Skip to main content

Affordable Databricks Workflows in Apache Airflow

Project description

Databricks Workflows in Airflow

The Astro Databricks Provider is an Apache Airflow provider to write Databricks Workflows using Airflow as the authoring interface. Running your Databricks notebooks as Databricks Workflows can result in a 75% cost reduction ($0.40/DBU for all-purpose compute, $0.07/DBU for Jobs compute).

While this is maintained by Astronomer, it's available to anyone using Airflow - you don't need to be an Astronomer customer to use it.

There are a few advantages to defining your Databricks Workflows in Airflow:

via Databricks via Airflow
Authoring interface Web-based via Databricks UI Code via Airflow DAG
Workflow compute pricing
Notebook code in source control
Workflow structure in source control
Retry from beginning
Retry single task
Task groups within Workflows
Trigger workflows from other DAGs
Workflow-level parameters

Example

The following Airflow DAG illustrates how to use the DatabricksTaskGroup and DatabricksNotebookOperator to define a Databricks Workflow in Airflow:

from pendulum import datetime

from airflow.decorators import dag, task_group
from airflow.operators.trigger_dagrun import TriggerDagRunOperator
from astro_databricks import DatabricksNotebookOperator, DatabricksWorkflowTaskGroup

# define your cluster spec - can have from 1 to many clusters
job_cluster_spec = [
   {
      "job_cluster_key": "astro_databricks",
      "new_cluster": {
         "cluster_name": "",
         # ...
      },
   }
]

@dag(start_date=datetime(2023, 1, 1), schedule_interval="@daily", catchup=False)
def databricks_workflow_example():
   # the task group is a context manager that will create a Databricks Workflow
   with DatabricksWorkflowTaskGroup(
      group_id="example_databricks_workflow",
      databricks_conn_id="databricks_default",
      job_clusters=job_cluster_spec,
      # you can specify common fields here that get shared to all notebooks
      notebook_packages=[
         { "pypi": { "package": "pandas" } },
      ],
      # notebook_params supports templating
      notebook_params={
         "start_time": "{{ ds }}",
      }
   ) as workflow:
      notebook_1 = DatabricksNotebookOperator(
         task_id="notebook_1",
         databricks_conn_id="databricks_default",
         notebook_path="/Shared/notebook_1",
         source="WORKSPACE",
         # job_cluster_key corresponds to the job_cluster_key in the job_cluster_spec
         job_cluster_key="astro_databricks",
         # you can add to packages & params at the task level
         notebook_packages=[
            { "pypi": { "package": "scikit-learn" } },
         ],
         notebook_params={
            "end_time": "{{ macros.ds_add(ds, 1) }}",
         }
      )

      # you can embed task groups for easier dependency management
      @task_group(group_id="inner_task_group")
      def inner_task_group():
         notebook_2 = DatabricksNotebookOperator(
            task_id="notebook_2",
            databricks_conn_id="databricks_default",
            notebook_path="/Shared/notebook_2",
            source="WORKSPACE",
            job_cluster_key="astro_databricks",
         )

         notebook_3 = DatabricksNotebookOperator(
            task_id="notebook_3",
            databricks_conn_id="databricks_default",
            notebook_path="/Shared/notebook_3",
            source="WORKSPACE",
            job_cluster_key="astro_databricks",
         )

      notebook_4 = DatabricksNotebookOperator(
         task_id="notebook_4",
         databricks_conn_id="databricks_default",
         notebook_path="/Shared/notebook_4",
         source="WORKSPACE",
         job_cluster_key="astro_databricks",
      )

      notebook_1 >> inner_task_group() >> notebook_4

   trigger_workflow_2 = TriggerDagRunOperator(
      task_id="trigger_workflow_2",
      trigger_dag_id="workflow_2",
      execution_date="{{ next_execution_date }}",
   )

   workflow >> trigger_workflow_2

databricks_workflow_example_dag = databricks_workflow_example()

Airflow UI

Airflow UI

Databricks UI

Databricks UI

Quickstart

Check out the following quickstart guides:

Documentation

The documentation is a work in progress--we aim to follow the Diátaxis system:

Changelog

Astro Databricks follows semantic versioning for releases. Read changelog to understand more about the changes introduced to each version.

Contribution guidelines

All contributions, bug reports, bug fixes, documentation improvements, enhancements, and ideas are welcome.

Read the Contribution Guidelines for a detailed overview on how to contribute.

Contributors and maintainers should abide by the Contributor Code of Conduct.

License

Apache Licence 2.0

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

astro_provider_databricks-0.2.1.tar.gz (2.2 MB view hashes)

Uploaded Source

Built Distribution

astro_provider_databricks-0.2.1-py3-none-any.whl (26.4 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page