Apache Airflow (Incubating)
Перейти к файлу
Maxime Beauchemin 0b36371e9c Adding entry in docs 2015-11-21 09:39:23 -08:00
airflow Making sure test_mode always exists 2015-11-21 09:16:46 -08:00
dags
docs Adding entry in docs 2015-11-21 09:39:23 -08:00
scripts/ci now running travis on all DB backends 2015-11-16 11:21:21 +01:00
tests Fix the bug where an externally triggered dag run with the same run_id 2015-11-20 20:30:47 +00:00
.coveralls.yml
.gitignore remove .idea, add unittests.db to .gitignore 2015-11-12 12:56:28 +01:00
.travis.yml Limit build matrix for now to CDH only 2015-11-19 10:07:38 +01:00
CONTRIBUTING.md fixed typo in documentation + added .idea to gitignore 2015-11-12 12:11:13 +01:00
COPYRIGHT.txt
LICENSE.txt
MANIFEST.in
README.md Add Handy to list of users 2015-11-19 20:21:03 +00:00
TODO.md Removing done items from TODO.md 2015-11-13 16:29:14 -08:00
init.sh
migrations.sql
requirements.txt Merge remote-tracking branch 'upstream/master' 2015-11-13 09:18:28 +01:00
run_tox.sh now running travis on all DB backends 2015-11-16 11:21:21 +01:00
run_unit_tests.sh Address review comments. Add -y option to resetdb. 2015-11-20 16:11:57 +00:00
setup.cfg
setup.py v1.6.1 2015-11-14 22:18:12 -08:00
tox.ini now running travis on all DB backends 2015-11-16 11:21:21 +01:00

README.md

Airflow

Build Status Coverage Status pypi downloads

Airflow is a platform to programmatically author, schedule and monitor workflows.

When workflows are defined as code, they become more maintainable, versionable, testable, and collaborative.

![img] (http://i.imgur.com/6Gs4hxT.gif)

Use airflow to author workflows as directed acyclic graphs (DAGs) of tasks. The airflow scheduler executes your tasks on an array of workers while following the specified dependencies. Rich command line utilities make performing complex surgeries on DAGs a snap. The rich user interface makes it easy to visualize pipelines running in production, monitor progress, and troubleshoot issues when needed.

Beyond the Horizon

Airflow is not a data streaming solution. Tasks do not move data from one to the other (though tasks can exchange metadata!). Airflow is not in the Spark Streaming or Storm space, it is more comparable to Oozie or Azkaban.

Workflows are expected to be mostly static or slowly changing. You can think of the structure of the tasks in your workflow as slightly more dynamic than a database structure would be. Airflow workflows are expected to look similar from a run to the next, this allows for clarity around unit of work and continuity.

Principles

  • Dynamic: Airflow pipelines are configuration as code (Python), allowing for dynamic pipeline generation. This allows for writing code that instantiates pipelines dynamically.
  • Extensible: Easily define your own operators, executors and extend the library so that it fits the level of abstraction that suits your environment.
  • Elegant: Airflow pipelines are lean and explicit. Parameterizing your scripts is built into the core of Airflow using the powerful Jinja templating engine.
  • Scalable: Airflow has a modular architecture and uses a message queue to orchestrate an arbitrary number of workers. Airflow is ready to scale to infinity.

Who uses Airflow?

As the Airflow community grows, we'd like to keep track of who is using the platform. Please send a PR with your company name and @githubhandle if you may.

Currently officially using Airflow: