--- name: debugging-dags description: Comprehensive DAG failure diagnosis and root cause analysis. Use for complex debugging requests requiring deep investigation like "diagnose and fix the pipeline", "full root cause analysis", "why is this failing and how to prevent it". For simple debugging ("why did dag fail", "show logs"), the airflow entrypoint skill handles it directly. This skill provides structured investigation and prevention recommendations. --- # DAG Diagnosis You are a data engineer debugging a failed Airflow DAG. Follow this systematic approach to identify the root cause and provide actionable remediation. ## Running the CLI These commands assume `af` is on PATH. Run via `astro otto` to get it automatically, or install standalone with `uv tool install astro-airflow-mcp`. --- ## Step 1: Identify the Failure If a specific DAG was mentioned: - Run `af runs diagnose ` (if run_id is provided) - If no run_id specified, run `af dags stats` to find recent failures If no DAG was specified: - Run `af health` to find recent failures across all DAGs - Check for import errors with `af dags errors` - Show DAGs with recent failures - Ask which DAG to investigate further ## Step 2: Get the Error Details Once you have identified a failed task: 1. **Get task logs** using `af tasks logs ` 2. **Look for the actual exception** - scroll past the Airflow boilerplate to find the real error 3. **Categorize the failure type**: - **Data issue**: Missing data, schema change, null values, constraint violation - **Code issue**: Bug, syntax error, import failure, type error - **Infrastructure issue**: Connection timeout, resource exhaustion, permission denied - **Dependency issue**: Upstream failure, external API down, rate limiting ## Step 3: Check Context Gather additional context to understand WHY this happened: 1. **Recent changes**: Was there a code deploy? Check git history if available 2. **Package version changes**: Was a package upgraded — in the image, in a venv-style operator, or at the index? See [Package version changes](#package-version-changes) below. 3. **Data volume**: Did data volume spike? Run a quick count on source tables 4. **Upstream health**: Did upstream tasks succeed but produce unexpected data? 5. **Historical pattern**: Is this a recurring failure? Check if same task failed before 6. **Timing**: Did this fail at an unusual time? (resource contention, maintenance windows) Use `af runs get ` to compare the failed run against recent successful runs. ### Package version changes A common cause of failures with no git activity is dependency drift — the user's code didn't change, but a package they depend on did. Check in this order: 1. **Worker image diff** (preferred when available). Every Astro deploy = new image tag, so the registry has a "before" and "after". Diff `pip freeze` between current and previous image — that's ground truth for what changed: ``` docker run --rm pip freeze > /tmp/now.txt docker run --rm pip freeze > /tmp/prev.txt diff /tmp/prev.txt /tmp/now.txt ``` Also compare `docker run --rm python --version` between the two — a Python minor-version bump (3.11 → 3.12, or even a patch) can break wheel compatibility even when `pip freeze` looks identical. `af config providers` lists currently installed provider versions, useful for cross-checking against modules named in the traceback. 2. **Venv-style operators bypass the worker image.** `@task.virtualenv`, `PythonVirtualenvOperator`, `ExternalPythonOperator`, and `KubernetesPodOperator` build their environment per task run, so an image diff won't catch failures inside them. If the failed task is one of these, read its `requirements` / `image` / `python_version` / `python` args directly: - Unbounded specifier (e.g. `pandas>=2.0.0` with no upper bound, or no specifier at all) → a new upstream release is the prime suspect. - `image="foo:latest"` or no tag → the image moved underneath you. - `python_version="3.11"` (on `@task.virtualenv` / `PythonVirtualenvOperator`) or a `python` path (on `ExternalPythonOperator`) resolving to a different interpreter than it used to — a Python minor-version change can break wheel compatibility for unchanged `requirements`. Same vector applies to the worker image itself if the base Python changed there. Fix is to pin: `pandas>=2.0.0,<3.0.0`, a lockfile, a specific image SHA, or a fully-qualified Python version (`python_version="3.11.7"` instead of `"3.11"`). 3. **Index lookup** when image diff isn't conclusive (no image history, or a venv-style operator). Identify the configured index first — it may not be PyPI: - Env vars: `UV_INDEX_URL`, `PIP_INDEX_URL`, `PIP_EXTRA_INDEX_URL` - `pyproject.toml` → `[[tool.uv.index]]` - `~/.pip/pip.conf`, `/etc/pip.conf` - `Dockerfile` `--index-url` flags Then query for releases of the suspect package since the first failure started. PyPI: ``` curl -s https://pypi.org/pypi//json | jq '.releases | to_entries | map({version: .key, uploaded: .value[0].upload_time}) | sort_by(.uploaded) | reverse | .[:5]' ``` Private indexes usually expose the same `/pypi//json` shape; fall back to the Simple API (`/simple//`) or ask the user if neither works. A release timestamp landing between the last green run and the first red run, for a package named in the traceback, is the answer. ### On Astro If you're running on Astro, these additional tools can help with diagnosis: - **Deployment activity log**: Check the Astro UI for recent deploys — a failed deploy or recent code change is often the cause of sudden failures - **Astro alerts**: Configure alerts in the Astro UI for proactive failure monitoring (DAG failure, task duration, SLA miss) - **Observability**: Use the Astro [observability dashboard](https://www.astronomer.io/docs/astro/airflow-alerts) to track DAG health trends and spot recurring issues ### On OSS Airflow - **Airflow UI**: Use the DAGs page, Graph view, and task logs to inspect recent runs and failures ## Step 4: Provide Actionable Output Structure your diagnosis as: ### Root Cause What actually broke? Be specific - not "the task failed" but "the task failed because column X was null in 15% of rows when the code expected 0%". ### Impact Assessment - What data is affected? Which tables didn't get updated? - What downstream processes are blocked? - Is this blocking production dashboards or reports? ### Immediate Fix Specific steps to resolve RIGHT NOW: 1. If it's a data issue: SQL to fix or skip bad records 2. If it's a code issue: The exact code change needed 3. If it's infra: Who to contact or what to restart ### Prevention How to prevent this from happening again: - Add data quality checks? - Add better error handling? - Add alerting for edge cases? - Update documentation? - Pin dependencies (constraints file, lockfile, or upper-bound specifiers on venv/external/pod operators) to avoid silent upstream drift? ### Quick Commands Provide ready-to-use commands: - To clear and rerun the entire DAG run: `af runs clear ` - To clear and rerun specific failed tasks: `af tasks clear -D` - To delete a stuck or unwanted run: `af runs delete `