index.md 13.5 KB
Newer Older
D
dingbo 已提交
1
---
D
dingbo 已提交
2
title: Introduction
D
dingbo 已提交
3 4 5
toc_max_heading_level: 2
---

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
6
TDengine is a high-performance, scalable [time-series database](https://tdengine.com/tsdb) with SQL support. Its code, including its cluster feature is open source under GNU AGPL v3.0. Besides the database engine, it provides [caching](/develop/cache), [stream processing](/develop/continuous-query), [data subscription](/develop/subscribe)  and other functionalities to reduce the complexity and cost of development and operation.
陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
7

C
Chait Diwadkar 已提交
8
This section introduces the major features, competitive advantages, typical use-cases and benchmarks to help you get a high level overview of TDengine.
陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
9 10 11 12

## Major Features

The major features are listed below:
陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
13

C
Chait Diwadkar 已提交
14 15 16 17
1. While TDengine supports [using SQL to insert](/develop/insert-data/sql-writing), it also supports [Schemaless writing](/reference/schemaless/) just like NoSQL databases. TDengine also supports standard protocols like [InfluxDB LINE](/develop/insert-data/influxdb-line)[OpenTSDB Telnet](/develop/insert-data/opentsdb-telnet), [OpenTSDB JSON ](/develop/insert-data/opentsdb-json) among others.
2. TDengine supports seamless integration with third-party data collection agents like [Telegraf](/third-party/telegraf)[Prometheus](/third-party/prometheus)[StatsD](/third-party/statsd)[collectd](/third-party/collectd)[icinga2](/third-party/icinga2), [TCollector](/third-party/tcollector), [EMQX](/third-party/emq-broker), [HiveMQ](/third-party/hive-mq-broker). These agents can write data into TDengine with simple configuration and without a single line of code. 
3. Support for [all kinds of queries](/develop/query-data), including aggregation, nested query, downsampling, interpolation and others.
4. Support for [user defined functions](/develop/udf).
18 19 20 21
5. Support for [caching](/develop/cache). TDengine always saves the last data point in cache, so Redis is not needed in some scenarios.
6. Support for [continuous query](/develop/continuous-query).
7. Support for [data subscription](/develop/subscribe) with the capability to specify filter conditions.
8. Support for [cluster](/cluster/), with the capability of increasing processing power by adding more nodes. High availability is supported by replication. 
C
Chait Diwadkar 已提交
22
9. Provides an interactive [command-line interface](/reference/taos-shell) for management, maintenance and ad-hoc queries.
23
10. Provides many ways to [import](/operation/import) and [export](/operation/export) data.
C
Chait Diwadkar 已提交
24
11. Provides [monitoring](/operation/monitor) on running instances of TDengine.
25 26
12. Provides [connectors](/reference/connector/) for [C/C++](/reference/connector/cpp), [Java](/reference/connector/java), [Python](/reference/connector/python), [Go](/reference/connector/go), [Rust](/reference/connector/rust), [Node.js](/reference/connector/node) and other programming languages.
13. Provides a [REST API](/reference/rest-api/).
C
Chait Diwadkar 已提交
27
14. Supports seamless integration with [Grafana](/third-party/grafana) for visualization.
28 29
15. Supports seamless integration with Google Data Studio.

C
Chait Diwadkar 已提交
30
For more details on features, please read through the entire documentation. 
陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
31

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
32
## Competitive Advantages
陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
33

C
Chait Diwadkar 已提交
34
Time-series data is structured, not transactional, and is rarely deleted or updated. TDengine makes full use of [these characteristics of time series data](https://tdengine.com/2019/07/09/86.html) to build its own innovative storage engine and computing engine to differentiate itself from other time series databases, with the following advantages.
D
dingbo 已提交
35

C
Chait Diwadkar 已提交
36
- **[High Performance](https://tdengine.com/fast)**: With an innovatively designed and purpose-built storage engine, TDengine outperforms other time series databases in data ingestion and querying while significantly reducing storage costs and compute costs.
D
dingbo 已提交
37

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
38
- **[Scalable](https://tdengine.com/scalable)**: TDengine provides out-of-box scalability and high-availability through its native distributed design. Nodes can be added through simple configuration to achieve greater data processing power. In addition, this feature is open source.
D
dingbo 已提交
39

C
Chait Diwadkar 已提交
40
- **[SQL Support](https://tdengine.com/sql-support)**: TDengine uses SQL as the query language, thereby reducing learning and migration costs, while adding SQL extensions to better handle time-series. Keeping NoSQL developers in mind, TDengine also supports convenient and flexible, schemaless data ingestion.
D
dingbo 已提交
41

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
42
- **All in One**: TDengine has built-in caching, stream processing and data subscription functions. It is no longer necessary to integrate Kafka/Redis/HBase/Spark or other software in some scenarios. It makes the system architecture much simpler, cost-effective and easier to maintain.
D
dingbo 已提交
43

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
44
- **Seamless Integration**: Without a single line of code, TDengine provide seamless, configurable integration with third-party tools such as Telegraf, Grafana, EMQX, Prometheus, StatsD, collectd, etc. More third-party tools are being integrated.
D
dingbo 已提交
45

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
46
- **Zero Management**: Installation and cluster setup can be done in seconds. Data partitioning and sharding are executed automatically. TDengine’s running status can be monitored via Grafana or other DevOps tools.
D
dingbo 已提交
47

C
Chait Diwadkar 已提交
48
- **Zero Learning Costs**: With SQL as the query language and support for ubiquitous tools like Python, Java, C/C++, Go, Rust, and Node.js connectors, and a REST API, there are zero learning costs.
D
dingbo 已提交
49

C
Chait Diwadkar 已提交
50
- **Interactive Console**: TDengine provides convenient console access to the database, through a CLI, to run ad hoc queries, maintain the database, or manage the cluster, without any programming.
D
dingbo 已提交
51

C
Chait Diwadkar 已提交
52
With TDengine, the total cost of ownership of your time-series data platform can be greatly reduced. 1: With its superior performance, the computing and storage resources are reduced significantly 2: With SQL support, it can be seamlessly integrated with many third party tools, and learning costs/migration costs are reduced significantly 3: With its simple architecture and zero management, the operation and maintenance costs are reduced. 
D
dingbo 已提交
53

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
54
## Technical Ecosystem
C
Chait Diwadkar 已提交
55
This is how TDengine would be situated, in a typical time-series data processing platform:
D
dingbo 已提交
56

D
dingbo 已提交
57
![TDengine Database Technical Ecosystem ](eco_system.webp)
D
dingbo 已提交
58

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
59
<center>Figure 1. TDengine Technical Ecosystem</center>
D
dingbo 已提交
60

C
Chait Diwadkar 已提交
61
On the left-hand side, there are data collection agents like OPC-UA, MQTT, Telegraf and Kafka. On the right-hand side, visualization/BI tools, HMI, Python/R, and IoT Apps can be connected. TDengine itself provides an interactive command-line interface and a web interface for management and maintenance.
陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
62

C
Chait Diwadkar 已提交
63
## Typical Use Cases
D
dingbo 已提交
64

C
Chait Diwadkar 已提交
65
As a high-performance, scalable and SQL supported time-series database, TDengine's typical use case include but are not limited to IoT, Industrial Internet, Connected Vehicles, IT operation and maintenance, energy, financial markets and other fields. TDengine is a purpose-built database optimized for the characteristics of time series data. As such, it cannot be used to process data from web crawlers, social media, e-commerce, ERP, CRM and so on. More generally TDengine is not a suitable storage engine for non-time-series data. This section makes a more detailed analysis of the applicable scenarios.
D
dingbo 已提交
66

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
67
### Characteristics and Requirements of Data Sources
D
dingbo 已提交
68

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
69 70 71 72 73
| **Data Source Characteristics and Requirements**         | **Not Applicable** | **Might Be Applicable** | **Very Applicable** | **Description**                                              |
| -------------------------------------------------------- | ------------------ | ----------------------- | ------------------- | :----------------------------------------------------------- |
| A massive amount of total data                              |                    |                         | √                   | TDengine provides excellent scale-out functions in terms of capacity, and has a storage structure with matching high compression ratio to achieve the best storage efficiency in the industry.|
| Data input velocity is extremely high |                    |                         | √                   | TDengine's performance is much higher than that of other similar products. It can continuously process larger amounts of input data in the same hardware environment, and provides a performance evaluation tool that can easily run in the user environment. |
| A huge number of data sources                            |                    |                         | √                   | TDengine is optimized specifically for a huge number of data sources. It is especially suitable for efficiently ingesting, writing and querying data from billions of data sources. |
D
dingbo 已提交
74

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
75
### System Architecture Requirements
D
dingbo 已提交
76

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
77 78 79 80
| **System Architecture Requirements**              | **Not Applicable** | **Might Be Applicable** | **Very Applicable** | **Description**                                              |
| ------------------------------------------------- | ------------------ | ----------------------- | ------------------- | ------------------------------------------------------------ |
| A simple and reliable system architecture |                    |                         | √                   | TDengine's system architecture is very simple and reliable, with its own message queue, cache, stream computing, monitoring and other functions. There is no need to integrate any additional third-party products. |
| Fault-tolerance and high-reliability      |                    |                         | √                   | TDengine has cluster functions to automatically provide high-reliability and high-availability functions such as fault tolerance and disaster recovery. |
81
| Standardization support                    |                    |                         | √                   | TDengine supports standard SQL and provides SQL extensions for time-series data analysis. |
D
dingbo 已提交
82

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
83
### System Function Requirements
D
dingbo 已提交
84

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
85 86 87 88
| **System Function Requirements**              | **Not Applicable** | **Might Be Applicable** | **Very Applicable** | **Description**                                              |
| ------------------------------------------------- | ------------------ | ----------------------- | ------------------- | ------------------------------------------------------------ |
| Complete data processing algorithms built-in |                    | √                    |                     | While TDengine implements various general data processing algorithms, industry specific algorithms and special types of processing will need to be implemented at the application level.|
| A large number of crosstab queries             |                    | √                    |                     | This type of processing is better handled by general purpose relational database systems but TDengine can work in concert with relational database systems to provide more complete solutions. |
D
dingbo 已提交
89

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
90
### System Performance Requirements
D
dingbo 已提交
91

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
92 93 94 95
| **System Performance Requirements**              | **Not Applicable** | **Might Be Applicable** | **Very Applicable** | **Description**                                              |
| ------------------------------------------------- | ------------------ | ----------------------- | ------------------- | ------------------------------------------------------------ |
| Very large total processing capacity     |                    |                      | √                   | TDengine’s cluster functions can easily improve processing capacity via multi-server coordination. |
| Extremely high-speed data processing           |                    |                      | √                   | TDengine’s storage and data processing are optimized for IoT, and can process data many times faster than similar products.|
96
| Extremely fast processing of high resolution data |                    |                      | √                   | TDengine has achieved the same or better performance than other relational and NoSQL data processing systems. |
D
dingbo 已提交
97

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
98
### System Maintenance Requirements
D
dingbo 已提交
99

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
100 101 102 103 104
| **System Maintenance Requirements**              | **Not Applicable** | **Might Be Applicable** | **Very Applicable** | **Description**                                              |
| ------------------------------------------------- | ------------------ | ----------------------- | ------------------- | ------------------------------------------------------------ |
| Native high-reliability         |                    |                      | √                   | TDengine has a very robust, reliable and easily configurable system architecture to simplify routine operation. Human errors and accidents are eliminated to the greatest extent, with a streamlined experience for operators. |
| Minimize learning and maintenance costs |                    |                      | √                   | In addition to being easily configurable, standard SQL support and the Taos shell for ad hoc queries makes maintenance simpler, allows reuse and reduces learning costs.|
| Abundant talent supply               | √                  |                      |                     | Given the above, and given the extensive training and professional services provided by TDengine, it is easy to migrate from existing solutions or create a new and lasting solution based on TDengine.|
D
dingbo 已提交
105

D
dingbo 已提交
106
## Comparison with other databases
D
dingbo 已提交
107

陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
108 109 110 111 112
- [Writing Performance Comparison of TDengine and InfluxDB ](https://tdengine.com/2022/02/23/4975.html)
- [Query Performance Comparison of TDengine and InfluxDB](https://tdengine.com/2022/02/24/5120.html)
- [TDengine vs InfluxDB、OpenTSDB、Cassandra、MySQL、ClickHouse](https://www.tdengine.com/downloads/TDengine_Testing_Report_en.pdf)
- [TDengine vs OpenTSDB](https://tdengine.com/2019/09/12/710.html)
- [TDengine vs Cassandra](https://tdengine.com/2019/09/12/708.html)
陶建辉(Jeff)'s avatar
陶建辉(Jeff) 已提交
113
- [TDengine vs InfluxDB](https://tdengine.com/2019/09/12/706.html)