deploying-airflow
The deploying-airflow skill provides deployment methods for Airflow DAGs and projects across managed Astro and open-source environments. Use it when users need to deploy DAGs to production, set up CI/CD pipelines, choose between full project deploys or faster DAG-only updates, configure GitHub integration for automated deployments, or determine whether to use Astro's managed platform versus Docker Compose or Kubernetes for open-source Airflow.
git clone --depth 1 https://github.com/astronomer/agents /tmp/deploying-airflow && cp -r /tmp/deploying-airflow/skills/deploying-airflow ~/.claude/skills/deploying-airflowSKILL.md
# Deploying Airflow
This skill covers deploying Airflow DAGs and projects to production, whether using Astro (Astronomer's managed platform) or open-source Airflow on Docker Compose or Kubernetes.
**Choosing a path:** Astro is a good fit for managed operations and faster CI/CD. For open-source, use Docker Compose for dev and the Helm chart for production.
---
## Astro (Astronomer)
Astro provides CLI commands and GitHub integration for deploying Airflow projects.
### Deploy Commands
| Command | What It Does |
|---------|--------------|
| `astro deploy` | Full project deploy — builds Docker image and deploys DAGs |
| `astro deploy --dags` | DAG-only deploy — pushes only DAG files (fast, no image build) |
| `astro deploy --image` | Image-only deploy — pushes only the Docker image (for multi-repo CI/CD) |
| `astro deploy --dbt` | dbt project deploy — deploys a dbt project to run alongside Airflow |
### Full Project Deploy
Builds a Docker image from your Astro project and deploys everything (DAGs, plugins, requirements, packages):
```bash
astro deploy
```
Use this when you've changed `requirements.txt`, `Dockerfile`, `packages.txt`, plugins, or any non-DAG file.
### DAG-Only Deploy
Pushes only files in the `dags/` directory without rebuilding the Docker image:
```bash
astro deploy --dags
```
This is significantly faster than a full deploy since it skips the image build. Use this when you've only changed DAG files and haven't modified dependencies or configuration.
### Image-Only Deploy
Pushes only the Docker image without updating DAGs:
```bash
astro deploy --image
```
This is useful in multi-repo setups where DAGs are deployed separately from the image, or in CI/CD pipelines that manage image and DAG deploys independently.
### dbt Project Deploy
Deploys a dbt project to run with Cosmos on an Astro deployment:
```bash
astro deploy --dbt
```
### GitHub Integration
Astro supports branch-to-deployment mapping for automated deploys:
- Map branches to specific deployments (e.g., `main` -> production, `develop` -> staging)
- Pushes to mapped branches trigger automatic deploys
- Supports DAG-only deploys on merge for faster iteration
Configure this in the Astro UI under **Deployment Settings > CI/CD**.
### CI/CD Patterns
Common CI/CD strategies on Astro:
1. **DAG-only on feature branches**: Use `astro deploy --dags` for fast iteration during development
2. **Full deploy on main**: Use `astro deploy` on merge to main for production releases
3. **Separate image and DAG pipelines**: Use `--image` and `--dags` in separate CI jobs for independent release cycles
### Deploy Queue
When multiple deploys are triggered in quick succession, Astro processes them sequentially in a deploy queue. Each deploy completes before the next one starts.
### Reference
- [Astro Deploy Documentation](https://www.astronomer.io/docs/astro/deploy-code)
---
## Open-Source: Docker Compose
Deploy Airflow using the official Docker Compose setup. This is recommended for learning and exploration — for production, use Kubernetes with the Helm chart (see below).
### Prerequisites
- Docker and Docker Compose v2.14.0+
- The official `apache/airflow` Docker image
### Quick Start
Download the official Airflow 3 Docker Compose file:
```bash
curl -LfO 'https://airflow.apache.org/docs/apache-airflow/stable/docker-compose.yaml'
```
This sets up the full Airflow 3 architecture:
| Service | Purpose |
|---------|---------|
| `airflow-apiserver` | REST API and UI (port 8080) |
| `airflow-scheduler` | Schedules DAG runs |
| `airflow-dag-processor` | Parses and processes DAG files |
| `airflow-worker` | Executes tasks (CeleryExecutor) |
| `airflow-triggerer` | Handles deferrable/async tasks |
| `postgres` | Metadata database |
| `redis` | Celery message broker |
### Minimal Setup
For a simpler setup with LocalExecutor (no Celery/Redis), create a `docker-compose.yaml`:
```yaml
x-airflow-common: &airflow-common
image: apache/airflow:3 # Use the latest Airflow 3.x release
environment: &airflow-common-env
AIRFLOW__CORE__EXECUTOR: LocalExecutor
AIRFLOW__DATABASE__SQL_ALCHEMY_CONN: postgresql+psycopg2://airflow:airflow@postgres/airflow
AIRFLOW__CORE__LOAD_EXAMPLES: 'false'
AIRFLOW__CORE__DAGS_FOLDER: /opt/airflow/dags
volumes:
- ./dags:/opt/airflow/dags
- ./logs:/opt/airflow/logs
- ./plugins:/opt/airflow/plugins
depends_on:
postgres:
condition: service_healthy
services:
postgres:
image: postgres:16
environment:
POSTGRES_USER: airflow
POSTGRES_PASSWORD: airflow
POSTGRES_DB: airflow
volumes:
- postgres-db-volume:/var/lib/postgresql/data
healthcheck:
test: ["CMD", "pg_isready", "-U", "airflow"]
interval: 10s
retries: 5
start_period: 5s
airflow-init:
<<: *airflow-common
entrypoint: /bin/bash
command:
- -c
- |
airflow db migrate
airflow users create \
--username admin \
--firstname Admin \
--lastname User \
--role Admin \
--email admin@example.com \
--password admin
depends_on:
postgres:
condition: service_healthy
airflow-apiserver:
<<: *airflow-common
command: airflow api-server
ports:
- "8080:8080"
healthcheck:
test: ["CMD", "curl", "--fail", "http://localhost:8080/health"]
interval: 30s
timeout: 10s
retries: 5
start_period: 30s
airflow-scheduler:
<<: *airflow-common
command: airflow scheduler
airflow-dag-processor:
<<: *airflow-common
command: airflow dag-processor
airflow-triggerer:
<<: *airflow-common
command: airflow triggerer
volumes:
postgres-db-volume:
```
> **Airflow 3 architecture note**: The webserver has been replaced by the **API server** (`airflow api-server`), and the **DAG processor** now runs as a standalone process separate from the scheduler.
### Common Operations
```bashAdd a new method to both Airflow adapters
Add a new MCP tool to server.py
Verify code works with both Airflow 2.x and 3.x
Airflow adapter pattern for v2/v3 API compatibility. Use when working with adapters, version detection, or adding new API methods that need to work across Airflow 2.x and 3.x.
Use when the user needs human-in-the-loop workflows in Airflow (approval/reject, form input, or human-driven branching). Covers ApprovalOperator, HITLOperator, HITLBranchOperator, HITLEntryOperator, HITLTrigger. Requires Airflow 3.1+. Does not cover AI/LLM calls (see airflow-ai).
Build Airflow 3.1+ plugins that embed FastAPI apps, custom UI pages, React components, middleware, macros, and operator links directly into the Airflow UI. Use this skill whenever the user wants to create an Airflow plugin, add a custom UI page or nav entry to Airflow, build FastAPI-backed endpoints inside Airflow, serve static assets from a plugin, embed a React app in the Airflow UI, add middleware to the Airflow API server, create custom operator extra links, or call the Airflow REST API from inside a plugin. Also trigger when the user mentions AirflowPlugin, fastapi_apps, external_views, react_apps, plugin registration, or embedding a web app in Airflow 3.1+. If someone is building anything custom inside Airflow 3.1+ that involves Python and a browser-facing interface, this skill almost certainly applies.
Queries, manages, and troubleshoots Apache Airflow using the af CLI. Covers listing DAGs, triggering runs, reading task logs, diagnosing failures, debugging DAG import errors, checking connections, variables, pools, and monitoring health. Also routes to sub-skills for writing DAGs, debugging, deploying, and migrating Airflow 2 to 3. Use when user mentions "Airflow", "DAG", "DAG run", "task log", "import error", "parse error", "broken DAG", or asks to "trigger a pipeline", "debug import errors", "check Airflow health", "list connections", "retry a run", or any Airflow operation. Do NOT use for warehouse/SQL analytics on Airflow metadata tables — use analyzing-data instead.
Queries data warehouse and answers business questions about data. Handles questions requiring database/warehouse queries including "who uses X", "how many Y", "show me Z", "find customers", "what is the count", data lookups, metrics, trends, or SQL analysis.