Skip to content

PolideaInternal/airflow-munchkin

Repository files navigation

Airflow Munchkin

image

image

Documentation Status

Updates

Airflow Munchkin is a simple code generator that improves first stages of developing Airflow operators for Google services including Google Cloud Platform and Marketing Platform. Moreover we like cats, thus this name.

What Munchkin does?

Munchkin is a code generator that helps developers to scaffold operators and hooks. By using Munchkin you will get:

  • hook class (including method descriptions, arguments types etc.)
  • operators classes (including descriptions, arguments types and execute method)
  • base unit tests for both, hook and operators
  • example DAG with links to how to guide
  • skeleton of howto.rst that should include information how end user can use the operators
  • short information that should be added to airflow.docs.integration.rst
  • skeleton of system test for operators

In other words, you get everything that can be seen as a "boring work".

What Munchkin does not?

Munchkin does not perform the interesting part of implementing an operator which includes:

  • making operators idempotent
  • handling exceptions
  • converting an operator to a sensor (if required)
  • adding nice how-to information

How to use Munchkin

It's very simple. Here is a step by step guide:

  • Select a Google service
  • Determine if the service has a Python client (you can check it here)
  • If a client exist and it has a method you want to use then you should use Munchkin for client
  • If there's no Python client then the operators will be based on the Discovery API - in this case you have to determine the API endpoint using the explorer. If you can't find the service, use Google to find myService API to determine the path used in REST requests. Finally use Munchkin for discovery.

Munchkin for Google Cloud libraries

Generator for Python clients is located under airflow_munchkin.main_client. To use it you have to modify the Integration information in main function:

integration_info: Integration = Integration(
    service_name="Cloud Memorystore",
    class_prefix="CloudMemorystore",
    file_prefix="gcp_cloud_memorystore",
    client_path="google.cloud.redis_v1.CloudRedisClient",
)

The most important part of the integration is client_path which indicates the 'client' object. Additionally you can define class and file prefixes and service name.

Munchkin for Google APIs Python Client

Generator for Discovery API is located under airflow_munchkin.main_discovery. To use it you have to modify the Integration information in main function:

integration = DiscoveryIntegration(
    api_path="doubleclickbidmanager.queries",
    version="v1",
    methods=None,
    service_name="DisplayVideo",
    object_name="Report",
    class_prefix="Google",
    package_name=resolve_package_name(service_name),
)

The most important part of the integration is api_path which indicates the API endpoint. It could be full path to a resource (ex. dfareporting.campaigns) or to a single method (ex. dfareporting.campaigns.insert). You also have to provide valid api_version.

If you use the path for a resource then you can specify for which methods operators should be generated (ex. methods=['get', 'list']). Otherwise all methods will be parsed. Additionally you can specify service_name, class_prefix and object_name. Object name is used to obtain better operators class names and it's added after method name (ex. ServiceNameMethodOBJECTOperator, DisplayVideoGetReportOperator).

Credits

This package was created with Cookiecutter and the audreyr/cookiecutter-pypackage project template.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 4

  •  
  •  
  •  
  •