(y - y̅)) / n%%.
6016 6017


6018
==corr(x, y)==
6019

6020
Calculates the Pearson correlation coefficient: <span class="inline-example">Σ((x - x̅)(y - y̅)) / sqrt(Σ((x - x̅)<sup>2</sup>) * Σ((y - y̅)<sup>2</sup>))</span>.
6021 6022


6023
==Parametric aggregate functions==
6024

6025
Some aggregate functions can accept not only argument columns (used for compression), but a set of parameters - constants for initialization. The syntax is two pairs of brackets instead of one. The first is for parameters, and the second is for arguments.
6026 6027


6028
==quantile(level)(x)==
6029

6030 6031
Approximates the &#39;level&#39; quantile. &#39;level&#39; is a constant, a floating-point number from 0 to 1. We recommend using a &#39;level&#39; value in the range of 0.01 .. 0.99.
Don&#39;t use a &#39;level&#39; value equal to 0 or 1 - use the &#39;min&#39; and &#39;max&#39; functions for these cases.
6032

6033
The algorithm is the same as for the &#39;median&#39; function. Actually, &#39;quantile&#39; and &#39;median&#39; are internally the same function. You can use the &#39;quantile&#39; function without parameters - in this case, it calculates the median, and you can use the &#39;median&#39; function with parameters - in this case, it calculates the quantile of the set level.
6034

6035
When using multiple &#39;quantile&#39; and &#39;median&#39; functions with different levels in a query, the internal states are not combined (that is, the query works less efficiently than it could). In this case, use the &#39;quantiles&#39; function.
6036 6037


6038
==quantiles(level1, level2, ...)(x)==
6039

6040 6041
Approximates quantiles of all specified levels.
The result is an array containing the corresponding number of values.
6042 6043


6044
==quantileTiming(level)(x)==
6045

6046
Calculates the quantile of &#39;level&#39; using the same algorithm as the &#39;medianTiming&#39; function.
6047 6048


6049
==quantilesTiming(level1, level2, ...)(x)==
6050

6051
Calculates the quantiles of all specified levels using the same algorithm as the &#39;medianTiming&#39; function.
6052 6053


6054
==quantileTimingWeighted(level)(x, weight)==
6055

6056
Calculates the quantile of &#39;level&#39; using the same algorithm as the &#39;medianTimingWeighted&#39; function.
6057 6058


6059
==quantilesTimingWeighted(level1, level2, ...)(x, weight)==
6060

6061
Calculates the quantiles of all specified levels using the same algorithm as the &#39;medianTimingWeighted&#39; function.
6062 6063


6064
==quantileDeterministic(level)(x, determinator)==
6065

6066
Calculates the quantile of &#39;level&#39; using the same algorithm as the &#39;medianDeterministic&#39; function.
6067 6068


6069
==quantilesDeterministic(level1, level2, ...)(x, determinator)==
6070

6071
Calculates the quantiles of all specified levels using the same algorithm as the &#39;medianDeterministic&#39; function.
6072 6073


6074
==sequenceMatch(pattern)(time, cond1, cond2, ...)==
6075

6076
Pattern matching for event chains.
6077

6078
&#39;pattern&#39; is a string containing a pattern to match. The pattern is similar to a regular expression.
6079
&#39;time&#39; is the event time of the DateTime type.
6080
&#39;cond1, cond2 ...&#39; are from one to 32 arguments of the UInt8 type that indicate whether an event condition was met.
6081

6082 6083
The function collects a sequence of events in RAM. Then it checks whether this sequence matches the pattern.
It returns UInt8 - 0 if the pattern isn&#39;t matched, or 1 if it matches.
6084

6085 6086
Example: %%sequenceMatch(&#39;(?1).*(?2)&#39;)(EventTime, URL LIKE &#39;%company%&#39;, URL LIKE &#39;%cart%&#39;)%%
- whether there was a chain of events in which pages with the address in %%company%% were visited earlier than pages with the address in %%cart%%.
6087

6088 6089 6090
This is a degenerate example. You could write it using other aggregate functions:
%%minIf(EventTime, URL LIKE &#39;%company%&#39;) &lt; maxIf(EventTime, URL LIKE &#39;%cart%&#39;)%%.
However, there is no such solution for more complex situations.
6091

6092 6093 6094
Pattern syntax:
%%(?1)%% - Reference to a condition (any number in place of 1).
%%.*%% - Any number of events.
6095
<span class="inline-example">(?t>=1800)</span> - Time condition.
6096 6097
Any quantity of any type of events is allowed over the specified time.
The operators &lt;, >, &lt;= may be used instead of  >=.
6098
Any number may be specified in place of 1800.
6099

6100
Events that occur during the same second may be put in the chain in any order. This may affect the result of the function.
6101

6102
==uniqUpTo(N)(x)==
6103

6104 6105
Calculates the number of different argument values, if it is less than or equal to N.
If the number of different argument values is greater than N, it returns N + 1.
6106

6107
Recommended for use with small Ns, up to 10. The maximum N value is 100.
6108

6109 6110
For the state of an aggregate function, it uses the amount of memory equal to 1 + N * the size of one value of bytes.
For strings, it stores a non-cryptographic hash of 8 bytes. That is, the calculation is approximated for strings.
6111

6112
It works as fast as possible, except for cases when a large N value is used and the number of unique values is slightly less than N.
6113

6114
Usage example:
6115
Problem: Generate a report that shows only keywords that produced at least 5 unique users.
6116
Solution: Write in the query <span class="inline-example">GROUP BY SearchPhrase HAVING uniqUpTo(4)(UserID) >= 5</span>
6117 6118


6119
==Aggregate function combinators==
6120

6121 6122
The name of an aggregate function can have a suffix appended to it. This changes the way the aggregate function works.
There are %%If%% and %%Array%% combinators. See the sections below.
6123 6124


6125
==-If combinator. Conditional aggregate functions==
6126

6127
The suffix -%%If%% can be appended to the name of any aggregate function. In this case, the aggregate function accepts an extra argument - a condition (Uint8 type). The aggregate function processes only the rows that trigger the condition. If the condition was not triggered even once, it returns a default value (usually zeros or empty strings).
6128

6129
Examples: %%countIf(cond)%%, %%avgIf(x, cond)%%, %%quantilesTimingIf(level1, level2)(x, cond)%%, %%argMinIf(arg, val, cond)%% and so on.
6130

6131 6132
You can use aggregate functions to calculate aggregates for multiple conditions at once, without using subqueries and JOINs.
For example, in Yandex.Metrica, we use conditional aggregate functions for implementing segment comparison functionality.
6133 6134


6135
==-Array combinator. Aggregate functions for array arguments==
6136

6137
The -%%Array%% suffix can be appended to any aggregate function. In this case, the aggregate function takes arguments of the &#39;Array(T)&#39; type (arrays) instead of &#39;T&#39; type arguments. If the aggregate function accepts multiple arguments, this must be arrays of equal lengths. When processing arrays, the aggregate function works like the original aggregate function across all array elements.
6138

6139 6140
Example 1: %%sumArray(arr)%% - Totals all the elements of all &#39;arr&#39; arrays. In this example, it could have been written more simply: %%sum(arraySum(arr))%%.
Example 2: %%uniqArray(arr)%% - Count the number of unique elements in all &#39;arr&#39; arrays. This could be done an easier way: %%uniq(arrayJoin(arr))%%, but it&#39;s not always possible to add &#39;arrayJoin&#39; to a query.
6141

6142
The -%%If%% and -%%Array%% combinators can be used together. However, &#39;Array&#39; must come first, then &#39;If&#39;. Examples: %%uniqArrayIf(arr, cond)%%,  %%quantilesTimingArrayIf(level1, level2)(arr, cond)%%. Due to this order, the &#39;cond&#39; argument can&#39;t be an array.
6143 6144


6145
==-State combinator==
6146

6147
==-Merge combinator==
6148 6149 6150


</div>
6151
<div class="island">
6152 6153
<h1>Dictionaries</h1>
</div>
6154
<div class="island content">
6155

6156
A dictionary is a mapping (key -> attributes) that can be used in a query as functions. You can think of this as a more convenient and efficient type of JOIN with dimension tables.
6157

6158
There are built-in (internal) and add-on (external) dictionaries.
6159

6160
==Internal dictionaries==
6161

6162
ClickHouse contains a built-in feature for working with a geobase.
6163

6164
This allows you to:
6165 6166 6167
- Use a region&#39;s ID to get its name in the desired language.
- Use a region&#39;s ID to get the ID of a city, area, federal district, country, or continent.
- Check whether a region is part of another region.
6168
- Get a chain of parent regions.
6169

6170
All the functions support &quot;translocality,&quot; the ability to simultaneously use different perspectives on region ownership. For more information, see the section &quot;Functions for working with Yandex.Metrica dictionaries&quot;.
6171

6172 6173
The internal dictionaries are disabled in the default package.
To enable them, uncomment the parameters &#39;path_to_regions_hierarchy_file&#39; and &#39;path_to_regions_names_files&#39; in the server config file.
6174

6175
The geobase is loaded from text files.
6176
If you are Yandex employee, to create them, use the following instructions:
6177
https://github.yandex-team.ru/raw/Metrika/ClickHouse_private/master/doc/create_embedded_geobase_dictionaries.txt
6178

6179
Put the regions_hierarchy*.txt files in the path_to_regions_hierarchy_file directory. This configuration parameter must contain the path to the regions_hierarchy.txt file (the default regional hierarchy), and the other files (regions_hierarchy_ua.txt) must be located in the same directory.
6180

6181
Put the regions_names_*.txt files in the path_to_regions_names_files directory.
6182

6183
You can also create these files yourself. The file format is as follows:
6184

6185
regions_hierarchy*.txt: TabSeparated (no header), columns:
6186 6187 6188
- Region ID (UInt32)
- Parent region ID (UInt32)
- Region type (UInt8): 1 - continent, 3 - country, 4 - federal district, 5 - region, 6 - city; other types don&#39;t have values.
6189
- Population (UInt32) - Optional column.
6190

6191
regions_names_*.txt: TabSeparated (no header), columns:
6192
- Region ID (UInt32)
6193
- Region name (String) - Can&#39;t contain tabs or line breaks, even escaped ones.
6194

6195
A flat array is used for storing in RAM. For this reason, IDs shouldn&#39;t be more than a million.
6196

6197
Dictionaries can be updated without the server restart. However, the set of available dictionaries is not updated. For updates, the file modification times are checked. If a file has changed, the dictionary is updated.
6198
The interval to check for changes is configured in the &#39;builtin_dictionaries_reload_interval&#39; parameter.
6199
Dictionary updates (other than loading at first use) do not block queries. During updates, queries use the old versions of dictionaries. If an error occurs during an update, the error is written to the server log, while queries continue using the old version of dictionaries.
6200

6201
We recommend periodically updating the dictionaries with the geobase. During an update, generate new files and write them to a separate location. When everything is ready, rename them to the files used by the server.
6202

6203
There are also functions for working with OS identifiers and Yandex.Metrica search engines, but they shouldn&#39;t be used.
6204 6205


6206
==External dictionaries==
6207

6208 6209
It is possible to add your own dictionaries from various data sources. The data source for a dictionary can be a file in the local file system, the ClickHouse server, or a MySQL server.
A dictionary can be stored completely in RAM and updated regularly, or it can be partially cached in RAM and dynamically load missing values.
6210

6211 6212
The configuration of external dictionaries is in a separate file or files specified in the &#39;dictionaries_config&#39; configuration parameter.
This parameter contains the absolute or relative path to the file with the dictionary configuration. A relative path is relative to the directory with the server config file. The path can contain wildcards * and ?, in which case all matching files are found. Example: dictionaries/*.xml.
6213

6214
The dictionary configuration, as well as the set of files with the configuration, can be updated without restarting the server. The server checks updates every 5 seconds. This means that dictionaries can be enabled dynamically.
6215

6216
Dictionaries can be created when starting the server, or at first use. This is defined by the &#39;dictionaries_lazy_load&#39; parameter in the main server config file. This parameter is optional, &#39;true&#39; by default. If set to &#39;true&#39;, each dictionary is created at first use. If dictionary creation failed, the function that was using the dictionary throws an exception. If &#39;false&#39;, all dictionaries are created when the server starts, and if there is an error, the server shuts down.
6217

6218
The dictionary config file has the following format:
6219

6220
%%
6221 6222 6223 6224 6225 6226 6227 6228 6229 6230 6231 6232 6233 6234 6235 6236 6237 6238 6239 6240 6241 6242 6243 6244 6245 6246 6247 6248 6249 6250 6251 6252 6253 6254 6255 6256 6257 6258 6259 6260 6261 6262 6263 6264 6265 6266 6267 6268 6269 6270 6271 6272 6273 6274 6275 6276 6277 6278 6279 6280 6281 6282 6283 6284 6285 6286 6287 6288 6289 6290 6291 6292 6293 6294 6295 6296 6297 6298 6299 6300 6301 6302 6303 6304 6305 6306 6307 6308 6309 6310 6311 6312 6313 6314 6315 6316 6317 6318 6319 6320 6321
&lt;dictionaries>
	&lt;comment>Optional element with any content; completely ignored.&lt;/comment>

	&lt;!--You can set any number of different dictionaries. -->
	&lt;dictionary>
		&lt;!-- Dictionary name. The dictionary will be accessed for use by this name. -->
		&lt;name>os&lt;/name>

		&lt;!-- Data source. -->
		&lt;source>
			&lt;!-- Source is a file in the local file system. -->
			&lt;file>
				&lt;!-- Path on the local file system. -->
				&lt;path>/opt/dictionaries/os.tsv&lt;/path>
				&lt;!-- Which format to use for reading the file. -->
				&lt;format>TabSeparated&lt;/format>
			&lt;/file>

			&lt;!-- or the source is a table on a MySQL server.
			&lt;mysql>
				&lt;!- - These parameters can be specified outside (common for all replicas) or inside a specific replica - ->
				&lt;port>3306&lt;/port>
				&lt;user>metrika&lt;/user>
				&lt;password>qwerty&lt;/password>
				&lt;!- - Specify from one to any number of replicas for fault tolerance. - ->
				&lt;replica>
					&lt;host>example01-1&lt;/host>
					&lt;priority>1&lt;/priority> &lt;!- - The lower the value, the higher the priority. - ->
				&lt;/replica>
				&lt;replica>
					&lt;host>example01-2&lt;/host>
					&lt;priority>1&lt;/priority>
				&lt;/replica>
				&lt;db>conv_main&lt;/db>
				&lt;table>counters&lt;/table>
			&lt;/mysql>
			-->

			&lt;!-- or the source is a table on the ClickHouse server.
			&lt;clickhouse>
				&lt;host>example01-01-1&lt;/host>
				&lt;port>9000&lt;/port>
				&lt;user>default&lt;/user>
				&lt;password>&lt;/password>
				&lt;db>default&lt;/db>
				&lt;table>counters&lt;/table>
			&lt;/clickhouse>
			&lt;!- - If the address is similar to localhost, the request is made without network interaction. For fault tolerance, you can create a Distributed table on localhost and enter it. - ->
			-->
		&lt;/source>

		&lt;!-- Update interval for fully loaded dictionaries. 0 - never update. -->
		&lt;lifetime>
			&lt;min>300&lt;/min>
			&lt;max>360&lt;/max>
			&lt;!-- The update interval is selected uniformly randomly between min and max, in order to spread out the load when updating dictionaries on a large number of servers. -->
		&lt;/lifetime>

		&lt;!-- or &lt;!- - The update interval for fully loaded dictionaries or invalidation time for cached dictionaries. 0 - never update. - ->
		&lt;lifetime>300&lt;/lifetime>
		-->

		&lt;layout> &lt;!-- Method for storing in memory. -->
			&lt;flat />
			&lt;!-- or &lt;hashed />
			or
			&lt;cache>
				&lt;!- - Cache size in number of cells; rounded up to a degree of two. - ->
				&lt;size_in_cells>1000000000&lt;/size_in_cells>
			&lt;/cache> -->
		&lt;/layout>

		&lt;!-- Structure. -->
		&lt;structure>
			&lt;!-- Description of the column that serves as the dictionary identifier (key). -->
			&lt;id>
				&lt;!-- Column name with ID. -->
				&lt;name>Id&lt;/name>
			&lt;/id>

			&lt;attribute>
				&lt;!-- Column name. -->
				&lt;name>Name&lt;/name>
				&lt;!-- Column type. (How the column is understood when loading. For MySQL, a table can have TEXT, VARCHAR, and BLOB, but these are all loaded as String) -->
				&lt;type>String&lt;/type>
				&lt;!-- Value to use for a non-existing element. In the example, an empty string. -->
				&lt;null_value>&lt;/null_value>
			&lt;/attribute>
			&lt;!-- Any number of attributes can be specified. -->
			&lt;attribute>
				&lt;name>ParentID&lt;/name>
				&lt;type>UInt64&lt;/type>
				&lt;null_value>0&lt;/null_value>
				&lt;!-- Whether it defines a hierarchy - mapping to the parent ID (by default, false). -->
				&lt;hierarchical>true&lt;/hierarchical>
				&lt;!-- The mapping id -> attribute can be considered injective, in order to optimize GROUP BY. (by default, false) -->
				&lt;injective>true&lt;/injective>
			&lt;/attribute>
		&lt;/structure>
	&lt;/dictionary>
&lt;/dictionaries>
6322
%%
6323

6324
The dictionary identifier (key attribute) must be a number that fits into UInt64. Compound and string keys are not supported. However, if your dictionary has a complex key, you can hash it and use the hash as the key. You can use View for this purpose (in both ClickHouse and MySQL).
6325

6326
There are three ways to store dictionaries in memory.
6327

6328 6329
1. %%flat%% - As flat arrays.
This is the most effective method. It works if all keys are smaller than 500,000.  If a larger key is discovered when creating the dictionary, an exception is thrown and the dictionary is not created. The dictionary is loaded to RAM in its entirety. The dictionary uses the amount of memory proportional to maximum key value. With the limit of 500,000, memory consumption is not likely to be high. All types of sources are supported. When updating, data (from a file or from a table) is read in its entirety.
6330

6331
2. %%hashed%% - As hash tables.
6332
This method is slightly less effective than the first one. The dictionary is also loaded to RAM in its entirety, and can contain any number of items with any identifiers. In practice, it makes sense to use up to tens of millions of items, while there is enough RAM.
6333
All types of sources are supported. When updating, data (from a file or from a table) is read in its entirety.
6334

6335
3. %%cache%% - This is the least effective method. It is appropriate if the dictionary doesn&#39;t fit in RAM. It is a cache of a fixed number of cells, where frequently-used data can be located. MySQL and ClickHouse sources are supported, but file sources are not supported. When searching a dictionary, the cache is searched first. For each data block, all keys not found in the cache (or expired keys) are collected in a package, which is sent to the source with the query %%SELECT attrs... FROM db.table WHERE id IN (k1, k2, ...)%%. The received data is then written to the cache.
6336

6337
We recommend using the flat method when possible, or hashed. The speed of the dictionaries is impeccable with this type of memory storage.
6338

6339
Use the cache method only in cases when it is unavoidable. The speed of the cache depends strongly on correct settings and the usage scenario. A cache type dictionary only works normally for high enough hit rates (recommended 99% and higher). You can view the average hit rate in the system.dictionaries table. Set a large enough cache size. You will need to experiment to find the right number of cells - select a value, use a query to get the cache completely full, look at the memory consumption (this information is in the system.dictionaries table), then proportionally increase the number of cells so that a reasonable amount of memory is consumed. We recommend MySQL as the source for the cache, because ClickHouse doesn&#39;t handle requests with random reads very well.
6340

6341
In all cases, performance is better if you call the function for working with a dictionary after GROUP BY, and if the attribute being fetched is marked as injective. For a dictionary cache, performance improves if you call the function after LIMIT. To do this, you can use a subquery with LIMIT, and call the function with the dictionary from the outside.
6342

6343
An attribute is called injective if different attribute values correspond to different keys. So when GROUP BY uses a function that fetches an attribute value by the key, this function is automatically taken out of GROUP BY.
6344

6345 6346
When updating dictionaries from a file, first the file modification time is checked, and it is loaded only if the file has changed.
When updating from MySQL, for flat and hashed dictionaries, first a SHOW TABLE STATUS query is made, and the table update time is checked. If it is not NULL, it is compared to the stored time. This works for MyISAM tables, but for InnoDB tables the update time is unknown, so loading from InnoDB is performed on each update.
6347

6348
For cache dictionaries, the expiration (lifetime) of data in the cache can be set. If more time than &#39;lifetime&#39; has passed since loading the data in a cell, the cell&#39;s value is not used, and it is re-requested the next time it needs to be used.
6349

6350
If a dictionary couldn&#39;t be loaded even once, an attempt to use it throws an exception.
6351
If an error occurred during a request to a cached source, an exception is thrown.
6352
Dictionary updates (other than loading for first use) do not block queries. During updates, the old version of a dictionary is used. If an error occurs during an update, the error is written to the server log, and queries continue using the old version of dictionaries.
6353

6354
You can view the list of external dictionaries and their status in the system.dictionaries table.
6355

6356
To use external dictionaries, see the section &quot;Functions for working with external dictionaries&quot;.
6357

6358
Note that you can convert values for a small dictionary by specifying all the contents of the dictionary directly in a SELECT query (see the section &quot;transform function&quot;). This functionality is not related to external dictionaries.
6359 6360 6361


</div>
6362
<div class="island">
6363 6364
<h1>Settings</h1>
</div>
6365
<div class="island content">
6366

6367
In this section, we review settings that you can make using a SET query or in a config file. Remember that these settings can be set for a session or globally. Settings that can only be made in the server config file are not covered here.
6368 6369


6370
==max_block_size==
6371

6372
In ClickHouse, data is processed by blocks (sets of column parts). The internal processing cycles for a single block are efficient enough, but there are noticeable expenditures on each block. &#39;max_block_size&#39; is a recommendation for what size of block (in number of rows) to load from tables. The block size shouldn&#39;t be too small, so that the expenditures on each block are still noticeable, but not too large, so that the query with LIMIT that is completed after the first block is processed quickly, so that too much memory isn&#39;t consumed when extracting a large number of columns in multiple threads, and so that at least some cache locality is preserved.
6373

6374
By default, it is 65,536.
6375

6376
Blocks the size of &#39;max_block_size&#39; are not always loaded from the table. If it is obvious that less data needs to be retrieved, a smaller block is processed.
6377 6378


6379
==max_insert_block_size==
6380

6381
The size of blocks to form for insertion into a table.
6382 6383 6384
This setting only applies in cases when the server forms the blocks.
For example, for an INSERT via the HTTP interface, the server parses the data format and forms blocks of the specified size.
But when using clickhouse-client, the client parses the data itself, and the &#39;max_insert_block_size&#39; setting on the server doesn&#39;t affect the size of the inserted blocks.
6385
The setting also doesn&#39;t have a purpose when using INSERT SELECT, since data is inserted in the same blocks that are formed after SELECT.
6386

6387
By default, it is 1,048,576.
6388

6389
This is slightly more than &#39;max_block_size&#39;. The reason for this is because certain table engines (*MergeTree) form a data part on the disk for each inserted block, which is a fairly large entity. Similarly, *MergeTree tables sort data during insertion, and a large enough block size allows sorting more data in RAM.
6390 6391


6392
==max_threads==
6393

6394 6395
The maximum number of query processing threads
- excluding threads for retrieving data from remote servers (see the &#39;max_distributed_connections&#39; parameter).
6396

6397 6398
This parameter applies to threads that perform the same stages of the query execution pipeline in parallel.
For example, if reading from a table, evaluating expressions with functions, filtering with WHERE and pre-aggregating for GROUP BY can all be done in parallel using at least &#39;max_threads&#39; number of threads, then &#39;max_threads&#39; are used.
6399

6400
By default, 8.
6401

6402
If less than one SELECT query is normally run on a server at a time, set this parameter to a value slightly less than the actual number of processor cores.
6403

6404
For queries that are completed quickly because of a LIMIT, you can set a lower &#39;max_threads&#39;. For example, if the necessary number of entries are located in every block and max_threads = 8, 8 blocks are retrieved, although it would have been enough to read just one.
6405

6406
The smaller the &#39;max_threads&#39; value, the less memory is consumed.
6407 6408


6409
==max_compress_block_size==
6410

6411
The maximum size of blocks of uncompressed data before compressing for writing to a table. By default, 1,048,576 (1 MiB). If the size is reduced, the compression rate is significantly reduced, the compression and decompression speed increases slightly due to cache locality, and memory consumption is reduced. There usually isn&#39;t any reason to change this setting.
6412

6413
Don&#39;t confuse blocks for compression (a chunk of memory consisting of bytes) and blocks for query processing (a set of rows from a table).
6414 6415


6416
==min_compress_block_size==
6417

6418
For *MergeTree tables. In order to reduce latency when processing queries, a block is compressed when writing the next mark if its size is at least &#39;min_compress_block_size&#39;. By default, 65,536.
6419

6420
The actual size of the block, if the uncompressed data less than &#39;max_compress_block_size&#39; is no less than this value and no less than the volume of data for one mark.
6421

6422
Let&#39;s look at an example. Assume that &#39;index_granularity&#39; was set to 8192 during table creation.
6423

6424
We are writing a UInt32-type column (4 bytes per value). When writing 8192 rows, the total will be 32 KB of data. Since min_compress_block_size = 65,536, a compressed block will be formed for every two marks.
6425

6426
We are writing a URL column with the String type (average size of 60 bytes per value). When writing 8192 rows, the average will be slightly less than 500 KB of data. Since this is more than 65,536, a compressed block will be formed for each mark. In this case, when reading data from the disk in the range of a single mark, extra data won&#39;t be decompressed.
6427

6428
There usually isn&#39;t any reason to change this setting.
6429 6430


6431
==max_query_size==
6432

6433 6434
The maximum part of a query that can be taken to RAM for parsing with the SQL parser.
The INSERT query also contains data for INSERT that is processed by a separate stream parser (that consumes O(1) RAM), which is not included in this restriction.
6435

6436
By default, 64 KiB.
6437 6438


6439
==interactive_delay==
6440

6441 6442
The interval in microseconds for checking whether request execution has been canceled and sending the progress.
By default, 100,000 (check for canceling and send progress ten times per second).
6443 6444


6445 6446 6447
==connect_timeout==
==receive_timeout==
==send_timeout==
6448

6449 6450
Timeouts in seconds on the socket used for communicating with the client.
By default, 10, 300, 300.
6451 6452


6453
==poll_interval==
6454

6455 6456
Lock in a wait loop for the specified number of seconds.
By default, 10.
6457 6458


6459
==max_distributed_connections==
6460

6461
The maximum number of simultaneous connections with remote servers for distributed processing of a single query to a single Distributed table. We recommend setting a value no less than the number of servers in the cluster.
6462

6463
By default, 100.
6464 6465


6466
The following parameters are only used when creating Distributed tables (and when launching a server), so there is no reason to change them at runtime.
6467

6468
==distributed_connections_pool_size==
6469

6470
The maximum number of simultaneous connections with remote servers for distributed processing of all queries to a single Distributed table. We recommend setting a value no less than the number of servers in the cluster.
6471

6472
By default, 128.
6473 6474


6475
==connect_timeout_with_failover_ms==
6476

6477
The timeout in milliseconds for connecting to a remote server for a Distributed table engine, if the &#39;shard&#39; and &#39;replica&#39; sections are used in the cluster definition.
6478
If unsuccessful, several attempts are made to connect to various replicas.
6479
By default, 50.
6480 6481


6482
==connections_with_failover_max_tries==
6483

6484 6485
The maximum number of connection attempts with each replica, for the Distributed table engine.
By default, 3.
6486 6487


6488
==extremes==
6489

6490
Whether to count extreme values (the minimums and maximums in columns of a query result).
6491
Accepts 0 or 1. By default, 0 (disabled).
6492
For more information, see the section &quot;Extreme values&quot;.
6493 6494


6495
==use_uncompressed_cache==
6496

6497 6498
Whether to use a cache of uncompressed blocks. Accepts 0 or 1. By default, 0 (disabled).
The uncompressed cache (only for tables in the MergeTree family) allows significantly reducing latency and increasing throughput when working with a large number of short queries. Enable this setting for users who send frequent short requests. Also pay attention to the &#39;uncompressed_cache_size&#39; configuration parameter (only set in the config file) - the size of uncompressed cache blocks. By default, it is 8 GiB. The uncompressed cache is filled in as needed; the least-used data is automatically deleted.
6499

6500
For queries that read at least a somewhat large volume of data (one million rows or more), the uncompressed cache is disabled automatically in order to save space for truly small queries. So you can keep the &#39;use_uncompressed_cache&#39; setting always set to 1.
6501 6502


6503
==replace_running_query==
6504

6505 6506
When using the HTTP interface, the &#39;query_id&#39; parameter can be passed. This is any string that serves as the query identifier.
If a query from the same user with the same &#39;query_id&#39; already exists at this time, the behavior depends on the &#39;replace_running_query&#39; parameter.
6507

6508 6509
0 (default) - Throw an exception (don&#39;t allow the query to run if a query with the same &#39;query_id&#39; is already running).
1 - Cancel the old query and start running the new one.
6510

6511
Yandex.Metrica uses this parameter set to 1 for implementing suggestions for segmentation conditions. After entering the next character, if the old query hasn&#39;t finished yet, it should be canceled.
6512 6513


6514
==load_balancing==
6515

6516
Which replicas (among healthy replicas) to preferably send a query to (on the first attempt) for distributed processing.
6517

6518
<b>random</b> (default)
6519

6520 6521
The number of errors is counted for each replica. The query is sent to the replica with the fewest errors, and if there are several of these, to any one of them.
Disadvantages: Server proximity is not accounted for; if the replicas have different data, you will also get different data.
6522

6523
<b>nearest_hostname</b>
6524

6525
The number of errors is counted for each replica. Every 5 minutes, the number of errors is integrally divided by 2. Thus, the number of errors is calculated for a recent time with exponential smoothing. If there is one replica with a minimal number of errors (i.e. errors occurred recently on the other replicas), the query is sent to it. If there are multiple replicas with the same minimal number of errors, the query is sent to the replica with a host name that is most similar to the server&#39;s host name in the config file (for the number of different characters in identical positions, up to the minimum length of both host names).
6526

6527 6528
As an example, example01-01-1 and example01-01-2.yandex.ru are different in one position, while example01-01-1 and example01-02-2 differ in two places.
This method might seem a little stupid, but it doesn&#39;t use external data about network topology, and it doesn&#39;t compare IP addresses, which would be complicated for our IPv6 addresses.
6529

6530 6531
Thus, if there are equivalent replicas, the closest one by name is preferred.
We can also assume that when sending a query to the same server, in the absence of failures, a distributed query will also go to the same servers. So even if different data is placed on the replicas, the query will return mostly the same results.
6532

6533
<b>in_order</b>
6534

6535
Replicas are accessed in the same order as they are specified. The number of errors does not matter. This method is appropriate when you know exactly which replica is preferable.
6536 6537


6538
==totals_mode==
6539

6540 6541
How to calculate TOTALS when HAVING is present, as well as when max_rows_to_group_by and group_by_overflow_mode = &#39;any&#39; are present.
See the section &quot;WITH TOTALS modifier&quot;.
6542

6543
==totals_auto_threshold==
6544

6545 6546
The threshold for totals_mode = &#39;auto&#39;.
See the section &quot;WITH TOTALS modifier&quot;.
6547 6548


6549
==default_sample==
6550

6551
A floating-point number from 0 to 1. By default, 1.
6552 6553
Allows setting a default sampling coefficient for all SELECT queries.
(For tables that don&#39;t support sampling, an exception will be thrown.)
6554
If set to 1, default sampling is not performed.
6555 6556


6557
==Restrictions on query complexity==
6558

6559
Restrictions on query complexity are part of the settings.
6560 6561
They are used in order to provide safer execution from the user interface.
Almost all the restrictions only apply to SELECTs.
6562
For distributed query processing, restrictions are applied on each server separately.
6563

6564
Restrictions on the &quot;maximum amount of something&quot; can take the value 0, which means &quot;unrestricted&quot;.
6565 6566 6567 6568
Most restrictions also have an &#39;overflow_mode&#39; setting, meaning what to do when the limit is exceeded.
It can take one of two values: &#39;throw&#39; or &#39;break&#39;. Restrictions on aggregation (group_by_overflow_mode) also have the value &#39;any&#39;.
throw - Throw an exception (default).
break - Stop executing the query and return the partial result, as if the source data ran out.
6569
any (only for group_by_overflow_mode) - Continuing aggregation for the keys that got into the set, but don&#39;t add new keys to the set.
6570 6571


6572
===readonly===
6573

6574
If set to 1, run only queries that don&#39;t change data or settings.
6575
As an example, SELECT and SHOW queries are allowed, but INSERT and SET are forbidden.
6576
After you write %%SET readonly = 1%%, you can&#39;t disable readonly mode in the current session.
6577

6578
When using the GET method in the HTTP interface, &#39;readonly = 1&#39; is set automatically. In other words, for queries that modify data, you can only use the POST method. You can send the query itself either in the POST body, or in the URL parameter.
6579

6580
===max_memory_usage===
6581

6582
The maximum amount of memory consumption when running a query on a single server. By default, 10 GB.
6583

6584
The setting doesn&#39;t consider the volume of available memory or the total volume of memory on the machine.
6585 6586
The restriction applies to a single query within a single server.
You can use SHOW PROCESSLIST to see the current memory consumption for each query.
6587
In addition, the peak memory consumption is tracked for each query and written to the log.
6588

6589
Certain cases of memory consumption are not tracked:
6590
- Large constants (for example, a very long string constant).
6591
- The states of &#39;groupArray&#39; aggregate functions, and also &#39;quantile&#39; (it is tracked for &#39;quantileTiming&#39;).
6592

6593
Memory consumption is not fully considered for aggregate function states &#39;min&#39;, &#39;max&#39;, &#39;any&#39;, &#39;anyLast&#39;, &#39;argMin&#39;, and &#39;argMax&#39; from String and Array arguments.
6594 6595


6596
===max_rows_to_read===
6597

6598 6599
The following restrictions can be checked on each block (instead of on each row). That is, the restrictions can be broken a little.
When running a query in multiple threads, the following restrictions apply to each thread separately.
6600

6601
Maximum number of rows that can be read from a table when running a query.
6602

6603
===max_bytes_to_read===
6604

6605
Maximum number of bytes (uncompressed data) that can be read from a table when running a query.
6606

6607
===read_overflow_mode===
6608

6609
What to do when the volume of data read exceeds one of the limits: &#39;throw&#39; or &#39;break&#39;. By default, throw.
6610

6611
===max_rows_to_group_by===
6612

6613
Maximum number of unique keys received from aggregation. This setting lets you limit memory consumption when aggregating.
6614

6615
===group_by_overflow_mode===
6616

6617 6618
What to do when the number of unique keys for aggregation exceeds the limit: &#39;throw&#39;, &#39;break&#39;, or &#39;any&#39;. By default, throw.
Using the &#39;any&#39; value lets you run an approximation of GROUP BY. The quality of this approximation depends on the statistical nature of the data.
6619

6620
===max_rows_to_sort===
6621

6622
Maximum number of rows before sorting. This allows you to limit memory consumption when sorting.
6623

6624
===max_bytes_to_sort===
6625

6626
Maximum number of bytes before sorting.
6627

6628
===sort_overflow_mode===
6629

6630
What to do if the number of rows received before sorting exceeds one of the limits: &#39;throw&#39; or &#39;break&#39;. By default, throw.
6631

6632
===max_result_rows===
6633

6634
Limit on the number of rows in the result. Also checked for subqueries, and on remote servers when running parts of a distributed query.
6635

6636
===max_result_bytes===
6637

6638
Limit on the number of bytes in the result. The same as the previous setting.
6639

6640
===result_overflow_mode===
6641

6642 6643
What to do if the volume of the result exceeds one of the limits: &#39;throw&#39; or &#39;break&#39;. By default, throw.
Using &#39;break&#39; is similar to using LIMIT.
6644

6645
===max_execution_time===
6646

6647 6648
Maximum query execution time in seconds.
At this time, it is not checked for one of the sorting stages, or when merging and finalizing aggregate functions.
6649

6650
===timeout_overflow_mode===
6651

6652
What to do if the query is run longer than &#39;max_execution_time&#39;: &#39;throw&#39; or &#39;break&#39;. By default, throw.
6653

6654
===min_execution_speed===
6655

6656
Minimal execution speed in rows per second. Checked on every data block when &#39;timeout_before_checking_execution_speed&#39; expires. If the execution speed is lower, an exception is thrown.
6657

6658
===timeout_before_checking_execution_speed===
6659

6660
Checks that execution speed is not too slow (no less than &#39;min_execution_speed&#39;), after the specified time in seconds has expired.
6661

6662
===max_columns_to_read===
6663

6664
Maximum number of columns that can be read from a table in a single query. If a query requires reading a greater number of columns, it throws an exception.
6665

6666
===max_temporary_columns===
6667

6668
Maximum number of temporary columns that must be kept in RAM at the same time when running a query, including constant columns. If there are more temporary columns than this, it throws an exception.
6669

6670
===max_temporary_non_const_columns===
6671

6672 6673
The same thing as &#39;max_temporary_columns&#39;, but without counting constant columns.
Note that constant columns are formed fairly often when running a query, but they require approximately zero computing resources.
6674

6675
===max_subquery_depth===
6676

6677
Maximum nesting depth of subqueries. If subqueries are deeper, an exception is thrown. By default, 100.
6678

6679
===max_pipeline_depth===
6680

6681
Maximum pipeline depth. Corresponds to the number of transformations that each data block goes through during query processing. Counted within the limits of a single server. If the pipeline depth is greater, an exception is thrown. By default, 1000.
6682

6683
===max_ast_depth===
6684

6685
Maximum nesting depth of a query syntactic tree. If exceeded, an exception is thrown. At this time, it isn&#39;t checked during parsing, but only after parsing the query. That is, a syntactic tree that is too deep can be created during parsing, but the query will fail. By default, 1000.
6686

6687
===max_ast_elements===
6688

6689 6690
Maximum number of elements in a query syntactic tree. If exceeded, an exception is thrown.
In the same way as the previous setting, it is checked only after parsing the query. By default, 10,000.
6691

6692
===max_rows_in_set===
6693

6694
Maximum number of rows for a data set in the IN clause created from a subquery.
6695

6696
===max_bytes_in_set===
6697

6698
Maximum number of bytes (uncompressed data) used by a set in the IN clause created from a subquery.
6699

6700
===set_overflow_mode===
6701

6702
What to do when the amount of data exceeds one of the limits: &#39;throw&#39; or &#39;break&#39;. By default, throw.
6703

6704
===max_rows_in_distinct===
6705

6706
Maximum number of different rows when using DISTINCT.
6707

6708
===max_bytes_in_distinct===
6709

6710
Maximum number of bytes used by a hash table when using DISTINCT.
6711

6712
===distinct_overflow_mode===
6713

6714
What to do when the amount of data exceeds one of the limits: &#39;throw&#39; or &#39;break&#39;. By default, throw.
6715

6716
===max_rows_to_transfer===
6717

6718
Maximum number of rows that can be passed to a remote server or saved in a temporary table when using GLOBAL IN.
6719

6720
===max_bytes_to_transfer===
6721

6722
Maximum number of bytes (uncompressed data) that can be passed to a remote server or saved in a temporary table when using GLOBAL IN.
6723

6724
===transfer_overflow_mode===
6725

6726
What to do when the amount of data exceeds one of the limits: &#39;throw&#39; or &#39;break&#39;. By default, throw.
6727 6728


6729
==Settings profiles==
6730

6731 6732
A settings profile is a collection of settings grouped under the same name. Each ClickHouse user has a profile.
To apply all the settings in a profile, set &#39;profile&#39;. Example:
6733

6734
%%
6735
SET profile = &#39;web&#39;
6736
%%
6737

6738
- Load the &#39;web&#39; profile. That is, set all the options belonging to the &#39;web&#39; profile.
6739

6740 6741
Settings profiles are declared in the user config file. This is normally &#39;users.xml&#39;.
Example:
6742

6743
%%
6744 6745 6746 6747 6748 6749 6750 6751 6752 6753 6754 6755 6756 6757 6758 6759 6760 6761 6762 6763 6764 6765 6766 6767 6768 6769 6770 6771 6772 6773 6774
&lt;!-- Settings profiles. -->
&lt;profiles>
	&lt;!-- Default settings -->
	&lt;default>
		&lt;!-- Maximum number of threads for executing a single query. -->
		&lt;max_threads>8&lt;/max_threads>
	&lt;/default>
	&lt;!-- Settings for queries from the user interface -->
	&lt;web>
		&lt;max_rows_to_read>1000000000&lt;/max_rows_to_read>
		&lt;max_bytes_to_read>100000000000&lt;/max_bytes_to_read>
		&lt;max_rows_to_group_by>1000000&lt;/max_rows_to_group_by>
		&lt;group_by_overflow_mode>any&lt;/group_by_overflow_mode>
		&lt;max_rows_to_sort>1000000&lt;/max_rows_to_sort>
		&lt;max_bytes_to_sort>1000000000&lt;/max_bytes_to_sort>
		&lt;max_result_rows>100000&lt;/max_result_rows>
		&lt;max_result_bytes>100000000&lt;/max_result_bytes>
		&lt;result_overflow_mode>break&lt;/result_overflow_mode>
		&lt;max_execution_time>600&lt;/max_execution_time>
		&lt;min_execution_speed>1000000&lt;/min_execution_speed>
		&lt;timeout_before_checking_execution_speed>15&lt;/timeout_before_checking_execution_speed>
		&lt;max_columns_to_read>25&lt;/max_columns_to_read>
		&lt;max_temporary_columns>100&lt;/max_temporary_columns>
		&lt;max_temporary_non_const_columns>50&lt;/max_temporary_non_const_columns>
		&lt;max_subquery_depth>2&lt;/max_subquery_depth>
		&lt;max_pipeline_depth>25&lt;/max_pipeline_depth>
		&lt;max_ast_depth>50&lt;/max_ast_depth>
		&lt;max_ast_elements>100&lt;/max_ast_elements>
		&lt;readonly>1&lt;/readonly>
	&lt;/web>
&lt;/profiles>
6775
%%
6776

6777
In the example, two profiles are set: &#39;default&#39; and &#39;web&#39;. The &#39;default&#39; profile has a special purpose - it must always be present and is applied when starting the server. In other words, the &#39;default&#39; profile contains default settings. The &#39;web&#39; profile is a regular profile that can be set using the SET query or using a URL parameter in an HTTP query.
6778

6779
Settings profiles can inherit from each other. To use inheritance, indicate the &#39;profile&#39; setting before the other settings that are listed in the profile.
6780 6781

</div>
6782
<div class="island">
6783 6784
<h1>Configuration files</h1>
</div>
6785
<div class="island content">
6786

6787
The main server config file is &#39;config.xml&#39;. It resides in the /etc/clickhouse-server/ directory.
6788

6789
Certain settings can be overridden in the *.xml and *.conf files from the &#39;conf.d&#39; and &#39;config.d&#39; directories next to the config.
6790 6791 6792
The &#39;replace&#39; and &#39;remove&#39; attributes can be specified for the elements of these config files.
If neither is specified, it combines the contents of elements recursively, replacing values of duplicate children.
If &#39;replace&#39; is specified, it replaces the entire element with the specified one.
6793
If &#39;remove&#39; is specified, it deletes the element.
6794

6795
The config can also define &quot;substitutions&quot;. If an element has the &#39;incl&#39; attribute, the corresponding substitution from the file will be used as the value. By default, the path to the file with substitutions is &#39;/etc/metrika.xml&#39;. This can be changed in the config in the &#39;include_from&#39; element. The substitution values are specified in  &#39;/yandex/<i>substitution_name</i>&#39; elements of this file.
6796

6797
The &#39;config.xml&#39; file can specify a separate config with user settings, profiles, and quotas. The relative path to this config is set in the &#39;users_config&#39; element. By default, it is &#39;users.xml&#39;. If &#39;users_config&#39; is omitted, the user settings, profiles, and quotas are specified directly in &#39;config.xml&#39;. The server tracks changes to &#39;users_config&#39; and reloads it in runtime. That is, you can add or change users and their settings without relaunching the server.
6798

6799 6800 6801
For &#39;users.config&#39;, overrides and substitutions may also exist in files from the &#39;<i>users_config</i>.d&#39; directory (for example, &#39;users.d&#39;). Note that the server tracks updates only directly in the &#39;users.xml&#39; file, so all the possible overrides are not updated in runtime.

For each config file, the server also generates <i>file</i>-preprocessed.xml files on launch. These files contain all the completed substitutions and overrides, and they are intended for informational use. The server itself does not use these files, and you do not need to edit them.
6802 6803 6804


</div>
6805
<div class="island">
6806 6807
<h1>Access rights</h1>
</div>
6808
<div class="island content">
6809

6810
Users and access rights are set up in the user config. This is usually &#39;users.xml&#39;.
6811

6812
Users are recorded in the &#39;users&#39; section. Let&#39;s look at part of the &#39;users.xml&#39; file:
6813

6814
%%
6815 6816 6817 6818 6819 6820 6821 6822 6823 6824 6825 6826 6827 6828 6829 6830 6831 6832 6833 6834 6835 6836 6837 6838 6839 6840 6841 6842 6843 6844 6845 6846
&lt;!-- Users and ACL. -->
&lt;users>
	&lt;!-- If the username is not specified, the default user is used. -->
	&lt;default>
		&lt;!-- Password (in plaintext). May be empty. -->
		&lt;password>&lt;/password>

		&lt;!-- List of networks that access is allowed from. Each list item has one of the following forms:
			&lt;ip> IP address or subnet mask. For example, 222.111.222.3 or 10.0.0.1/8 or 2a02:6b8::3 or 2a02:6b8::3/64.
			&lt;host> Host name. Example: example01. A DNS query is made for verification, and all received address are compared to the client address.
			&lt;host_regexp> Regex for host names. For example, ^example\d\d-\d\d-\d\.yandex\.ru$
				A DNS PTR query is made to verify the client address and the regex is applied to the result.
				Then another DNS query is made for the result of the PTR query, and all received address are compared to the client address.
				We strongly recommend that the regex ends with \.yandex\.ru$. If you are installing ClickHouse independently, here you should specify:
			&lt;networks>
				&lt;ip>::/0&lt;/ip>
			&lt;/networks> -->

		&lt;networks incl=&quot;networks&quot; />
		&lt;!-- Settings profile for the user. -->
		&lt;profile>default&lt;/profile>
		&lt;!-- Quota for the user. -->
		&lt;quota>default&lt;/quota>
	&lt;/default>

	&lt;!-- For queries from the user interface. -->
	&lt;web>
		&lt;password>&lt;/password>
		&lt;networks incl=&quot;networks&quot; />
		&lt;profile>web&lt;/profile>
		&lt;quota>default&lt;/quota>
	&lt;/web>
6847
%%
6848

6849 6850
Here we can see that two users are declared: &#39;default&#39; and &#39;web&#39;. We added the &#39;web&#39; user ourselves.
The &#39;default&#39; user is chosen in cases when the username is not passed, so this user must be present in the config file. The &#39;default&#39; user is also used for distributed query processing - the system accesses remote servers under this username. So the &#39;default&#39; user must have an empty password and must not have substantial restrictions or quotas - otherwise, distributed queries will fail.
6851

6852
The password is specified in plain text directly in the config. In this regard, you should not consider these passwords as providing security against potential malicious attacks. Rather, they are necessary for protection from Yandex employees.
6853

6854
A list of networks is specified that access is allowed from. In this example, the list of networks for both users is loaded from a separate file (/etc/metrika.xml) containing the &#39;networks&#39; substitution. Here is a fragment of it:
6855

6856
%%
6857 6858 6859 6860 6861 6862 6863 6864 6865
&lt;yandex>
	...
	&lt;networks>
		&lt;ip>::/64&lt;/ip>
		&lt;ip>93.158.111.111/26&lt;/ip>
		&lt;ip>2a02:6b8:0:1::/64&lt;/ip>
	...
	&lt;/networks>
&lt;/yandex>
6866
%%
6867

6868
We could have defined this list of networks directly in &#39;users.xml&#39;, or in a file in the &#39;users.d&#39; directory (for more information, see the section &quot;Configuration files&quot;).
6869

6870
The config includes comments explaining how to open access from everywhere.
6871

6872
For use in production, only specify IP elements (IP addresses and their masks), since using &#39;host&#39; and &#39;hoost_regexp&#39; might cause extra latency.
6873

6874
Next the user settings profile is specified (see the section &quot;Settings profiles&quot;). You can specify the default profile, &#39;default&#39;. The profile can have any name. You can specify the same profile for different users. The most important thing you can write in the settings profile is &#39;readonly&#39; set to 1, which provides read-only access.
6875

6876
After this, the quota is defined (see the section &quot;Quotas&quot;). You can specify the default quota, &#39;default&#39;. It is set in the config by default so that it only counts resource usage, but does not restrict it. The quota can have any name. You can specify the same quota for different users - in this case, resource usage is calculated for each user individually.
6877 6878

</div>
6879
<div class="island">
6880 6881
<h1>Quotas</h1>
</div>
6882
<div class="island content">
6883

6884 6885
Quotas allow you to limit resource usage over a period of time, or simply track the use of resources.
Quotas are set up in the user config. This is usually &#39;users.xml&#39;.
6886

6887
The system also has a feature for limiting the complexity of a single query (see the section &quot;Restrictions on query complexity&quot;).
6888 6889
In contrast to query complexity restrictions, quotas:
- place restrictions on a set of queries that can be run over a period of time, instead of limiting a single query.
6890
- account for resources spent on all remote servers for distributed query processing.
6891

6892
Let&#39;s look at the section of the &#39;users.xml&#39; file that defines quotas.
6893

6894
%%
6895 6896 6897 6898 6899 6900 6901 6902 6903 6904 6905 6906 6907 6908 6909 6910 6911
&lt;!-- Quotas. -->
&lt;quotas>
	&lt;!-- Quota name. -->
	&lt;default>
		&lt;!-- Restrictions for a time period. You can set multiple time intervals with various restrictions. -->
		&lt;interval>
			&lt;!-- Length of time. -->
			&lt;duration>3600&lt;/duration>

			&lt;!-- No restrictions. Just collect data for the specified time interval. -->
			&lt;queries>0&lt;/queries>
			&lt;errors>0&lt;/errors>
			&lt;result_rows>0&lt;/result_rows>
			&lt;read_rows>0&lt;/read_rows>
			&lt;execution_time>0&lt;/execution_time>
		&lt;/interval>
	&lt;/default>
6912
%%
6913

6914
By default, the quota just tracks resource consumption for each hour, without limiting usage.
6915

6916
%%
6917 6918 6919 6920 6921 6922 6923 6924 6925 6926 6927 6928 6929 6930 6931 6932 6933 6934 6935 6936
&lt;statbox>
	&lt;!-- Restrictions for a time period. You can set multiple time intervals with various restrictions. -->
	&lt;interval>
		&lt;!-- Length of time.-->
		&lt;duration>3600&lt;/duration>
		&lt;queries>1000&lt;/queries>
		&lt;errors>100&lt;/errors>
		&lt;result_rows>1000000000&lt;/result_rows>
		&lt;read_rows>100000000000&lt;/read_rows>
		&lt;execution_time>900&lt;/execution_time>
	&lt;/interval>
	&lt;interval>
		&lt;duration>86400&lt;/duration>
		&lt;queries>10000&lt;/queries>
		&lt;errors>1000&lt;/errors>
		&lt;result_rows>5000000000&lt;/result_rows>
		&lt;read_rows>500000000000&lt;/read_rows>
		&lt;execution_time>7200&lt;/execution_time>
	&lt;/interval>
&lt;/statbox>
6937
%%
6938

6939
For the &#39;statbox&#39; quota, restrictions are set for every hour and for every 24 hours (86,400 seconds). The time interval is counted starting from an implementation-defined fixed moment in time. In other words, the 24-hour interval doesn&#39;t necessarily begin at midnight.
6940

6941
When the interval ends, all collected values are cleared. For the next hour, the quota calculation starts over.
6942

6943
Let&#39;s examine the amounts that can be restricted:
6944

6945
<b>queries</b> - The overall number of queries.
6946 6947 6948
<b>errors</b> - The number of queries that threw exceptions.
<b>result_rows</b> - The total number of rows output in results.
<b>read_rows</b> - The total number of source rows retrieved from tables for running a query, on all remote servers.
6949
<b>execution_time</b> - The total time of query execution, in seconds (wall time).
6950

6951
If the limit is exceeded for at least one time interval, an exception is thrown with a text about which restriction was exceeded, for which interval, and when the new interval begins (when queries can be sent again).
6952

6953
Quotas can use the &quot;quota key&quot; feature in order to report on resources for multiple keys independently. Here is an example of this:
6954

6955 6956 6957 6958 6959 6960 6961 6962 6963 6964
%%
&lt;!-- For the global report builder. -->
&lt;web_global>
	&lt;!-- keyed - the quota_key &quot;key&quot; is passed in the query parameter, and the quota is tracked separately for each key value.
	For example, you can pass a Metrica username as the key, so the quota will be counted separately for each username.
	Using keys makes sense only if quota_key is transmitted by the program, not by a user.
	You can also write &lt;keyed_by_ip /> so the IP address is used as the quota key.
	(But keep in mind that users can change the IPv6 address fairly easily.) -->
	&lt;keyed />
%%
6965

6966
The quota is assigned to users in the &#39;users&#39; section of the config. See the section &quot;Access rights&quot;.
6967

6968
For distributed query processing, the accumulated amounts are stored on the requestor server. So if the user goes to another server, the quota there will &quot;start over&quot;.
6969

6970
When the server is restarted, quotas are reset.
6971 6972 6973 6974

</div>


6975
<div class="informer">
6976 6977 6978 6979 6980 6981 6982
<!-- Yandex.Metrica informer -->
<a href="https://metrika.yandex.ru/stat/?id=18343495&amp;from=informer"
target="_blank" rel="nofollow"><img src="https://bs.yandex.ru/informer/18343495/2_1_FFFFFFFF_EFEFEFFF_0_pageviews"
style="width:80px; height:31px; border:0;" alt="Yandex.Metrica" title="Yandex.Metrica: data for today (pageviews)" onclick="try{Ya.Metrika.informer({i:this,id:18343495,type:0,lang:'ru'});return false}catch(e){}"/></a>
<!-- /Yandex.Metrica informer -->
</div>

6983
<script type="text/javascript">
6984

6985 6986 6987 6988 6989 6990 6991 6992 6993 6994 6995 6996 6997 6998 6999 7000 7001 7002 7003 7004 7005 7006 7007 7008 7009 7010 7011 7012 7013
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    if (set_of_anchors[anchor] === undefined) {
        set_of_anchors[anchor] = 0;
    }

    ++set_of_anchors[anchor];

    if (set_of_anchors[anchor] > 1) {
        anchor += set_of_anchors[anchor];
    }

	var trigrams = getTrigrams(anchor);
	for (var i in trigrams) {
		if (trigram_to_anchor[trigrams[i]] === undefined) {
			trigram_to_anchor[trigrams[i]] = [];
		}
		trigram_to_anchor[trigrams[i]].push(anchor);
	}

7079
    elem.before($('<a href="#' + anchor + '" class="head-anchor" name="' + anchor + '">⚓<\/a>'));
7080

7081
    contents.push('<a href="#' + anchor + '" class="contents-element" style="margin-left:' + margin + 'em">' + text + '<\/a><br \/>');
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});

$('#contents').html(contents.join(''));


// Найти по триграмному индексу лучший anchor для текста.
function findBestAnchor(s) {
	s = s.toLowerCase();
	var trigrams = getTrigrams(s);
	var anchors_score = {};

	for (var i in trigrams) {
		if (trigram_to_anchor.hasOwnProperty(trigrams[i])) {
			for (var j in trigram_to_anchor[trigrams[i]]) {
				if (anchors_score[trigram_to_anchor[trigrams[i]][j]] === undefined) {
					anchors_score[trigram_to_anchor[trigrams[i]][j]] = 0;
				}
				anchors_score[trigram_to_anchor[trigrams[i]][j]] += 1.0 / Math.sqrt(trigram_to_anchor[trigrams[i]][j].length);
			}
		}
	}

	var anchors_matched = [];
	for (var name in anchors_score) {
		anchors_matched.push({ name : name, score : anchors_score[name] });
	}

	anchors_matched.sort(function(a, b) { return b.score - a.score; });
//	console.log(anchors_matched);
	return anchors_matched[0].name;
}


$('p').each(function() {
    var elem = $(this);
    var text = elem.text();

    var match = text.match(/(?:разделе?|sections?|see(?: the)?) "([^"]+?)"/i);
    if (match) {
		elem.html(elem.html().replace(/((?:разделе?|sections?|see(?: the)?) ")([^"]+?)\d?(")/i, '$1<a href="#' + findBestAnchor(match[1]) + '">$2</a>$3'));
    }
});

// Если человек пришёл по ссылке с именем раздела в хэше, а этого раздела не существует, то найдём лучший раздел по триграмному индексу.
if (location.hash.length > 1) {
	var queried = decodeURIComponent(location.hash.substring(1));
	if (!set_of_anchors.hasOwnProperty(queried)) {
		location.hash = "#" + findBestAnchor(queried);
	}
}


</script>

    </body>
</html>