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DataPull

DataPull is a self-service Distributed ETL tool to join and transform data from heterogeneous datastores. It provides users an easy and consistent way to move data from one datastore to another. Supported datastores include, but are not limited to, SQLServer, MySql, Postgres, Cassandra, MongoDB, and Kafka.

Features

  1. JSON configuration-driven data movement - no Java/Scala knowledge needed
  2. Join and transform data among heterogeneous datastores (including NoSQL datastores) using ANSI SQL
  3. Deploys on Amazon AWS EMR and Fargate; but can run on any Spark cluster
  4. Picks up datastore credentials stored in Hashicorp Vault, Amazon Secrets Manager
  5. Execution logs and migration history configurable to Amazon AWS Cloudwatch, S3
  6. Use built-in cron scheduler, or call REST API from external schedulers

... and many more features documented here

Run DataPull locally

Note: DataPull consists of two services, an API written in Java Spring Boot, and a Spark app written in Scala. Although Scala apps can run on JDK 11, per official docs it is recommended that Java 8 be used for compiling Scala code. The effort to upgrade to OpenJDK 11+ is tracked here

Build and execute within a Dockerised Spark environment

Pre-requisite: Docker Desktop

  • Clone this repo locally and check out the master branch
    git clone [email protected]:homeaway/datapull.git
  • Build a local docker image for running spark as a dockerised server
    cd ./datapull
    docker build -f ./core/docker_spark_server/Dockerfile -t expedia/spark2.4.7-scala2.11-hadoop2.10.1 ./core/docker_spark_server
  • build the Scala JAR from within the core folder
    cd ./core
    cp ./src/main/resources/application-dev.yml ./src/main/resources/application.yml
    docker run -e MAVEN_OPTS="-Xmx1024M -Xss128M -XX:MetaspaceSize=512M -XX:MaxMetaspaceSize=1024M -XX:+CMSClassUnloadingEnabled" --rm -v "${PWD}":/usr/src/mymaven -v "${HOME}/.m2":/root/.m2 -w /usr/src/mymaven maven:3.6.3-jdk-8 mvn clean install
  • Execute a sample JSON input file Input_Sample_filesystem-to-filesystem.json that moves data from a CSV file HelloWorld.csv to a folder of json files named SampleData_Json.
    docker run -v $(pwd):/core -w /core -it --rm expedia/spark2.4.7-scala2.11-hadoop2.10.1 spark-submit --packages org.apache.spark:spark-sql_2.11:2.4.7,org.apache.spark:spark-avro_2.11:2.4.7,org.apache.spark:spark-sql-kafka-0-10_2.11:2.4.7 --deploy-mode client --class core.DataPull target/DataMigrationFramework-1.0-SNAPSHOT-jar-with-dependencies.jar src/main/resources/Samples/Input_Sample_filesystem-to-filesystem.json local
    
  • Open the relative path target/classes/SampleData_Json to find the result of the DataPull i.e. the data from target/classes/SampleData/HelloWorld/HelloWorld.csv transformed into JSON.

Pro-tip: The folder target/classes/SampleData_Json is created by the docker spark container, so you will not be able to delete it until you take ownership of it by running sudo chown -R $(whoami):$(whoami) .

Build and debug within an IDE (IntelliJ)

Pre-requisite: IntelliJ with Scala plugin configured. Check out this Help page if this plugin is not installed.

  • Clone this repo locally and check out the master branch
  • Open the folder core in IntelliJ IDE.
  • When prompted, add this project as a maven project.
  • By default, this source code is designed to execute a sample JSON input file Input_Sample_filesystem-to-filesystem.json that moves data from a CSV file HelloWorld.csv to a folder of json files named SampleData_Json.
  • Go to File > Project Structure... , and choose 1.8 (java version) as the Project SDK
  • Go to Run > Edit Configurations... , and do the following
    • Create an Application configuration (use the + sign on the top left corner of the modal window)
    • Set the Name to Debug
    • Set the Main Class as Core.DataPull
    • Use classpath of module Core.DataPull
    • Set JRE to 1.8
    • Click Apply and then OK
  • Click Run > Debug 'Debug' to start the debug execution
  • Open the relative path target/classes/SampleData_Json to find the result of the DataPull i.e. the data from target/classes/SampleData/HelloWorld/HelloWorld.csv transformed into JSON.

Deploy DataPull to Amazon AWS

Deploying DataPull to Amazon AWS, involves

  • installing the DataPull API and Spark JAR in AWS Fargate, using this runbook
  • running DataPulls in AWS EMR, using this runbook

Manual Tests

Please follow instructions in manual-tests/README.md

Contribute to this project

Bugs/Feature Requests

Please create an issue in this git repo, using the bug report or feature request templates.

Documentation

DataPull documentation is available at https://homeaway.github.io/datapull/ . To update this documentation, please do the following steps...

  1. Fork the DataPull repo

  2. In terminal from the root of the repo, run

    1. if Docker is installed, run
    docker run --rm -it -p 8000:8000 -v ${PWD}/docs:/docs squidfunk/mkdocs-material
    
    1. or, if MkDocs and Material for MkDocs are installed, run
    cd docs
    mkdocs serve
    
  3. Open http://127.0.0.1/8000 to see a preview of the documentation site. You can edit the documentation by following https://www.mkdocs.org/#getting-started

  4. Once you're done updating the documentation, please commit and push your updates to your forked repo.

  5. In terminal from the root of the forked repo, run one of the following command blocks, to update and push your gh-pages branch.

    1. if Docker is installed, run
    docker run --rm -it -v ~/.ssh:/root/.ssh -v ${PWD}:/docs squidfunk/mkdocs-material gh-deploy --config-file /docs/docs/mkdocs.yml
    
    1. or, if MkDocs and Material for MkDocs are installed, run
    cd docs
    mkdocs gh-deploy
    
  6. Create 2 PRs (one for forked repo branch that you updated, another for gh-pages branch) and we'll review and approve them.

Thanks again, for helping make DataPull better!

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