Awesome
ChunJun
<p align="left"> <img src="https://img.shields.io/github/stars/DTStack/chunjun?style=social" alt="npm version" /> <img src="https://img.shields.io/github/license/DTStack/chunjun" alt="license" /> <a href="https://github.com/DTStack/chunjun/releases"><img src="https://img.shields.io/github/downloads/DTStack/chunjun/total" alt="npm downloads" /></a> <img src="https://img.shields.io/gitlab/coverage/DTStack/chunjun/master" alt="master coverage" /> </p>Introduce
ChunJun is a distributed integration framework, and currently is based on Apache Flink. It was initially known as FlinkX and renamed ChunJun on February 22, 2022. It can realize data synchronization and calculation between various heterogeneous data sources. ChunJun has been deployed and running stably in thousands of companies so far.
Official website of ChunJun: https://dtstack.github.io/chunjun/
Features of ChunJun
ChunJun abstracts different databases into reader/source plugins, writer/sink plugins and lookup plugins, and it has the following features:
- Based on the real-time computing engine--Flink, and supports JSON template and SQL script configuration tasks. The SQL script is compatible with Flink SQL syntax;
- Supports distributed operation, support flink-standalone, yarn-session, yarn-per job and other submission methods;
- Supports Docker one-click deployment, support deploy and run on k8s;
- Supports a variety of heterogeneous data sources, and supports synchronization and calculation of more than 20 data sources such as MySQL, Oracle, SQLServer, Hive, Kudu, etc.
- Easy to expand, highly flexible, newly expanded data source plugins can integrate with existing data source plugins instantly, plugin developers do not need to care about the code logic of other plugins;
- Not only supports full synchronization, but also supports incremental synchronization and interval training;
- Not only supports offline synchronization and calculation, but also compatible with real-time scenarios;
- Supports dirty data storage, and provide indicator monitoring, etc.;
- Cooperate with the flink checkpoint mechanism to achieve breakpoint resuming, task disaster recovery;
- Not only supports synchronizing DML data, but also supports DDL synchronization, like 'CREATE TABLE', 'ALTER COLUMN', etc.;
Build And Compilation
Get the code
Use the git to clone the code of ChunJun
git clone https://github.com/DTStack/chunjun.git
build
Execute the command in the project directory.
./mvnw clean package
Or execute
sh build/build.sh
Common problem
Compiling module 'ChunJun-core' then throws 'Failed to read artifact descriptor for com.google.errorprone:javac-shaded'
Error message:
[ERROR]Failed to execute goal com.diffplug.spotless:spotless-maven-plugin:2.4.2:check(spotless-check)on project chunjun-core:
Execution spotless-check of goal com.diffplug.spotless:spotless-maven-plugin:2.4.2:check failed:Unable to resolve dependencies:
Failed to collect dependencies at com.google.googlejavaformat:google-java-format:jar:1.7->com.google.errorprone:javac-shaded:jar:9+181-r4173-1:
Failed to read artifact descriptor for com.google.errorprone:javac-shaded:jar:9+181-r4173-1:Could not transfer artifact
com.google.errorprone:javac-shaded:pom:9+181-r4173-1 from/to aliyunmaven(https://maven.aliyun.com/repository/public):
Access denied to:https://maven.aliyun.com/repository/public/com/google/errorprone/javac-shaded/9+181-r4173-1/javac-shaded-9+181-r4173-1.pom -> [Help 1]
Solution: Download the 'javac-shaded-9+181-r4173-1.jar' from url 'https://repo1.maven.org/maven2/com/google/errorprone/javac-shaded/9+181-r4173-1/javac-shaded-9+181-r4173-1.jar', and then install locally by using command below:
mvn install:install-file -DgroupId=com.google.errorprone -DartifactId=javac-shaded -Dversion=9+181-r4173-1 -Dpackaging=jar -Dfile=./jars/javac-shaded-9+181-r4173-1.jar
Quick Start
The following table shows the correspondence between the branches of ChunJun and the version of flink. If the versions are not aligned, problems such as 'Serialization Exceptions', 'NoSuchMethod Exception', etc. mysql occur in tasks.
Branches | Flink version |
---|---|
master | 1.16.1 |
1.12_release | 1.12.7 |
1.10_release | 1.10.1 |
1.8_release | 1.8.3 |
ChunJun supports running tasks in multiple modes. Different modes depend on different environments and steps. The following are
Local
Local mode does not depend on the Flink environment and Hadoop environment, and starts a JVM process in the local environment to perform tasks.
Steps
Go to the directory of 'chunjun-dist' and execute the command below:
sh bin/chunjun-local.sh -job $SCRIPT_PATH
The parameter of "$SCRIPT_PATH" means 'the path where the task script is located'. After execute, you can perform a task locally.
note:
when you package in windows and run sh in linux , you need to execute command sed -i "s/\r//g" bin/*.sh to fix the '\r' problems.
Standalone
Standalone mode depend on the Flink Standalone environment and does not depend on the Hadoop environment.
Steps
1. add jars of chunjun
-
Find directory of jars: if you build this project using maven, the directory name is 'chunjun-dist' ; if you download tar.gz file from release page, after decompression, the directory name would be like 'chunjun-assembly-${revision}-chunjun-dist'.
-
Copy jars to directory of Flink lib, command example:
cp -r chunjun-dist $FLINK_HOME/lib
Notice: this operation should be executed in all machines of Flink cluster, otherwise some jobs will fail because of ClassNotFoundException.
2. Start Flink Standalone Cluster
sh $FLINK_HOME/bin/start-cluster.sh
After the startup is successful, the default port of Flink Web is 8081, which you can configure in the file of 'flink-conf.yaml'. We can access the 8081 port of the current machine to enter the flink web of standalone cluster.
3. Submit task
Go to the directory of 'chunjun-dist' and execute the command below:
sh bin/chunjun-standalone.sh -job chunjun-examples/json/stream/stream.json
After the command execute successfully, you can observe the task staus on the flink web.
Yarn Session
YarnSession mode depends on the Flink jars and Hadoop environments, and the yarn-session needs to be started before the task is submitted.
Steps
1. Start yarn-session environment
Yarn-session mode depend on Flink and Hadoop environment. You need to set $HADOOP_HOME and $FLINK_HOME in advance, and we need to upload 'chunjun-dist' with yarn-session '-t' parameter.
cd $FLINK_HOME/bin
./yarn-session -t $CHUNJUN_HOME -d
2. Submit task
Get the application id $SESSION_APPLICATION_ID corresponding to the yarn-session through yarn web, then enter the directory 'chunjun-dist' and execute the command below:
sh ./bin/chunjun-yarn-session.sh -job chunjun-examples/json/stream/stream.json -confProp {\"yarn.application.id\":\"SESSION_APPLICATION_ID\"}
'yarn.application.id' can also be set in 'flink-conf.yaml'. After the submission is successful, the task status can be observed on the yarn web.
Yarn Per-Job
Yarn Per-Job mode depend on Flink and Hadoop environment. You need to set $HADOOP_HOME and $FLINK_HOME in advance.
Steps
The yarn per-job task can be submitted after the configuration is correct. Then enter the directory 'chunjun-dist' and execute the command below:
sh ./bin/chunjun-yarn-perjob.sh -job chunjun-examples/json/stream/stream.json
After the submission is successful, the task status can be observed on the yarn web.
Docs of Connectors
For details, please visit:https://dtstack.github.io/chunjun/documents/
Contributors
Thanks to all contributors! We are very happy that you can contribute Chunjun.
<a href="https://github.com/DTStack/chunjun/graphs/contributors"> <img src="https://contrib.rocks/image?repo=DTStack/chunjun" alt="contributors"/> </a>Contributor Over Time
License
ChunJun is under the Apache 2.0 license. Please visit LICENSE for details.
Contact Us
Join ChunJun Slack. https://join.slack.com/t/chunjun/shared_invite/zt-1hzmvh0o3-qZ726NXmhClmLFRMpEDHYw