--- name: databricks-ci-integration description: 'Configure Databricks CI/CD integration with GitHub Actions and Asset Bundles. Use when setting up automated testing, configuring CI pipelines, or integrating Databricks deployments into your build process. Trigger with phrases like "databricks CI", "databricks GitHub Actions", "databricks automated tests", "CI databricks", "databricks pipeline". ' allowed-tools: Read, Write, Edit, Bash(gh:*), Bash(databricks:*) version: 1.0.0 license: MIT author: Jeremy Longshore tags: - saas - databricks - deployment - testing - ci-cd compatibility: Designed for Claude Code, also compatible with Codex and OpenClaw --- # Databricks CI Integration ## Overview Automate Databricks deployments with Declarative Automation Bundles (DABs) and GitHub Actions. Covers bundle validation, unit testing PySpark transforms locally, deploying to staging on PR, production on merge, and integration testing against live workspaces. Uses `databricks/setup-cli` action and OAuth M2M for secure CI auth. ## Prerequisites - Databricks workspace with service principal (OAuth M2M) - Asset Bundle (`databricks.yml`) configured - GitHub repo with Actions enabled - GitHub environment secrets: `DATABRICKS_HOST`, `DATABRICKS_CLIENT_ID`, `DATABRICKS_CLIENT_SECRET` ## Instructions ### Step 1: GitHub Actions — Validate and Test on PR ```yaml # .github/workflows/databricks-ci.yml name: Databricks CI on: pull_request: paths: ['src/**', 'resources/**', 'databricks.yml', 'tests/**'] jobs: validate-and-test: runs-on: ubuntu-latest steps: - uses: actions/checkout@v4 - uses: actions/setup-python@v5 with: python-version: '3.10' - name: Install dependencies run: | pip install pytest pyspark delta-spark databricks-sdk pip install -e . # If using pyproject.toml - name: Run unit tests (local Spark, no cluster needed) run: pytest tests/unit/ -v --tb=short - name: Install Databricks CLI uses: databricks/setup-cli@main - name: Validate bundle env: DATABRICKS_HOST: ${{ secrets.DATABRICKS_HOST }} DATABRICKS_CLIENT_ID: ${{ secrets.DATABRICKS_CLIENT_ID }} DATABRICKS_CLIENT_SECRET: ${{ secrets.DATABRICKS_CLIENT_SECRET }} run: databricks bundle validate -t staging deploy-staging: needs: validate-and-test runs-on: ubuntu-latest environment: staging steps: - uses: actions/checkout@v4 - uses: databricks/setup-cli@main - name: Deploy to staging env: DATABRICKS_HOST: ${{ secrets.DATABRICKS_HOST }} DATABRICKS_CLIENT_ID: ${{ secrets.DATABRICKS_CLIENT_ID }} DATABRICKS_CLIENT_SECRET: ${{ secrets.DATABRICKS_CLIENT_SECRET }} run: databricks bundle deploy -t staging - name: Run integration tests on staging env: DATABRICKS_HOST: ${{ secrets.DATABRICKS_HOST }} DATABRICKS_CLIENT_ID: ${{ secrets.DATABRICKS_CLIENT_ID }} DATABRICKS_CLIENT_SECRET: ${{ secrets.DATABRICKS_CLIENT_SECRET }} run: | databricks bundle run integration_tests -t staging # Verify output tables databricks sql execute \ --warehouse-id "$WAREHOUSE_ID" \ --statement "SELECT COUNT(*) AS rows FROM staging_catalog.silver.orders WHERE date >= current_date() - 1" ``` ### Step 2: Unit Tests for PySpark Transforms ```python # tests/unit/test_transformations.py import pytest from pyspark.sql import SparkSession from pyspark.sql.types import StructType, StructField, StringType, DoubleType @pytest.fixture(scope="session") def spark(): return SparkSession.builder.master("local[*]").appName("tests").getOrCreate() def test_silver_dedup(spark): """Test deduplication logic in silver layer.""" from src.pipelines.silver import dedup_orders data = [ ("order-1", "user-a", 10.0), ("order-1", "user-a", 10.0), # duplicate ("order-2", "user-b", 20.0), ] schema = StructType([ StructField("order_id", StringType()), StructField("user_id", StringType()), StructField("amount", DoubleType()), ]) df = spark.createDataFrame(data, schema) result = dedup_orders(df) assert result.count() == 2 assert set(r.order_id for r in result.collect()) == {"order-1", "order-2"} def test_gold_aggregation(spark): """Test daily aggregation in gold layer.""" from src.pipelines.gold import aggregate_daily_revenue # ... test with sample data ``` ### Step 3: Deploy to Production on Merge ```yaml # .github/workflows/databricks-deploy.yml name: Databricks Deploy on: push: branches: [main] paths: ['src/**', 'resources/**', 'databricks.yml'] jobs: deploy-production: runs-on: ubuntu-latest environment: production # Requires approval if configured concurrency: group: databricks-prod-deploy cancel-in-progress: false steps: - uses: actions/checkout@v4 - uses: databricks/setup-cli@main - name: Validate production bundle env: DATABRICKS_HOST: ${{ secrets.DATABRICKS_HOST_PROD }} DATABRICKS_CLIENT_ID: ${{ secrets.DATABRICKS_CLIENT_ID_PROD }} DATABRICKS_CLIENT_SECRET: ${{ secrets.DATABRICKS_CLIENT_SECRET_PROD }} run: databricks bundle validate -t prod - name: Deploy to production env: DATABRICKS_HOST: ${{ secrets.DATABRICKS_HOST_PROD }} DATABRICKS_CLIENT_ID: ${{ secrets.DATABRICKS_CLIENT_ID_PROD }} DATABRICKS_CLIENT_SECRET: ${{ secrets.DATABRICKS_CLIENT_SECRET_PROD }} run: | databricks bundle deploy -t prod echo "## Deployment Summary" >> $GITHUB_STEP_SUMMARY databricks bundle summary -t prod >> $GITHUB_STEP_SUMMARY - name: Trigger smoke test env: DATABRICKS_HOST: ${{ secrets.DATABRICKS_HOST_PROD }} DATABRICKS_CLIENT_ID: ${{ secrets.DATABRICKS_CLIENT_ID_PROD }} DATABRICKS_CLIENT_SECRET: ${{ secrets.DATABRICKS_CLIENT_SECRET_PROD }} run: databricks bundle run prod_etl_pipeline -t prod --no-wait ``` ### Step 4: OIDC Authentication (Keyless CI) Eliminate long-lived secrets by using GitHub OIDC federation with Databricks. ```yaml # In GitHub Actions — no client_secret needed jobs: deploy: permissions: id-token: write # Required for OIDC contents: read steps: - uses: actions/checkout@v4 - uses: databricks/setup-cli@main - name: Deploy with OIDC env: DATABRICKS_HOST: ${{ secrets.DATABRICKS_HOST }} DATABRICKS_CLIENT_ID: ${{ secrets.DATABRICKS_CLIENT_ID }} # No DATABRICKS_CLIENT_SECRET — uses GitHub OIDC token ARM_USE_OIDC: true run: databricks bundle deploy -t prod ``` ## Output - CI workflow validating bundles and running unit tests on every PR - Staging deployment with integration tests before merge - Production deployment on merge to main with approval gate - Concurrency control preventing parallel deployments ## Error Handling | Issue | Cause | Solution | |-------|-------|----------| | Bundle validation fails | Invalid YAML or missing variables | Run `databricks bundle validate` locally first | | Auth error in CI | Client secret expired | Regenerate OAuth secret or switch to OIDC | | Integration test timeout | Cluster cold start | Use instance pools or increase timeout | | Deploy conflict | Concurrent CI runs | Use `concurrency` group in GitHub Actions | | PySpark import error | Missing `pyspark` in CI | Add to `pip install` step | ## Examples ### Local Validation Before Push ```bash # Validate and dry-run before committing databricks bundle validate -t staging databricks bundle deploy -t staging --dry-run pytest tests/unit/ -v ``` ### Branch-Based Development Targets ```yaml # databricks.yml — auto-name resources per developer targets: dev: default: true mode: development # In dev mode, resources auto-prefixed with [dev username] workspace: root_path: /Users/${workspace.current_user.userName}/.bundle/${bundle.name}/dev ``` ## Resources - [CI/CD with Bundles](https://docs.databricks.com/aws/en/dev-tools/bundles/ci-cd-bundles) - [databricks/setup-cli Action](https://github.com/databricks/setup-cli) - [OAuth M2M](https://docs.databricks.com/aws/en/dev-tools/auth/oauth-m2m) - [Bundle Configuration](https://docs.databricks.com/aws/en/dev-tools/bundles/settings) ## Next Steps For Asset Bundle deployment details, see `databricks-deploy-integration`.