This repository contains files related to Airflow DAGs (Directed Acyclic Graphs, e.g. data processing workflows) used for PA Digital aggregation processes.
There are two types of Airflow DAGs generated from this repository:
- DAGs for PA Digital contributing institutions: DAGs for each institution are generated using DAG template files,
funcake_dags/template.pyandfuncake_dags/template_dag.py. Each DAG is customized using Airflow variables. These variables are maintained invariables.jsonand manually loaded into Airflow. Based on these template files and variables, each DAG executes a workflow that harvests, validates, transforms, and publishes metadata to an individual Solr collection, which can be accessed via a shared dev or prod OAI-PMH endpoint (based on the target alias env defined in variables). Related validation and transformation files can be found in aggregator_mdx. - DAGs for Funnel Cake site:
funcake_dags/funcake_prod_index_dag.pyandfuncake_dags/funcake_dev_index_dag.pyindex metadata accessible via the dev OAI-PMH endpoint into a single SolrCloud collection to be used with the Blacklight application, Funnel Cake(for the prod and dev instances respectively).
Some DAG tasks in this repository use Temple University Libraries' centralized python library tulflow.
These DAGs are expecting to be run within an Airflow installation akin to the one built by our TUL Airflow Playbook (private repository).
Libraries & Packages
- Python: Version as specified in
.python-version. - Python Package Dependencies: see the Pipfile
- Docker 20.10+
- Docker-Compose: 1.27+
Airflow Variables
These variables are initially set in the variables.json file. Variables for this project are primarily handled by the PA Digital team. They will be the ones to add or update variables as needed.
Variables are listed in variables.json.
Airflow Connections
SOLRCLOUD: An HTTP Connection used to connect to SolrCloud.AIRFLOW_S3: An AWS (not S3 with latest Airflow upgrade) Connection used to manage AWS credentials (which we use to interact with our Airflow Data S3 Bucket).slack_api_default: Used to report DAG run successes and failures to our internal slack channels.
Local development relies on the Airflow Docker Dev Setup submodule.
This project uses the UNIX make command to build, run, stop, configure, and test DAGS for local development. These commands first run a script to change into the submodule directory that is used for the development setup. See the Makefile for the complete list of commands available.
On initial startup, the dashboard may display an empty or partial list of DAGs and the status at the top may show the Broken DAG error message indicating that a connection or variable is missing. Create the connection and copy it's attributes from the TUL Production Airflow Server Connections or TUL QA Airflow Server Connections. Create the variable and copy it's value from the TUL Production Airflow Server Variables or TUL QA Airflow Server Variables.
Used to rebuild Pipfile while making sure that airflow-constraints are met.
Used to automatically check if a new dependency does not match upstream airflow contraints.
Perform syntax and style checks on airflow code with pylint
To install and configure pylint
$ pip install pipenv
$ SLUGIFY_USES_TEXT_UNIDECODE=yes pipenv install --dev
To lint the DAGs
$ pipenv run pylint funcake_dags
Use pytest to run unit and functional tests on this project.
$ pipenv run pytest
lint and pytest are run automatically by GitHub actions on each pull request.
You may also test using airflow-docker-dev-setup/Makefile
First, ensure airflow-docker-dev-setup submodule installation
$ git submodule update --init --recursive
$ make -f airflow-docker-dev-setup/Makefile test
QA: GitHub action checks (lints and tests) code and deploys to the QA server when development branches are merged into the main branch.
Production: When a development branch is merged into main it creates a request_prod_deploy job. To deploy code to the production server, you will need to approve the pending job in the #aggregator channel on Slack. You will see a GitHub action notification that says Deployment review requested, waiting for review. Click on the link and follow the instructions.