formats.md 68.6 KB
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---
toc_priority: 21
toc_title: Input and Output Formats
---

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# Formats for Input and Output Data {#formats}
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ClickHouse can accept and return data in various formats. A format supported for input can be used to parse the data provided to `INSERT`s, to perform `SELECT`s from a file-backed table such as File, URL or HDFS, or to read an external dictionary. A format supported for output can be used to arrange the
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results of a `SELECT`, and to perform `INSERT`s into a file-backed table.
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The supported formats are:
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| Format                                                                                  | Input | Output |
|-----------------------------------------------------------------------------------------|-------|--------|
| [TabSeparated](#tabseparated)                                                           | ✔     | ✔      |
| [TabSeparatedRaw](#tabseparatedraw)                                                     | ✔     | ✔      |
| [TabSeparatedWithNames](#tabseparatedwithnames)                                         | ✔     | ✔      |
| [TabSeparatedWithNamesAndTypes](#tabseparatedwithnamesandtypes)                         | ✔     | ✔      |
| [Template](#format-template)                                                            | ✔     | ✔      |
| [TemplateIgnoreSpaces](#templateignorespaces)                                           | ✔     | ✗      |
| [CSV](#csv)                                                                             | ✔     | ✔      |
| [CSVWithNames](#csvwithnames)                                                           | ✔     | ✔      |
| [CustomSeparated](#format-customseparated)                                              | ✔     | ✔      |
| [Values](#data-format-values)                                                           | ✔     | ✔      |
| [Vertical](#vertical)                                                                   | ✗     | ✔      |
| [VerticalRaw](#verticalraw)                                                             | ✗     | ✔      |
| [JSON](#json)                                                                           | ✗     | ✔      |
| [JSONString](#jsonstring)                                                               | ✗     | ✔      |
| [JSONCompact](#jsoncompact)                                                             | ✗     | ✔      |
| [JSONCompactString](#jsoncompactstring)                                                 | ✗     | ✔      |
| [JSONEachRow](#jsoneachrow)                                                             | ✔     | ✔      |
| [JSONEachRowWithProgress](#jsoneachrowwithprogress)                                     | ✗     | ✔      |
| [JSONStringEachRow](#jsonstringeachrow)                                                 | ✔     | ✔      |
| [JSONStringEachRowWithProgress](#jsonstringeachrowwithprogress)                         | ✗     | ✔      |
| [JSONCompactEachRow](#jsoncompacteachrow)                                               | ✔     | ✔      |
| [JSONCompactEachRowWithNamesAndTypes](#jsoncompacteachrowwithnamesandtypes)             | ✔     | ✔      |
| [JSONCompactStringEachRow](#jsoncompactstringeachrow)                                   | ✔     | ✔      |
| [JSONCompactStringEachRowWithNamesAndTypes](#jsoncompactstringeachrowwithnamesandtypes) | ✔     | ✔      |
| [TSKV](#tskv)                                                                           | ✔     | ✔      |
| [Pretty](#pretty)                                                                       | ✗     | ✔      |
| [PrettyCompact](#prettycompact)                                                         | ✗     | ✔      |
| [PrettyCompactMonoBlock](#prettycompactmonoblock)                                       | ✗     | ✔      |
| [PrettyNoEscapes](#prettynoescapes)                                                     | ✗     | ✔      |
| [PrettySpace](#prettyspace)                                                             | ✗     | ✔      |
| [Protobuf](#protobuf)                                                                   | ✔     | ✔      |
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| [ProtobufSingle](#protobufsingle)                                                       | ✔     | ✔      |
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| [Avro](#data-format-avro)                                                               | ✔     | ✔      |
| [AvroConfluent](#data-format-avro-confluent)                                            | ✔     | ✗      |
| [Parquet](#data-format-parquet)                                                         | ✔     | ✔      |
| [Arrow](#data-format-arrow)                                                             | ✔     | ✔      |
| [ArrowStream](#data-format-arrow-stream)                                                | ✔     | ✔      |
| [ORC](#data-format-orc)                                                                 | ✔     | ✗      |
| [RowBinary](#rowbinary)                                                                 | ✔     | ✔      |
| [RowBinaryWithNamesAndTypes](#rowbinarywithnamesandtypes)                               | ✔     | ✔      |
| [Native](#native)                                                                       | ✔     | ✔      |
| [Null](#null)                                                                           | ✗     | ✔      |
| [XML](#xml)                                                                             | ✗     | ✔      |
| [CapnProto](#capnproto)                                                                 | ✔     | ✗      |
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| [LineAsString](#lineasstring)                                                           | ✔     | ✗      |
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| [Regexp](#data-format-regexp)                                                           | ✔     | ✗      |
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You can control some format processing parameters with the ClickHouse settings. For more information read the [Settings](../operations/settings/settings.md) section.
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## TabSeparated {#tabseparated}
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In TabSeparated format, data is written by row. Each row contains values separated by tabs. Each value is followed by a tab, except the last value in the row, which is followed by a line feed. Strictly Unix line feeds are assumed everywhere. The last row also must contain a line feed at the end. Values are written in text format, without enclosing quotation marks, and with special characters escaped.
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This format is also available under the name `TSV`.
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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’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.
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The `TabSeparated` format supports outputting total values (when using WITH TOTALS) and extreme values (when ‘extremes’ 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:
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``` sql
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SELECT EventDate, count() AS c FROM test.hits GROUP BY EventDate WITH TOTALS ORDER BY EventDate FORMAT TabSeparated``
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```

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``` text
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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

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1970-01-01      8873898
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2014-03-17      1031592
2014-03-23      1406958
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```
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### Data Formatting {#data-formatting}
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Integer numbers are written in decimal form. Numbers can contain an extra “+” character at the beginning (ignored when parsing, and not recorded when formatting). Non-negative numbers can’t contain the negative sign. When reading, 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.
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Floating-point numbers are written in decimal form. The dot is used as the decimal separator. Exponential entries are supported, as are ‘inf’, ‘+inf’, ‘-inf’, and ‘nan’. An entry of floating-point numbers may begin or end with a decimal point.
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During formatting, accuracy may be lost on floating-point numbers.
During parsing, it is not strictly required to read the nearest machine-representable number.

Dates are written in YYYY-MM-DD format and parsed in the same format, but with any characters as separators.
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Dates with times are written 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 of them formats data). For dates with times, 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.
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During a read operation, incorrect dates and dates with times can be parsed with natural overflow or as null dates and times, without an error message.

As an exception, parsing dates with times 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.

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Strings are output with backslash-escaped special characters. The following escape sequences are used for output: `\b`, `\f`, `\r`, `\n`, `\t`, `\0`, `\'`, `\\`. Parsing also supports the sequences `\a`, `\v`, and `\xHH` (hex escape sequences) and any `\c` sequences, where `c` is any character (these sequences are converted to `c`). Thus, reading data supports formats where a line feed can be written as `\n` or `\`, or as a line feed. For example, the string `Hello world` with a line feed between the words instead of space can be parsed in any of the following variations:
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``` text
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Hello\nworld
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Hello\
world
```

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

The minimum set of characters that you need to escape when passing data in TabSeparated format: tab, line feed (LF) and backslash.

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

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Arrays are written as a list of comma-separated values in square brackets. Number items in the array are formatted as normally. `Date` and `DateTime` types are written in single quotes. Strings are written in single quotes with the same escaping rules as above.
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[NULL](../sql-reference/syntax.md) is formatted as `\N`.
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Each element of [Nested](../sql-reference/data-types/nested-data-structures/nested.md) structures is represented as array.
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For example:

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``` sql
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CREATE TABLE nestedt
(
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    `id` UInt8,
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    `aux` Nested(
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        a UInt8,
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        b String
    )
)
ENGINE = TinyLog
```
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``` sql
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INSERT INTO nestedt Values ( 1, [1], ['a'])
```
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``` sql
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SELECT * FROM nestedt FORMAT TSV
```
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``` text
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1  [1]    ['a']
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```

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## TabSeparatedRaw {#tabseparatedraw}
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Differs from `TabSeparated` format in that the rows are written without escaping.
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When parsing with this format, tabs or linefeeds are not allowed in each field.
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This format is also available under the name `TSVRaw`.

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## TabSeparatedWithNames {#tabseparatedwithnames}
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Differs from the `TabSeparated` format in that the column names are written in the first row.
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During parsing, the first row is completely ignored. You can’t use column names to determine their position or to check their correctness.
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(Support for parsing the header row may be added in the future.)

This format is also available under the name `TSVWithNames`.

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## TabSeparatedWithNamesAndTypes {#tabseparatedwithnamesandtypes}
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Differs from the `TabSeparated` format in that the column names are written to the first row, while the column types are in the second row.
During parsing, the first and second rows are completely ignored.

This format is also available under the name `TSVWithNamesAndTypes`.

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## Template {#format-template}
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This format allows specifying a custom format string with placeholders for values with a specified escaping rule.
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It uses settings `format_template_resultset`, `format_template_row`, `format_template_rows_between_delimiter` and some settings of other formats (e.g. `output_format_json_quote_64bit_integers` when using `JSON` escaping, see further)
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Setting `format_template_row` specifies path to file, which contains format string for rows with the following syntax:
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`delimiter_1${column_1:serializeAs_1}delimiter_2${column_2:serializeAs_2} ... delimiter_N`,
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where `delimiter_i` is a delimiter between values (`$` symbol can be escaped as `$$`),
`column_i` is a name or index of a column whose values are to be selected or inserted (if empty, then column will be skipped),
`serializeAs_i` is an escaping rule for the column values. The following escaping rules are supported:
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-   `CSV`, `JSON`, `XML` (similarly to the formats of the same names)
-   `Escaped` (similarly to `TSV`)
-   `Quoted` (similarly to `Values`)
-   `Raw` (without escaping, similarly to `TSVRaw`)
-   `None` (no escaping rule, see further)
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If an escaping rule is omitted, then `None` will be used. `XML` and `Raw` are suitable only for output.
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So, for the following format string:
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      `Search phrase: ${SearchPhrase:Quoted}, count: ${c:Escaped}, ad price: $$${price:JSON};`
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the values of `SearchPhrase`, `c` and `price` columns, which are escaped as `Quoted`, `Escaped` and `JSON` will be printed (for select) or will be expected (for insert) between `Search phrase:`, `, count:`, `, ad price: $` and `;` delimiters respectively. For example:
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`Search phrase: 'bathroom interior design', count: 2166, ad price: $3;`
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The `format_template_rows_between_delimiter` setting specifies delimiter between rows, which is printed (or expected) after every row except the last one (`\n` by default)
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Setting `format_template_resultset` specifies the path to file, which contains a format string for resultset. Format string for resultset has the same syntax as a format string for row and allows to specify a prefix, a suffix and a way to print some additional information. It contains the following placeholders instead of column names:
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-   `data` is the rows with data in `format_template_row` format, separated by `format_template_rows_between_delimiter`. This placeholder must be the first placeholder in the format string.
-   `totals` is the row with total values in `format_template_row` format (when using WITH TOTALS)
-   `min` is the row with minimum values in `format_template_row` format (when extremes are set to 1)
-   `max` is the row with maximum values in `format_template_row` format (when extremes are set to 1)
-   `rows` is the total number of output rows
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-   `rows_before_limit` is the minimal number of rows there would have been without 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.
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-   `time` is the request execution time in seconds
-   `rows_read` is the number of rows has been read
-   `bytes_read` is the number of bytes (uncompressed) has been read
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The placeholders `data`, `totals`, `min` and `max` must not have escaping rule specified (or `None` must be specified explicitly). The remaining placeholders may have any escaping rule specified.
If the `format_template_resultset` setting is an empty string, `${data}` is used as default value.
For insert queries format allows skipping some columns or some fields if prefix or suffix (see example).

Select example:

``` sql
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SELECT SearchPhrase, count() AS c FROM test.hits GROUP BY SearchPhrase ORDER BY c DESC LIMIT 5 FORMAT Template SETTINGS
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format_template_resultset = '/some/path/resultset.format', format_template_row = '/some/path/row.format', format_template_rows_between_delimiter = '\n    '
```
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`/some/path/resultset.format`:
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``` text
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<!DOCTYPE HTML>
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<html> <head> <title>Search phrases</title> </head>
 <body>
  <table border="1"> <caption>Search phrases</caption>
    <tr> <th>Search phrase</th> <th>Count</th> </tr>
    ${data}
  </table>
  <table border="1"> <caption>Max</caption>
    ${max}
  </table>
  <b>Processed ${rows_read:XML} rows in ${time:XML} sec</b>
 </body>
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</html>
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```
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`/some/path/row.format`:
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``` text
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<tr> <td>${0:XML}</td> <td>${1:XML}</td> </tr>
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```
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Result:
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``` html
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<!DOCTYPE HTML>
<html> <head> <title>Search phrases</title> </head>
 <body>
  <table border="1"> <caption>Search phrases</caption>
    <tr> <th>Search phrase</th> <th>Count</th> </tr>
    <tr> <td></td> <td>8267016</td> </tr>
    <tr> <td>bathroom interior design</td> <td>2166</td> </tr>
    <tr> <td>yandex</td> <td>1655</td> </tr>
    <tr> <td>spring 2014 fashion</td> <td>1549</td> </tr>
    <tr> <td>freeform photos</td> <td>1480</td> </tr>
  </table>
  <table border="1"> <caption>Max</caption>
    <tr> <td></td> <td>8873898</td> </tr>
  </table>
  <b>Processed 3095973 rows in 0.1569913 sec</b>
 </body>
</html>
```

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Insert example:
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``` text
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Some header
Page views: 5, User id: 4324182021466249494, Useless field: hello, Duration: 146, Sign: -1
Page views: 6, User id: 4324182021466249494, Useless field: world, Duration: 185, Sign: 1
Total rows: 2
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```
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``` sql
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INSERT INTO UserActivity FORMAT Template SETTINGS
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format_template_resultset = '/some/path/resultset.format', format_template_row = '/some/path/row.format'
```
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`/some/path/resultset.format`:
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``` text
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Some header\n${data}\nTotal rows: ${:CSV}\n
```
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`/some/path/row.format`:
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``` text
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Page views: ${PageViews:CSV}, User id: ${UserID:CSV}, Useless field: ${:CSV}, Duration: ${Duration:CSV}, Sign: ${Sign:CSV}
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```
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`PageViews`, `UserID`, `Duration` and `Sign` inside placeholders are names of columns in the table. Values after `Useless field` in rows and after `\nTotal rows:` in suffix will be ignored.
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All delimiters in the input data must be strictly equal to delimiters in specified format strings.
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## TemplateIgnoreSpaces {#templateignorespaces}
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This format is suitable only for input.
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Similar to `Template`, but skips whitespace characters between delimiters and values in the input stream. However, if format strings contain whitespace characters, these characters will be expected in the input stream. Also allows to specify empty placeholders (`${}` or `${:None}`) to split some delimiter into separate parts to ignore spaces between them. Such placeholders are used only for skipping whitespace characters.
It’s possible to read `JSON` using this format, if values of columns have the same order in all rows. For example, the following request can be used for inserting data from output example of format [JSON](#json):

``` sql
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INSERT INTO table_name FORMAT TemplateIgnoreSpaces SETTINGS
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format_template_resultset = '/some/path/resultset.format', format_template_row = '/some/path/row.format', format_template_rows_between_delimiter = ','
```
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`/some/path/resultset.format`:
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``` text
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{${}"meta"${}:${:JSON},${}"data"${}:${}[${data}]${},${}"totals"${}:${:JSON},${}"extremes"${}:${:JSON},${}"rows"${}:${:JSON},${}"rows_before_limit_at_least"${}:${:JSON}${}}
```
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`/some/path/row.format`:
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``` text
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{${}"SearchPhrase"${}:${}${phrase:JSON}${},${}"c"${}:${}${cnt:JSON}${}}
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```
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## TSKV {#tskv}
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Similar to TabSeparated, but outputs a value in name=value format. Names are escaped the same way as in TabSeparated format, and the = symbol is also escaped.

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``` text
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SearchPhrase=   count()=8267016
SearchPhrase=bathroom interior design    count()=2166
SearchPhrase=yandex     count()=1655
SearchPhrase=2014 spring fashion    count()=1549
SearchPhrase=freeform photos       count()=1480
SearchPhrase=angelina jolie    count()=1245
SearchPhrase=omsk       count()=1112
SearchPhrase=photos of dog breeds    count()=1091
SearchPhrase=curtain designs        count()=1064
SearchPhrase=baku       count()=1000
```

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[NULL](../sql-reference/syntax.md) is formatted as `\N`.
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``` sql
SELECT * FROM t_null FORMAT TSKV
```

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``` text
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x=1    y=\N
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```

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When there is a large number of small columns, this format is ineffective, and there is generally no reason to use it. Nevertheless, it is no worse than JSONEachRow in terms of efficiency.
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Both data output and parsing are supported in this format. For parsing, any order is supported for the values of different columns. It is acceptable for some values to be omitted – they are treated as equal to their default values. In this case, zeros and blank rows are used as default values. Complex values that could be specified in the table are not supported as defaults.

Parsing allows the presence of the additional field `tskv` without the equal sign or a value. This field is ignored.
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## CSV {#csv}
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Comma Separated Values format ([RFC](https://tools.ietf.org/html/rfc4180)).

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When formatting, rows are enclosed in double-quotes. A double quote inside a string is output as two double quotes in a row. There are no other rules for escaping characters. Date and date-time are enclosed in double-quotes. Numbers are output without quotes. Values are separated by a delimiter character, which is `,` by default. The delimiter character is defined in the setting [format_csv_delimiter](../operations/settings/settings.md#settings-format_csv_delimiter). Rows are separated using the Unix line feed (LF). Arrays are serialized in CSV as follows: first, the array is serialized to a string as in TabSeparated format, and then the resulting string is output to CSV in double-quotes. Tuples in CSV format are serialized as separate columns (that is, their nesting in the tuple is lost).
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``` bash
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$ clickhouse-client --format_csv_delimiter="|" --query="INSERT INTO test.csv FORMAT CSV" < data.csv
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```

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\*By default, the delimiter is `,`. See the [format_csv_delimiter](../operations/settings/settings.md#settings-format_csv_delimiter) setting for more information.
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When parsing, all values can be parsed either with or without quotes. Both double and single quotes are supported. Rows can also be arranged without quotes. In this case, they are parsed up to the delimiter character or line feed (CR or LF). In violation of the RFC, when parsing rows without quotes, the leading and trailing spaces and tabs are ignored. For the line feed, Unix (LF), Windows (CR LF) and Mac OS Classic (CR LF) types are all supported.

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Empty unquoted input values are replaced with default values for the respective columns, if
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[input_format_defaults_for_omitted_fields](../operations/settings/settings.md#session_settings-input_format_defaults_for_omitted_fields)
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is enabled.

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`NULL` is formatted as `\N` or `NULL` or an empty unquoted string (see settings [input_format_csv_unquoted_null_literal_as_null](../operations/settings/settings.md#settings-input_format_csv_unquoted_null_literal_as_null) and [input_format_defaults_for_omitted_fields](../operations/settings/settings.md#session_settings-input_format_defaults_for_omitted_fields)).
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The CSV format supports the output of totals and extremes the same way as `TabSeparated`.

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## CSVWithNames {#csvwithnames}
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Also prints the header row, similar to `TabSeparatedWithNames`.

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## CustomSeparated {#format-customseparated}
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Similar to [Template](#format-template), but it prints or reads all columns and uses escaping rule from setting `format_custom_escaping_rule` and delimiters from settings `format_custom_field_delimiter`, `format_custom_row_before_delimiter`, `format_custom_row_after_delimiter`, `format_custom_row_between_delimiter`, `format_custom_result_before_delimiter` and `format_custom_result_after_delimiter`, not from format strings.
There is also `CustomSeparatedIgnoreSpaces` format, which is similar to `TemplateIgnoreSpaces`.

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## JSON {#json}
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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’t a LIMIT. Example:
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``` sql
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SELECT SearchPhrase, count() AS c FROM test.hits GROUP BY SearchPhrase WITH TOTALS ORDER BY c DESC LIMIT 5 FORMAT JSON
```

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``` json
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{
        "meta":
        [
                {
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                        "name": "'hello'",
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                        "type": "String"
                },
                {
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                        "name": "multiply(42, number)",
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                        "type": "UInt64"
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                },
                {
                        "name": "range(5)",
                        "type": "Array(UInt8)"
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                }
        ],

        "data":
        [
                {
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                        "'hello'": "hello",
                        "multiply(42, number)": "0",
                        "range(5)": [0,1,2,3,4]
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                },
                {
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                        "'hello'": "hello",
                        "multiply(42, number)": "42",
                        "range(5)": [0,1,2,3,4]
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                },
                {
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                        "'hello'": "hello",
                        "multiply(42, number)": "84",
                        "range(5)": [0,1,2,3,4]
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                }
        ],

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        "rows": 3,
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        "rows_before_limit_at_least": 3
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}
```

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The JSON is compatible with JavaScript. To ensure this, some characters are additionally escaped: the slash `/` is escaped as `\/`; alternative line breaks `U+2028` and `U+2029`, which break some browsers, are escaped as `\uXXXX`. ASCII control characters are escaped: backspace, form feed, line feed, carriage return, and horizontal tab are replaced with `\b`, `\f`, `\n`, `\r`, `\t` , as well as the remaining bytes in the 00-1F range using `\uXXXX` sequences. Invalid UTF-8 sequences are changed to the replacement character � so the output text will consist of valid UTF-8 sequences. For compatibility with JavaScript, Int64 and UInt64 integers are enclosed in double-quotes by default. To remove the quotes, you can set the configuration parameter [output_format_json_quote_64bit_integers](../operations/settings/settings.md#session_settings-output_format_json_quote_64bit_integers) to 0.
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`rows` – The total number of output rows.

`rows_before_limit_at_least` The minimal number of rows there would have been without LIMIT. Output only if the query contains LIMIT.
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If the query contains GROUP BY, rows_before_limit_at_least is the exact number of rows there would have been without a LIMIT.
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`totals` – Total values (when using WITH TOTALS).

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`extremes` – Extreme values (when extremes are set to 1).
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This format is only appropriate for outputting a query result, but not for parsing (retrieving data to insert in a table).
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ClickHouse supports [NULL](../sql-reference/syntax.md), which is displayed as `null` in the JSON output. To enable `+nan`, `-nan`, `+inf`, `-inf` values in output, set the [output_format_json_quote_denormals](../operations/settings/settings.md#settings-output_format_json_quote_denormals) to 1.
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See also the [JSONEachRow](#jsoneachrow) format.
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## JSONString {#jsonstring}
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Differs from JSON only in that data fields are output in strings, not in typed JSON values.
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Example:

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```json
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{
        "meta":
        [
                {
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                        "name": "'hello'",
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                        "type": "String"
                },
                {
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                        "name": "multiply(42, number)",
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                        "type": "UInt64"
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                },
                {
                        "name": "range(5)",
                        "type": "Array(UInt8)"
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                }
        ],

        "data":
        [
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                {
                        "'hello'": "hello",
                        "multiply(42, number)": "0",
                        "range(5)": "[0,1,2,3,4]"
                },
                {
                        "'hello'": "hello",
                        "multiply(42, number)": "42",
                        "range(5)": "[0,1,2,3,4]"
                },
                {
                        "'hello'": "hello",
                        "multiply(42, number)": "84",
                        "range(5)": "[0,1,2,3,4]"
                }
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        ],

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        "rows": 3,

        "rows_before_limit_at_least": 3
}
```

## JSONCompact {#jsoncompact}
## JSONCompactString {#jsoncompactstring}

Differs from JSON only in that data rows are output in arrays, not in objects.

Example:

``` json
// JSONCompact
{
        "meta":
        [
                {
                        "name": "'hello'",
                        "type": "String"
                },
                {
                        "name": "multiply(42, number)",
                        "type": "UInt64"
                },
                {
                        "name": "range(5)",
                        "type": "Array(UInt8)"
                }
        ],
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        "data":
        [
                ["hello", "0", [0,1,2,3,4]],
                ["hello", "42", [0,1,2,3,4]],
                ["hello", "84", [0,1,2,3,4]]
        ],
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        "rows": 3,
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        "rows_before_limit_at_least": 3
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}
```

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```json
// JSONCompactString
{
        "meta":
        [
                {
                        "name": "'hello'",
                        "type": "String"
                },
                {
                        "name": "multiply(42, number)",
                        "type": "UInt64"
                },
                {
                        "name": "range(5)",
                        "type": "Array(UInt8)"
                }
        ],
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        "data":
        [
                ["hello", "0", "[0,1,2,3,4]"],
                ["hello", "42", "[0,1,2,3,4]"],
                ["hello", "84", "[0,1,2,3,4]"]
        ],
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        "rows": 3,
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        "rows_before_limit_at_least": 3
}
```
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## JSONEachRow {#jsoneachrow}
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## JSONStringEachRow {#jsonstringeachrow}
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## JSONCompactEachRow {#jsoncompacteachrow}
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## JSONCompactStringEachRow {#jsoncompactstringeachrow}
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When using these formats, ClickHouse outputs rows as separated, newline-delimited JSON values, but the data as a whole is not valid JSON.
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``` json
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{"some_int":42,"some_str":"hello","some_tuple":[1,"a"]} // JSONEachRow
[42,"hello",[1,"a"]] // JSONCompactEachRow
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["42","hello","(2,'a')"] // JSONCompactStringsEachRow
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```

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When inserting the data, you should provide a separate JSON value for each row.
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## JSONEachRowWithProgress {#jsoneachrowwithprogress}
## JSONStringEachRowWithProgress {#jsonstringeachrowwithprogress}

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Differs from `JSONEachRow`/`JSONStringEachRow` in that ClickHouse will also yield progress information as JSON values.
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```json
{"row":{"'hello'":"hello","multiply(42, number)":"0","range(5)":[0,1,2,3,4]}}
{"row":{"'hello'":"hello","multiply(42, number)":"42","range(5)":[0,1,2,3,4]}}
{"row":{"'hello'":"hello","multiply(42, number)":"84","range(5)":[0,1,2,3,4]}}
{"progress":{"read_rows":"3","read_bytes":"24","written_rows":"0","written_bytes":"0","total_rows_to_read":"3"}}
```

## JSONCompactEachRowWithNamesAndTypes {#jsoncompacteachrowwithnamesandtypes}
## JSONCompactStringEachRowWithNamesAndTypes {#jsoncompactstringeachrowwithnamesandtypes}

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Differs from `JSONCompactEachRow`/`JSONCompactStringEachRow` in that the column names and types are written as the first two rows.
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```json
["'hello'", "multiply(42, number)", "range(5)"]
["String", "UInt64", "Array(UInt8)"]
["hello", "0", [0,1,2,3,4]]
["hello", "42", [0,1,2,3,4]]
["hello", "84", [0,1,2,3,4]]
```

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### Inserting Data {#inserting-data}
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``` sql
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INSERT INTO UserActivity FORMAT JSONEachRow {"PageViews":5, "UserID":"4324182021466249494", "Duration":146,"Sign":-1} {"UserID":"4324182021466249494","PageViews":6,"Duration":185,"Sign":1}
```

ClickHouse allows:

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-   Any order of key-value pairs in the object.
-   Omitting some values.
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ClickHouse ignores spaces between elements and commas after the objects. You can pass all the objects in one line. You don’t have to separate them with line breaks.
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**Omitted values processing**
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ClickHouse substitutes omitted values with the default values for the corresponding [data types](../sql-reference/data-types/index.md).
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If `DEFAULT expr` is specified, ClickHouse uses different substitution rules depending on the [input_format_defaults_for_omitted_fields](../operations/settings/settings.md#session_settings-input_format_defaults_for_omitted_fields) setting.
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Consider the following table:
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``` sql
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CREATE TABLE IF NOT EXISTS example_table
(
    x UInt32,
    a DEFAULT x * 2
) ENGINE = Memory;
```

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-   If `input_format_defaults_for_omitted_fields = 0`, then the default value for `x` and `a` equals `0` (as the default value for the `UInt32` data type).
-   If `input_format_defaults_for_omitted_fields = 1`, then the default value for `x` equals `0`, but the default value of `a` equals `x * 2`.
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!!! note "Warning"
    When inserting data with `insert_sample_with_metadata = 1`, ClickHouse consumes more computational resources, compared to insertion with `insert_sample_with_metadata = 0`.
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### Selecting Data {#selecting-data}
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Consider the `UserActivity` table as an example:
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``` text
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┌──────────────UserID─┬─PageViews─┬─Duration─┬─Sign─┐
│ 4324182021466249494 │         5 │      146 │   -1 │
│ 4324182021466249494 │         6 │      185 │    1 │
└─────────────────────┴───────────┴──────────┴──────┘
```

The query `SELECT * FROM UserActivity FORMAT JSONEachRow` returns:

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``` text
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{"UserID":"4324182021466249494","PageViews":5,"Duration":146,"Sign":-1}
{"UserID":"4324182021466249494","PageViews":6,"Duration":185,"Sign":1}
```

Unlike the [JSON](#json) format, there is no substitution of invalid UTF-8 sequences. Values are escaped in the same way as for `JSON`.

!!! note "Note"
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    Any set of bytes can be output in the strings. Use the `JSONEachRow` format if you are sure that the data in the table can be formatted as JSON without losing any information.
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### Usage of Nested Structures {#jsoneachrow-nested}
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If you have a table with [Nested](../sql-reference/data-types/nested-data-structures/nested.md) data type columns, you can insert JSON data with the same structure. Enable this feature with the [input_format_import_nested_json](../operations/settings/settings.md#settings-input_format_import_nested_json) setting.
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For example, consider the following table:

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``` sql
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CREATE TABLE json_each_row_nested (n Nested (s String, i Int32) ) ENGINE = Memory
```

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As you can see in the `Nested` data type description, ClickHouse treats each component of the nested structure as a separate column (`n.s` and `n.i` for our table). You can insert data in the following way:
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``` sql
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INSERT INTO json_each_row_nested FORMAT JSONEachRow {"n.s": ["abc", "def"], "n.i": [1, 23]}
```

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To insert data as a hierarchical JSON object, set [input_format_import_nested_json=1](../operations/settings/settings.md#settings-input_format_import_nested_json).
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``` json
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{
    "n": {
        "s": ["abc", "def"],
        "i": [1, 23]
    }
}
```

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Without this setting, ClickHouse throws an exception.
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``` sql
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SELECT name, value FROM system.settings WHERE name = 'input_format_import_nested_json'
```
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``` text
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┌─name────────────────────────────┬─value─┐
│ input_format_import_nested_json │ 0     │
└─────────────────────────────────┴───────┘
```
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``` sql
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INSERT INTO json_each_row_nested FORMAT JSONEachRow {"n": {"s": ["abc", "def"], "i": [1, 23]}}
```
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``` text
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Code: 117. DB::Exception: Unknown field found while parsing JSONEachRow format: n: (at row 1)
```
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``` sql
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SET input_format_import_nested_json=1
INSERT INTO json_each_row_nested FORMAT JSONEachRow {"n": {"s": ["abc", "def"], "i": [1, 23]}}
SELECT * FROM json_each_row_nested
```
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``` text
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┌─n.s───────────┬─n.i────┐
│ ['abc','def'] │ [1,23] │
└───────────────┴────────┘
```

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## Native {#native}
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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 “columnar” – it doesn’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.
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You can use this format to quickly generate dumps that can only be read by the ClickHouse DBMS. It doesn’t make sense to work with this format yourself.
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## Null {#null}
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747
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 performance testing.
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Obviously, this format is only appropriate for output, not for parsing.

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## Pretty {#pretty}
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Outputs data as Unicode-art tables, also using ANSI-escape sequences for setting colours in the terminal.
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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).
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756
[NULL](../sql-reference/syntax.md) is output as `ᴺᵁᴸᴸ`.
757

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Example (shown for the [PrettyCompact](#prettycompact) format):

760
``` sql
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SELECT * FROM t_null
```

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``` text
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┌─x─┬────y─┐
│ 1 │ ᴺᵁᴸᴸ │
└───┴──────┘
```

770
Rows are not escaped in Pretty\* formats. Example is shown for the [PrettyCompact](#prettycompact) format:
771

772
``` sql
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SELECT 'String with \'quotes\' and \t character' AS Escaping_test
```

776
``` text
777
┌─Escaping_test────────────────────────┐
778
│ String with 'quotes' and      character │
779 780 781
└──────────────────────────────────────┘
```

782
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 “Showed first 10 000” is printed.
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This format is only appropriate for outputting a query result, but not for parsing (retrieving data to insert in a table).

785
The Pretty format supports outputting total values (when using WITH TOTALS) and extremes (when ‘extremes’ 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](#prettycompact) format):
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``` sql
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SELECT EventDate, count() AS c FROM test.hits GROUP BY EventDate WITH TOTALS ORDER BY EventDate FORMAT PrettyCompact
```

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``` text
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┌──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─┐
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│ 1970-01-01 │ 8873898 │
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└────────────┴─────────┘

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

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## PrettyCompact {#prettycompact}
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Differs from [Pretty](#pretty) in that the grid is drawn between rows and the result is more compact.
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This format is used by default in the command-line client in interactive mode.

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## PrettyCompactMonoBlock {#prettycompactmonoblock}
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Differs from [PrettyCompact](#prettycompact) in that up to 10,000 rows are buffered, then output as a single table, not by blocks.
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## PrettyNoEscapes {#prettynoescapes}
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Differs from Pretty in that ANSI-escape sequences aren’t used. This is necessary for displaying this format in a browser, as well as for using the ‘watch’ command-line utility.
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Example:

829
``` bash
830
$ watch -n1 "clickhouse-client --query='SELECT event, value FROM system.events FORMAT PrettyCompactNoEscapes'"
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```

You can use the HTTP interface for displaying in the browser.

835
### PrettyCompactNoEscapes {#prettycompactnoescapes}
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The same as the previous setting.

839
### PrettySpaceNoEscapes {#prettyspacenoescapes}
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The same as the previous setting.

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## PrettySpace {#prettyspace}
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Differs from [PrettyCompact](#prettycompact) in that whitespace (space characters) is used instead of the grid.
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## RowBinary {#rowbinary}
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Formats and parses data by row in binary format. Rows and values are listed consecutively, without separators.
850
This format is less efficient than the Native format since it is row-based.
851

852
Integers use fixed-length little-endian representation. For example, UInt64 uses 8 bytes.
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DateTime is represented as UInt32 containing the Unix timestamp as the value.
Date is represented as a UInt16 object that contains the number of days since 1970-01-01 as the value.
String is represented as a varint length (unsigned [LEB128](https://en.wikipedia.org/wiki/LEB128)), followed by the bytes of the string.
FixedString is represented simply as a sequence of bytes.

Array is represented as a varint length (unsigned [LEB128](https://en.wikipedia.org/wiki/LEB128)), followed by successive elements of the array.

860
For [NULL](../sql-reference/syntax.md#null-literal) support, an additional byte containing 1 or 0 is added before each [Nullable](../sql-reference/data-types/nullable.md) value. If 1, then the value is `NULL` and this byte is interpreted as a separate value. If 0, the value after the byte is not `NULL`.
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## RowBinaryWithNamesAndTypes {#rowbinarywithnamesandtypes}
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Similar to [RowBinary](#rowbinary), but with added header:
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-   [LEB128](https://en.wikipedia.org/wiki/LEB128)-encoded number of columns (N)
-   N `String`s specifying column names
-   N `String`s specifying column types
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## Values {#data-format-values}
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Prints every row in brackets. Rows are separated by commas. There is no comma after the last row. The values inside the brackets are also comma-separated. Numbers are output in a 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 similar to the [TabSeparated](#tabseparated) format. During formatting, extra spaces aren’t inserted, but during parsing, they are allowed and skipped (except for spaces inside array values, which are not allowed). [NULL](../sql-reference/syntax.md) is represented as `NULL`.
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The minimum set of characters that you need to escape when passing data in Values ​​format: single quotes and backslashes.

This is the format that is used in `INSERT INTO t VALUES ...`, but you can also use it for formatting query results.

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See also: [input_format_values_interpret_expressions](../operations/settings/settings.md#settings-input_format_values_interpret_expressions) and [input_format_values_deduce_templates_of_expressions](../operations/settings/settings.md#settings-input_format_values_deduce_templates_of_expressions) settings.
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## Vertical {#vertical}
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882
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.
883

884
[NULL](../sql-reference/syntax.md) is output as `ᴺᵁᴸᴸ`.
885 886 887

Example:

888
``` sql
889 890 891
SELECT * FROM t_null FORMAT Vertical
```

892
``` text
893 894 895 896 897
Row 1:
──────
x: 1
y: ᴺᵁᴸᴸ
```
898

899
Rows are not escaped in Vertical format:
900

901
``` sql
902
SELECT 'string with \'quotes\' and \t with some special \n characters' AS test FORMAT Vertical
903 904
```

905
``` text
906 907
Row 1:
──────
908
test: string with 'quotes' and      with some special
909 910 911
 characters
```

912
This format is only appropriate for outputting a query result, but not for parsing (retrieving data to insert in a table).
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## VerticalRaw {#verticalraw}
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Similar to [Vertical](#vertical), but with escaping disabled. This format is only suitable for outputting query results, not for parsing (receiving data and inserting it in the table).

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## XML {#xml}
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XML format is suitable only for output, not for parsing. Example:

922
``` xml
923 924 925 926 927 928 929 930 931 932 933 934 935 936 937 938 939 940 941 942 943 944 945 946 947 948 949 950
<?xml version='1.0' encoding='UTF-8' ?>
<result>
        <meta>
                <columns>
                        <column>
                                <name>SearchPhrase</name>
                                <type>String</type>
                        </column>
                        <column>
                                <name>count()</name>
                                <type>UInt64</type>
                        </column>
                </columns>
        </meta>
        <data>
                <row>
                        <SearchPhrase></SearchPhrase>
                        <field>8267016</field>
                </row>
                <row>
                        <SearchPhrase>bathroom interior design</SearchPhrase>
                        <field>2166</field>
                </row>
                <row>
                        <SearchPhrase>yandex</SearchPhrase>
                        <field>1655</field>
                </row>
                <row>
951
                        <SearchPhrase>2014 spring fashion</SearchPhrase>
952 953 954 955 956 957 958 959 960 961 962 963 964 965 966 967 968 969 970
                        <field>1549</field>
                </row>
                <row>
                        <SearchPhrase>freeform photos</SearchPhrase>
                        <field>1480</field>
                </row>
                <row>
                        <SearchPhrase>angelina jolie</SearchPhrase>
                        <field>1245</field>
                </row>
                <row>
                        <SearchPhrase>omsk</SearchPhrase>
                        <field>1112</field>
                </row>
                <row>
                        <SearchPhrase>photos of dog breeds</SearchPhrase>
                        <field>1091</field>
                </row>
                <row>
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                        <SearchPhrase>curtain designs</SearchPhrase>
972 973 974 975 976 977 978 979 980 981 982 983
                        <field>1064</field>
                </row>
                <row>
                        <SearchPhrase>baku</SearchPhrase>
                        <field>1000</field>
                </row>
        </data>
        <rows>10</rows>
        <rows_before_limit_at_least>141137</rows_before_limit_at_least>
</result>
```

984
If the column name does not have an acceptable format, just ‘field’ is used as the element name. In general, the XML structure follows the JSON structure.
985 986 987 988
Just as for JSON, invalid UTF-8 sequences are changed to the replacement character � so the output text will consist of valid UTF-8 sequences.

In string values, the characters `<` and `&` are escaped as `<` and `&`.

989
Arrays are output as `<array><elem>Hello</elem><elem>World</elem>...</array>`,and tuples as `<tuple><elem>Hello</elem><elem>World</elem>...</tuple>`.
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## CapnProto {#capnproto}
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Cap’n Proto is a binary message format similar to Protocol Buffers and Thrift, but not like JSON or MessagePack.
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Cap’n Proto messages are strictly typed and not self-describing, meaning they need an external schema description. The schema is applied on the fly and cached for each query.
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``` bash
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$ cat capnproto_messages.bin | clickhouse-client --query "INSERT INTO test.hits FORMAT CapnProto SETTINGS format_schema='schema:Message'"
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```

Where `schema.capnp` looks like this:

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``` capnp
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struct Message {
  SearchPhrase @0 :Text;
  c @1 :Uint64;
}
```

1010
Deserialization is effective and usually doesn’t increase the system load.
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1012 1013
See also [Format Schema](#formatschema).

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## Protobuf {#protobuf}
1015 1016 1017 1018

Protobuf - is a [Protocol Buffers](https://developers.google.com/protocol-buffers/) format.

This format requires an external format schema. The schema is cached between queries.
1019 1020
ClickHouse supports both `proto2` and `proto3` syntaxes. Repeated/optional/required fields are supported.

1021 1022
Usage examples:

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``` sql
1024 1025 1026
SELECT * FROM test.table FORMAT Protobuf SETTINGS format_schema = 'schemafile:MessageType'
```

1027
``` bash
1028 1029 1030
cat protobuf_messages.bin | clickhouse-client --query "INSERT INTO test.table FORMAT Protobuf SETTINGS format_schema='schemafile:MessageType'"
```

1031
where the file `schemafile.proto` looks like this:
1032

1033
``` capnp
1034 1035 1036 1037 1038 1039 1040 1041 1042 1043
syntax = "proto3";

message MessageType {
  string name = 1;
  string surname = 2;
  uint32 birthDate = 3;
  repeated string phoneNumbers = 4;
};
```

1044
To find the correspondence between table columns and fields of Protocol Buffers’ message type ClickHouse compares their names.
1045
This comparison is case-insensitive and the characters `_` (underscore) and `.` (dot) are considered as equal.
1046
If types of a column and a field of Protocol Buffers’ message are different the necessary conversion is applied.
1047 1048 1049

Nested messages are supported. For example, for the field `z` in the following message type

1050
``` capnp
1051 1052 1053 1054 1055 1056 1057 1058 1059 1060 1061 1062
message MessageType {
  message XType {
    message YType {
      int32 z;
    };
    repeated YType y;
  };
  XType x;
};
```

ClickHouse tries to find a column named `x.y.z` (or `x_y_z` or `X.y_Z` and so on).
1063
Nested messages are suitable to input or output a [nested data structures](../sql-reference/data-types/nested-data-structures/nested.md).
1064

1065
Default values defined in a protobuf schema like this
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1067
``` capnp
1068 1069
syntax = "proto2";

1070 1071 1072 1073 1074
message MessageType {
  optional int32 result_per_page = 3 [default = 10];
}
```

1075
are not applied; the [table defaults](../sql-reference/statements/create/table.md#create-default-values) are used instead of them.
1076

1077 1078 1079 1080
ClickHouse inputs and outputs protobuf messages in the `length-delimited` format.
It means before every message should be written its length as a [varint](https://developers.google.com/protocol-buffers/docs/encoding#varints).
See also [how to read/write length-delimited protobuf messages in popular languages](https://cwiki.apache.org/confluence/display/GEODE/Delimiting+Protobuf+Messages).

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## ProtobufSingle {#protobufsingle}

Same as [Protobuf](#protobuf) but for storing/parsing single Protobuf message without length delimiters.

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## Avro {#data-format-avro}
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[Apache Avro](https://avro.apache.org/) is a row-oriented data serialization framework developed within Apache’s Hadoop project.
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ClickHouse Avro format supports reading and writing [Avro data files](https://avro.apache.org/docs/current/spec.html#Object+Container+Files).
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### Data Types Matching {#data_types-matching}
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The table below shows supported data types and how they match ClickHouse [data types](../sql-reference/data-types/index.md) in `INSERT` and `SELECT` queries.
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| Avro data type `INSERT`                     | ClickHouse data type                                                                                                  | Avro data type `SELECT`      |
|---------------------------------------------|-----------------------------------------------------------------------------------------------------------------------|------------------------------|
1097 1098 1099 1100 1101 1102 1103 1104 1105 1106 1107 1108 1109
| `boolean`, `int`, `long`, `float`, `double` | [Int(8\|16\|32)](../sql-reference/data-types/int-uint.md), [UInt(8\|16\|32)](../sql-reference/data-types/int-uint.md) | `int`                        |
| `boolean`, `int`, `long`, `float`, `double` | [Int64](../sql-reference/data-types/int-uint.md), [UInt64](../sql-reference/data-types/int-uint.md)                   | `long`                       |
| `boolean`, `int`, `long`, `float`, `double` | [Float32](../sql-reference/data-types/float.md)                                                                       | `float`                      |
| `boolean`, `int`, `long`, `float`, `double` | [Float64](../sql-reference/data-types/float.md)                                                                       | `double`                     |
| `bytes`, `string`, `fixed`, `enum`          | [String](../sql-reference/data-types/string.md)                                                                       | `bytes`                      |
| `bytes`, `string`, `fixed`                  | [FixedString(N)](../sql-reference/data-types/fixedstring.md)                                                          | `fixed(N)`                   |
| `enum`                                      | [Enum(8\|16)](../sql-reference/data-types/enum.md)                                                                    | `enum`                       |
| `array(T)`                                  | [Array(T)](../sql-reference/data-types/array.md)                                                                      | `array(T)`                   |
| `union(null, T)`, `union(T, null)`          | [Nullable(T)](../sql-reference/data-types/date.md)                                                                    | `union(null, T)`             |
| `null`                                      | [Nullable(Nothing)](../sql-reference/data-types/special-data-types/nothing.md)                                        | `null`                       |
| `int (date)` \*                             | [Date](../sql-reference/data-types/date.md)                                                                           | `int (date)` \*              |
| `long (timestamp-millis)` \*                | [DateTime64(3)](../sql-reference/data-types/datetime.md)                                                              | `long (timestamp-millis)` \* |
| `long (timestamp-micros)` \*                | [DateTime64(6)](../sql-reference/data-types/datetime.md)                                                              | `long (timestamp-micros)` \* |
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\* [Avro logical types](https://avro.apache.org/docs/current/spec.html#Logical+Types)
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Unsupported Avro data types: `record` (non-root), `map`

1115
Unsupported Avro logical data types: `time-millis`, `time-micros`, `duration`
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### Inserting Data {#inserting-data-1}
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To insert data from an Avro file into ClickHouse table:

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``` bash
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$ cat file.avro | clickhouse-client --query="INSERT INTO {some_table} FORMAT Avro"
```

The root schema of input Avro file must be of `record` type.

1127
To find the correspondence between table columns and fields of Avro schema ClickHouse compares their names. This comparison is case-sensitive.
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Unused fields are skipped.

1130
Data types of ClickHouse table columns can differ from the corresponding fields of the Avro data inserted. When inserting data, ClickHouse interprets data types according to the table above and then [casts](../sql-reference/functions/type-conversion-functions.md#type_conversion_function-cast) the data to corresponding column type.
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### Selecting Data {#selecting-data-1}
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To select data from ClickHouse table into an Avro file:

1136
``` bash
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$ clickhouse-client --query="SELECT * FROM {some_table} FORMAT Avro" > file.avro
```

Column names must:

1142 1143
-   start with `[A-Za-z_]`
-   subsequently contain only `[A-Za-z0-9_]`
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Output Avro file compression and sync interval can be configured with [output_format_avro_codec](../operations/settings/settings.md#settings-output_format_avro_codec) and [output_format_avro_sync_interval](../operations/settings/settings.md#settings-output_format_avro_sync_interval) respectively.
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## AvroConfluent {#data-format-avro-confluent}
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AvroConfluent supports decoding single-object Avro messages commonly used with [Kafka](https://kafka.apache.org/) and [Confluent Schema Registry](https://docs.confluent.io/current/schema-registry/index.html).

Each Avro message embeds a schema id that can be resolved to the actual schema with help of the Schema Registry.

Schemas are cached once resolved.

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Schema Registry URL is configured with [format_avro_schema_registry_url](../operations/settings/settings.md#format_avro_schema_registry_url).
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### Data Types Matching {#data_types-matching-1}
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Same as [Avro](#data-format-avro).
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### Usage {#usage}
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To quickly verify schema resolution you can use [kafkacat](https://github.com/edenhill/kafkacat) with [clickhouse-local](../operations/utilities/clickhouse-local.md):
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``` bash
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$ kafkacat -b kafka-broker  -C -t topic1 -o beginning -f '%s' -c 3 | clickhouse-local   --input-format AvroConfluent --format_avro_schema_registry_url 'http://schema-registry' -S "field1 Int64, field2 String"  -q 'select *  from table'
1 a
2 b
3 c
```

1172
To use `AvroConfluent` with [Kafka](../engines/table-engines/integrations/kafka.md):
1173 1174

``` sql
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CREATE TABLE topic1_stream
(
    field1 String,
    field2 String
)
ENGINE = Kafka()
SETTINGS
kafka_broker_list = 'kafka-broker',
kafka_topic_list = 'topic1',
kafka_group_name = 'group1',
kafka_format = 'AvroConfluent';

SET format_avro_schema_registry_url = 'http://schema-registry';

SELECT * FROM topic1_stream;
```

!!! note "Warning"
1193
    Setting `format_avro_schema_registry_url` needs to be configured in `users.xml` to maintain it’s value after a restart. Also you can use the `format_avro_schema_registry_url` setting of the `Kafka` table engine.
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## Parquet {#data-format-parquet}
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[Apache Parquet](https://parquet.apache.org/) is a columnar storage format widespread in the Hadoop ecosystem. ClickHouse supports read and write operations for this format.
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### Data Types Matching {#data_types-matching-2}
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1201
The table below shows supported data types and how they match ClickHouse [data types](../sql-reference/data-types/index.md) in `INSERT` and `SELECT` queries.
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| Parquet data type (`INSERT`) | ClickHouse data type                                      | Parquet data type (`SELECT`) |
|------------------------------|-----------------------------------------------------------|------------------------------|
1205 1206 1207 1208 1209 1210 1211 1212 1213 1214 1215 1216 1217 1218 1219
| `UINT8`, `BOOL`              | [UInt8](../sql-reference/data-types/int-uint.md)          | `UINT8`                      |
| `INT8`                       | [Int8](../sql-reference/data-types/int-uint.md)           | `INT8`                       |
| `UINT16`                     | [UInt16](../sql-reference/data-types/int-uint.md)         | `UINT16`                     |
| `INT16`                      | [Int16](../sql-reference/data-types/int-uint.md)          | `INT16`                      |
| `UINT32`                     | [UInt32](../sql-reference/data-types/int-uint.md)         | `UINT32`                     |
| `INT32`                      | [Int32](../sql-reference/data-types/int-uint.md)          | `INT32`                      |
| `UINT64`                     | [UInt64](../sql-reference/data-types/int-uint.md)         | `UINT64`                     |
| `INT64`                      | [Int64](../sql-reference/data-types/int-uint.md)          | `INT64`                      |
| `FLOAT`, `HALF_FLOAT`        | [Float32](../sql-reference/data-types/float.md)           | `FLOAT`                      |
| `DOUBLE`                     | [Float64](../sql-reference/data-types/float.md)           | `DOUBLE`                     |
| `DATE32`                     | [Date](../sql-reference/data-types/date.md)               | `UINT16`                     |
| `DATE64`, `TIMESTAMP`        | [DateTime](../sql-reference/data-types/datetime.md)       | `UINT32`                     |
| `STRING`, `BINARY`           | [String](../sql-reference/data-types/string.md)           | `STRING`                     |
| —                            | [FixedString](../sql-reference/data-types/fixedstring.md) | `STRING`                     |
| `DECIMAL`                    | [Decimal](../sql-reference/data-types/decimal.md)         | `DECIMAL`                    |
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1221
ClickHouse supports configurable precision of `Decimal` type. The `INSERT` query treats the Parquet `DECIMAL` type as the ClickHouse `Decimal128` type.
1222

1223 1224
Unsupported Parquet data types: `DATE32`, `TIME32`, `FIXED_SIZE_BINARY`, `JSON`, `UUID`, `ENUM`.

1225
Data types of ClickHouse table columns can differ from the corresponding fields of the Parquet data inserted. When inserting data, ClickHouse interprets data types according to the table above and then [cast](../query_language/functions/type_conversion_functions/#type_conversion_function-cast) the data to that data type which is set for the ClickHouse table column.
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1227
### Inserting and Selecting Data {#inserting-and-selecting-data}
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You can insert Parquet data from a file into ClickHouse table by the following command:
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``` bash
1232
$ cat {filename} | clickhouse-client --query="INSERT INTO {some_table} FORMAT Parquet"
1233 1234 1235 1236
```

You can select data from a ClickHouse table and save them into some file in the Parquet format by the following command:

1237
``` bash
1238 1239 1240
$ clickhouse-client --query="SELECT * FROM {some_table} FORMAT Parquet" > {some_file.pq}
```

1241
To exchange data with Hadoop, you can use [HDFS table engine](../engines/table-engines/integrations/hdfs.md).
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## Arrow {#data-format-arrow}
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[Apache Arrow](https://arrow.apache.org/) comes with two built-in columnar storage formats. ClickHouse supports read and write operations for these formats.

1247
`Arrow` is Apache Arrow’s “file mode” format. It is designed for in-memory random access.
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## ArrowStream {#data-format-arrow-stream}
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`ArrowStream` is Apache Arrow’s “stream mode” format. It is designed for in-memory stream processing.
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## ORC {#data-format-orc}
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[Apache ORC](https://orc.apache.org/) is a columnar storage format widespread in the Hadoop ecosystem. You can only insert data in this format to ClickHouse.
1256

1257
### Data Types Matching {#data_types-matching-3}
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1259
The table below shows supported data types and how they match ClickHouse [data types](../sql-reference/data-types/index.md) in `INSERT` queries.
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| ORC data type (`INSERT`) | ClickHouse data type                                |
|--------------------------|-----------------------------------------------------|
1263 1264 1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275 1276
| `UINT8`, `BOOL`          | [UInt8](../sql-reference/data-types/int-uint.md)    |
| `INT8`                   | [Int8](../sql-reference/data-types/int-uint.md)     |
| `UINT16`                 | [UInt16](../sql-reference/data-types/int-uint.md)   |
| `INT16`                  | [Int16](../sql-reference/data-types/int-uint.md)    |
| `UINT32`                 | [UInt32](../sql-reference/data-types/int-uint.md)   |
| `INT32`                  | [Int32](../sql-reference/data-types/int-uint.md)    |
| `UINT64`                 | [UInt64](../sql-reference/data-types/int-uint.md)   |
| `INT64`                  | [Int64](../sql-reference/data-types/int-uint.md)    |
| `FLOAT`, `HALF_FLOAT`    | [Float32](../sql-reference/data-types/float.md)     |
| `DOUBLE`                 | [Float64](../sql-reference/data-types/float.md)     |
| `DATE32`                 | [Date](../sql-reference/data-types/date.md)         |
| `DATE64`, `TIMESTAMP`    | [DateTime](../sql-reference/data-types/datetime.md) |
| `STRING`, `BINARY`       | [String](../sql-reference/data-types/string.md)     |
| `DECIMAL`                | [Decimal](../sql-reference/data-types/decimal.md)   |
1277

1278
ClickHouse supports configurable precision of the `Decimal` type. The `INSERT` query treats the ORC `DECIMAL` type as the ClickHouse `Decimal128` type.
1279 1280 1281

Unsupported ORC data types: `DATE32`, `TIME32`, `FIXED_SIZE_BINARY`, `JSON`, `UUID`, `ENUM`.

1282
The data types of ClickHouse table columns don’t have to match the corresponding ORC data fields. When inserting data, ClickHouse interprets data types according to the table above and then [casts](../sql-reference/functions/type-conversion-functions.md#type_conversion_function-cast) the data to the data type set for the ClickHouse table column.
1283

1284
### Inserting Data {#inserting-data-2}
1285

1286
You can insert ORC data from a file into ClickHouse table by the following command:
1287

1288
``` bash
1289
$ cat filename.orc | clickhouse-client --query="INSERT INTO some_table FORMAT ORC"
1290
```
1291

1292
To exchange data with Hadoop, you can use [HDFS table engine](../engines/table-engines/integrations/hdfs.md).
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## LineAsString {#lineasstring}

In this format, a sequence of string objects separated by a newline character is interpreted as a single value. This format can only be parsed for table with a single field of type [String](../sql-reference/data-types/string.md). The remaining columns must be set to  [DEFAULT](../sql-reference/statements/create/table.md#default) or [MATERIALIZED](../sql-reference/statements/create/table.md#materialized), or omitted.

**Example**

Query:

``` sql
DROP TABLE IF EXISTS line_as_string;
CREATE TABLE line_as_string (field String) ENGINE = Memory;
INSERT INTO line_as_string FORMAT LineAsString "I love apple", "I love banana", "I love orange";
SELECT * FROM line_as_string;
```

Result:

``` text
┌─field─────────────────────────────────────────────┐
│ "I love apple", "I love banana", "I love orange"; │
└───────────────────────────────────────────────────┘
```

## Regexp {#data-format-regexp}

When working with the `Regexp` format, you can use the following settings:

- `format_regexp` — [String](../sql-reference/data-types/string.md). Contains regular expression in the [re2](https://github.com/google/re2/wiki/Syntax) format.
- `format_regexp_escaping_rule` — [String](../sql-reference/data-types/string.md). The following escaping rules are supported:
    - CSV (similarly to [CSV](#csv))
    - JSON (similarly to [JSONEachRow](#jsoneachrow))
    - Escaped (similarly to [TSV](#tabseparated))
    - Quoted (similarly to [Values](#data-format-values))
    - Raw (extracts subpatterns as a whole, no escaping rules)
- `format_regexp_skip_unmatched` — [UInt8](../sql-reference/data-types/int-uint.md). Defines the need to throw an exeption in case the `format_regexp` expression does not match the imported data. Can be set to `0` or `1`. 

**Usage** 

The regular expression from `format_regexp` setting is applied to every line of imported data. The number of subpatterns in the regular expression must be equal to the number of columns in imported dataset. 

Lines of the imported data must be separated by newline character `'\n'` or DOS-style newline `"\r\n"` (except the `Raw` format, which does not support any escaping characters). 

The content of every matched subpattern is parsed with the method of corresponding data type, according to `format_regexp_escaping_rule` setting. 

If the regular expression does not match the line and `format_regexp_skip_unmatched` is set to 1, the line is silently skipped. If `format_regexp_skip_unmatched` is set to 0, exception is thrown.

**Example**

Consider the file data.tsv:

```text
id: 1 array: [1,2,3] string: str1 date: 2020-01-01
id: 2 array: [1,2,3] string: str2 date: 2020-01-02
id: 3 array: [1,2,3] string: str3 date: 2020-01-03
```
and the table:

```sql
CREATE TABLE imp_regex_table (id UInt32, array Array(UInt32), string String, date Date) ENGINE = Memory;
```

Import command:

```bash
$ cat data.tsv | clickhouse-client  --query "INSERT INTO imp_regex_table FORMAT Regexp SETTINGS format_regexp='id: (.+?) array: (.+?) string: (.+?) date: (.+?)', format_regexp_escaping_rule='Escaped', format_regexp_skip_unmatched=0;"
```

Query:

```sql
SELECT * FROM imp_regex_table;
```

Result:

```txt
┌─id─┬─array───┬─string─┬───────date─┐
│  1 │ [1,2,3] │ str1   │ 2020-01-01 │
│  2 │ [1,2,3] │ str2   │ 2020-01-02 │
│  3 │ [1,2,3] │ str3   │ 2020-01-03 │
└────┴─────────┴────────┴────────────┘
```

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## Format Schema {#formatschema}
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The file name containing the format schema is set by the setting `format_schema`.
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It’s required to set this setting when it is used one of the formats `Cap'n Proto` and `Protobuf`.
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The format schema is a combination of a file name and the name of a message type in this file, delimited by a colon,
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e.g. `schemafile.proto:MessageType`.
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If the file has the standard extension for the format (for example, `.proto` for `Protobuf`),
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it can be omitted and in this case, the format schema looks like `schemafile:MessageType`.
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If you input or output data via the [client](../interfaces/cli.md) in the [interactive mode](../interfaces/cli.md#cli_usage), the file name specified in the format schema
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can contain an absolute path or a path relative to the current directory on the client.
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If you use the client in the [batch mode](../interfaces/cli.md#cli_usage), the path to the schema must be relative due to security reasons.

If you input or output data via the [HTTP interface](../interfaces/http.md) the file name specified in the format schema
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should be located in the directory specified in [format_schema_path](../operations/server-configuration-parameters/settings.md#server_configuration_parameters-format_schema_path)
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in the server configuration.

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## Skipping Errors {#skippingerrors}
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Some formats such as `CSV`, `TabSeparated`, `TSKV`, `JSONEachRow`, `Template`, `CustomSeparated` and `Protobuf` can skip broken row if parsing error occurred and continue parsing from the beginning of next row. See [input_format_allow_errors_num](../operations/settings/settings.md#settings-input_format_allow_errors_num) and
[input_format_allow_errors_ratio](../operations/settings/settings.md#settings-input_format_allow_errors_ratio) settings.
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Limitations:
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- In case of parsing error `JSONEachRow` skips all data until the new line (or EOF), so rows must be delimited by `\n` to count errors correctly.
- `Template` and `CustomSeparated` use delimiter after the last column and delimiter between rows to find the beginning of next row, so skipping errors works only if at least one of them is not empty.
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[Original article](https://clickhouse.tech/docs/en/interfaces/formats/) <!--hide-->