Skip to content
An open-source big data platform designed and optimized for the Internet of Things (IoT).
C Python Java Shell C++ JavaScript Other
Branch: develop
Clone or download

Latest commit

guanshengliang Merge pull request #2050 from taosdata/feature/tagschema
[TD-90]Change TagSchema Feature/tagschema
Latest commit f71c5ae May 27, 2020

Files

Permalink
Type Name Latest commit message Commit time
Failed to load latest commit information.
.github/ISSUE_TEMPLATE Update issue templates Aug 24, 2019
cmake [td-225] May 12, 2020
deps Rearrange the source code directory Apr 15, 2020
documentation update connector document May 27, 2020
importSampleData add savetb option Jan 7, 2020
minidevops modify minidevops readme Feb 12, 2020
packaging [td-183] May 7, 2020
src Merge pull request #2050 from taosdata/feature/tagschema May 27, 2020
tests Merge pull request #2045 from taosdata/hotfix/sangshuduo/fix-importPe… May 27, 2020
.appveyor.yml [TD-65] add travis, appveyor, and coverity scan to new develop branch… Apr 2, 2020
.clang-format TDengine first commit Jul 11, 2019
.codecov.yml add codecov email notificatin. Apr 18, 2020
.gitignore Add mqtt plugin to subscribe to telemetry data May 22, 2020
.gitmodules change go driver to git submodule. Apr 10, 2020
.travis.yml change xenial to bionic for using python3.6 and fix pytest script. May 21, 2020
CMakeLists.txt fix status message error Apr 16, 2020
CMakeSettings.json Add mqtt plugin to subscribe to telemetry data May 22, 2020
CODE_OF_CONDUCT.md TDengine first commit Jul 11, 2019
CONTRIBUTING.md Update CONTRIBUTING.md Aug 2, 2019
LICENSE TDengine first commit Jul 11, 2019
README.md Update README.md May 15, 2020
TDenginelogo.png TDengine first commit Jul 11, 2019

README.md

Build Status Build status

TDengine

What is TDengine?

TDengine is an open-sourced big data platform under GNU AGPL v3.0, designed and optimized for the Internet of Things (IoT), Connected Cars, Industrial IoT, and IT Infrastructure and Application Monitoring. Besides the 10x faster time-series database, it provides caching, stream computing, message queuing and other functionalities to reduce the complexity and cost of development and operation.

  • 10x Faster on Insert/Query Speeds: Through the innovative design on storage, on a single-core machine, over 20K requests can be processed, millions of data points can be ingested, and over 10 million data points can be retrieved in a second. It is 10 times faster than other databases.

  • 1/5 Hardware/Cloud Service Costs: Compared with typical big data solutions, less than 1/5 of computing resources are required. Via column-based storage and tuned compression algorithms for different data types, less than 1/10 of storage space is needed.

  • Full Stack for Time-Series Data: By integrating a database with message queuing, caching, and stream computing features together, it is no longer necessary to integrate Kafka/Redis/HBase/Spark or other software. It makes the system architecture much simpler and more robust.

  • Powerful Data Analysis: Whether it is 10 years or one minute ago, data can be queried just by specifying the time range. Data can be aggregated over time, multiple time streams or both. Ad Hoc queries or analyses can be executed via TDengine shell, Python, R or Matlab.

  • Seamless Integration with Other Tools: Telegraf, Grafana, Matlab, R, and other tools can be integrated with TDengine without a line of code. MQTT, OPC, Hadoop, Spark, and many others will be integrated soon.

  • Zero Management, No Learning Curve: It takes only seconds to download, install, and run it successfully; there are no other dependencies. Automatic partitioning on tables or DBs. Standard SQL is used, with C/C++, Python, JDBC, Go and RESTful connectors.

Documentation

For user manual, system design and architecture, engineering blogs, refer to TDengine Documentation for details. The documentation from our website can also be downloaded locally from documentation/tdenginedocs-en or documentation/tdenginedocs-cn.

Building

At the moment, TDengine only supports building and running on Linux systems. You can choose to install from packages or from the source code. This quick guide is for installation from the source only.

To build TDengine, use CMake 2.8 or higher versions in the project directory. Install CMake for example on Ubuntu:

sudo apt-get install -y cmake build-essential

To compile and package the JDBC driver source code, you should have a Java jdk-8 or higher and Apache Maven 2.7 or higher installed. To install openjdk-8 on Ubuntu:

sudo apt-get install openjdk-8-jdk

To install Apache Maven on Ubuntu:

sudo apt-get install maven

Build TDengine:

mkdir build && cd build
cmake .. && cmake --build .

To compile on an ARM processor (aarch64 or aarch32), please add option CPUTYPE as below:

aarch64:

cmake .. -DCPUTYPE=aarch64 && cmake --build .

aarch32:

cmake .. -DCPUTYPE=aarch32 && cmake --build .

Quick Run

To quickly start a TDengine server after building, run the command below in terminal:

./build/bin/taosd -c test/cfg

In another terminal, use the TDengine shell to connect the server:

./build/bin/taos -c test/cfg

option "-c test/cfg" specifies the system configuration file directory.

Installing

After building successfully, TDengine can be installed by:

make install

Users can find more information about directories installed on the system in the directory and files section. It should be noted that installing from source code does not configure service management for TDengine. Users can also choose to install from packages for it.

To start the service after installation, in a terminal, use:

taosd

Then users can use the TDengine shell to connect the TDengine server. In a terminal, use:

taos

If TDengine shell connects the server successfully, welcome messages and version info are printed. Otherwise, an error message is shown.

Try TDengine

It is easy to run SQL commands from TDengine shell which is the same as other SQL databases.

create database db;
use db;
create table t (ts timestamp, a int);
insert into t values ('2019-07-15 00:00:00', 1);
insert into t values ('2019-07-15 01:00:00', 2);
select * from t;
drop database db;

Developing with TDengine

Official Connectors

TDengine provides abundant developing tools for users to develop on TDengine. Follow the links below to find your desired connectors and relevant documentation.

Third Party Connectors

The TDengine community has also kindly built some of their own connectors! Follow the links below to find the source code for them.

How to run the test cases and how to add a new test case?

TDengine's test framework and all test cases are fully open source. Please refer to this document for how to run test and develop new test case.

TDengine Roadmap

  • Support event-driven stream computing
  • Support user defined functions
  • Support MQTT connection
  • Support OPC connection
  • Support Hadoop, Spark connections
  • Support Tableau and other BI tools

Contribute to TDengine

Please follow the contribution guidelines to contribute to the project.

Join TDengine WeChat Group

Add WeChat “tdengine” to join the group,you can communicate with other users.

You can’t perform that action at this time.