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.
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.
An Airflow container can be built with
docker build -t opentrials/opentrials-airflow .
and pushed to Docker hub with
docker push opentrials/opentrials-airflow
A single task, e.g. spark
, of an Airflow dag, e.g. example
, can be run with an execution date, e.g. 2016-01-01
, in the dev
environment with:
ansible-playbook ansible/deploy_local.yml -e '@ansible/envs/dev.yml' -e "command='test example spark 20160101'"
The container will run the desired task to completion (or failure). Note that if the container is stopped during the execution of a task, the task will be aborted. In the example's case, the Spark job will be terminated.
The logs of the task can be inspected in real-time with:
docker logs -f files_scheduler_1
Assuming you are on OS X, first create a docker machine with a sufficient amount of memory with e.g.:
docker-machine create -d virtualbox --virtualbox-memory 4096 default
To deploy the Airflow container on the docker engine, with its required dependencies, run:
ansible-playbook ansible/deploy_local.yml -e '@ansible/envs/dev.yml'
echo "Airflow web console should now be running locally at http://$(docker-machine ip default):8080"
Note that this will start running all the DAGs with a start date in the past! To avoid that do not pass the AWS credentials.
If you get a message saying "Couldn't connect to Docker daemon - you might need to run docker-machine start default
.", try the following:
docker-machine start default
eval "$(docker-machine env default)"
You can now connect to your local Airflow web console with a URL like http://192.168.99.100:8080
(see above for how to identify the exact IP address).
To deploy to our Docker Cloud, run:
make deploy
This requires the Vault's password file to be located on ./.vault_pass
, so
Ansible is able to decrypt the production variables.
Our Airflow instance will need a few configuration variables and connections to be able to run the supplied DAGs. Please follow the CONFIGURATION.md file in order to know what those variable mean and how to use them.
Some useful docker tricks for development and debugging:
# Stop all docker containers:
docker stop $(docker ps -aq)
# Remove any leftover docker volumes:
docker volume rm $(docker volume ls -qf dangling=true)
- Check if the task / run you want to re-run is visible in the DAG's Tree View UI
- For example, the
main_summary
DAG tree view. - Hover over the little squares to find the scheduled dag run you're looking for.
- For example, the
- If the dag run is not showing in the Dag Tree View UI (maybe deleted)
- Browse -> Dag Runs
- Create (you can look at another dag run of the same dag for example values too)
- Dag Id: the name of the dag, for example
main_summary
orcrash_aggregates
- Execution Date: The date the dag should have run, for example
2016-07-14 00:00:00
- Start Date: Some date between the execution date and "now", for example
2016-07-20 00:00:05
- End Date: Leave it blank
- State: success
- Run Id:
scheduled__2016-07-14T00:00:00
- External Trigger: unchecked
- Dag Id: the name of the dag, for example
- Click Save
- Click on the Graph view for the dag in question. From the main DAGs view, click the name of the DAG
- Select the "Run Id" you just entered from the drop-down list
- Click "Go"
- Click each element of the DAG and "Mark Success"
- The tasks should now show in the Tree View UI
- If the dag run is showing in the DAG's Tree View UI
- Click on the small square for the task you want to re-run
- Uncheck the "Downstream" toggle
- Click the "Clear" button
- Confirm that you want to clear it
- The task should be scheduled to run again straight away.
- SSH in to the server
- List docker containers using
docker ps
- Log in to one of the docker containers using
docker exec -it <container_id> bash
. The webserver instance is a good choice. - Run the desired backfill command, something like
$ airflow backfill main_summary -s 2016-06-20 -e 2016-06-26
This repository is heavily based on https://github.com/mozilla/telemetry-airflow