Skip to content
This repository has been archived by the owner on Apr 22, 2021. It is now read-only.

Latest commit

 

History

History
29 lines (25 loc) · 1.79 KB

README.md

File metadata and controls

29 lines (25 loc) · 1.79 KB

Proof-of-concept DAGs for Airflow

Quickstart

SQLite3

  1. Run sqlite3 dags/db/db.sqlite < dags/db/migration.sql Airflow's scheduler will connect to this database in dags/dynamic_dags/cached_dag.py

Astro CLI

Astronomer is a utility for quickly bringing up Airflow deployments, and hosting deployments on-prem or in the cloud.

  1. Download astro cli, instructions here
  2. Run astro dev stop && astro dev start && astro dev logs -f, to start or restart a local airflow stack
  • Note: use docker compose up instead. Needed to fall-back to docker compose to mount the scheduler dags as read/write
  1. Go to http://localhost:8080 , after a few seconds (up to a minute)
  2. Log in with admin:admin

Dynamic Dags

Note: Dynamic DAGs and Tasks should be avoided for many reasons - especially at scale. Performance, stability, and maintainability may be negatively affected. Use with caution!

  • Uses sqlite database results to dynamically generate a dag and it's tasks
  • Queries the database during the scheduler's dag parsing loop
  • Utilizes a results file pickled to disk to reduce database / parsing performance implications
  • NOTE: Something like the cachier library could also be used here, however the author has experienced issues previously with it.
  • Can alleviate performance impacts for dynamic dags and tasks
  • Uses sqlite database results to dynamically generate a dag and it's tasks
  • Utilizes a helper DAG to assemble and produce the Jinja templates into DAGs on disk.
  • Can alleviate performance impacts for dynamic dags and tasks