Skip to content
| Marketplace
Sign in
Visual Studio Code>Other>AirflowNew to Visual Studio Code? Get it now.
Airflow

Airflow

Necati ARSLAN

|
35,703 installs
| (1) | Free
Apache Airflow Extension to List/Trigger DAGs, View Logs and much more
Installation
Launch VS Code Quick Open (Ctrl+P), paste the following command, and press enter.
Copied to clipboard
More Info

Airflow Extension for Visual Studio Code

✅ Now works with Airflow 3.0

screenshoot

🤖 Chat with Airflow

screenshoot

A Visual Studio Code extension to interact with Apache Airflow (v2.x & v3.x) directly from your editor.
Trigger DAGs, pause/unpause, explore DAG runs, view logs, browse code, and more—no browser required.

🔑 Features

  • DAG List

    • Browse all available DAGs in a tree view.
    • Filter DAGs by name, owner, active/paused status, tags
    • Add your favorite DAGs to favorites to quickly access them
    • Add multiple Airflow Servers and switch between them
  • DAG Actions

    • Trigger a DAG with optional config and date
    • Pause, or unpause any DAG with a single click
    • View source code running on Airflow
  • DAG Run Explorer

    • View past & current DAG runs
    • View logs
    • See task instances, execution durations, and statuses
  • DAG Runs View

    • Browse all DAG runs across all DAGs for a specific date
    • Filter by status (success, failed, running, queued) and specific DAG ID
    • See execution details: start date, duration, config, and notes
    • Click on any DAG run to open detailed DagView for analysis
  • New Design & Experience

    • Modern UI: Completely refreshed design for Admin and Report views with consistent theming
    • Smart Log View: Enhanced log viewer integrated with AI for instant analysis
    • Smart Controls: Context-aware Trigger/Cancel buttons that appear based on DAG state
    • Navigation: Jump to any view using @airflow commands
  • AI Airflow Assistant

    • Get AI-powered assistance for analyzing DAG logs and troubleshooting issues
    • Click "Ask AI" in the DagView to open the AI chat interface
    • In the Chat, use @airflow to ask questions and execute commands like triggering DAGs, pausing/unpausing, checking failed runs, and more
    • AI analyzes DAG code and logs to provide insights and recommendations
    • Integrated with VS Code's native chat interface for seamless interaction
    • 24 language model tools for intelligent DAG control and monitoring: trigger runs, pause/unpause DAGs, check failed runs, analyze latest DAG execution, view run history, stop running DAGs, get source code, navigation, and more
    • Use @airflow in the chat to access all AI-powered tools

🤖 AI Airflow Assistant Tools & Sample Prompts

The extension provides 24 language model tools that integrate with VS Code's AI chat. Use @airflow in the chat to access these tools.

Control Tools

Trigger DAG Run

  • Purpose: Execute a DAG with optional configuration
  • Sample Prompts:
    • @airflow trigger data_pipeline_dag
    • @airflow trigger etl_job_dag with config {"max_workers": 10}
    • @airflow run my_dag on 2025-12-03

Pause DAG

  • Purpose: Stop new DAG runs from being scheduled
  • Sample Prompts:
    • @airflow pause data_pipeline_dag
    • @airflow disable staging_etl_dag
    • @airflow pause all failing dags

Unpause DAG

  • Purpose: Enable scheduling for a paused DAG
  • Sample Prompts:
    • @airflow unpause data_pipeline_dag
    • @airflow activate my_dag
    • @airflow resume production_job

Stop DAG Run

  • Purpose: Terminate a currently running DAG execution
  • Sample Prompts:
    • @airflow stop data_pipeline_dag run
    • @airflow cancel current run of my_dag
    • @airflow kill the running data_ingestion_dag

Monitoring Tools

Get DAG Runs

  • Purpose: View execution history for a specific DAG with optional date filter
  • Sample Prompts:
    • @airflow get dag runs for api_data_ingestion_dag
    • @airflow show runs of data_pipeline_dag on 2025-12-03
    • @airflow list runs for etl_job_dag from last week

Get DAG History

  • Purpose: View DAG run history on a specific date with status, duration, and notes
  • Sample Prompts:
    • @airflow get dag history of api_data_ingestion_dag
    • @airflow show history for data_pipeline_dag on 2025-12-02
    • @airflow view past runs of my_dag today

Get Failed Runs

  • Purpose: Identify and analyze failed DAG runs across the system
  • Sample Prompts:
    • @airflow get failed runs
    • @airflow show failed dags from last 24 hours
    • @airflow which dags failed in the last 48 hours

List Active DAGs

  • Purpose: View all currently enabled DAGs
  • Sample Prompts:
    • @airflow list active dags
    • @airflow show all running dags
    • @airflow get enabled dags

List Paused DAGs

  • Purpose: View all currently disabled DAGs
  • Sample Prompts:
    • @airflow list paused dags
    • @airflow show disabled dags
    • @airflow get all paused dags

Get Running DAGs

  • Purpose: List all DAGs that currently have running or queued tasks
  • Sample Prompts:
    • @airflow get running dags
    • @airflow get active runs
    • @airflow what is running now?

Analysis Tools

Analyse DAG Latest Run

  • Purpose: Comprehensive diagnostic report of the latest DAG execution including tasks, logs, and source code
  • Sample Prompts:
    • @airflow analyze api_data_ingestion_dag
    • @airflow get full diagnostics for data_pipeline_dag
    • @airflow show latest execution details and logs for etl_job_dag
    • @airflow what went wrong with my_dag last run

Get DAG Run Detail

  • Purpose: Deep dive analysis of a specific DAG run ID
  • Sample Prompts:
    • @airflow analyze run <run_id> of <dag_id>
    • @airflow get run details for dag_id=my_dag run_id=manual__2023...

Get DAG Source Code

  • Purpose: Retrieve and view the Python source code of a DAG
  • Sample Prompts:
    • @airflow review source code for data_pipeline_dag
    • @airflow show source code for data_pipeline_dag
    • @airflow get code for my_etl_dag
    • @airflow let me see the implementation of api_ingestion_dag

AI Chat Analysis

  • Purpose: Get AI-powered insights and recommendations using all available tools
  • Sample Prompts:
    • @airflow why is data_pipeline_dag failing? Analyze and show me the logs
    • @airflow give me a summary of failed runs and recommend fixes
    • @airflow check if my dags are healthy and pause any that keep failing

Navigation Tools

Open Views

  • Purpose: Quickly navigate to any part of the extension using natural language
  • Sample Prompts:
    • @airflow open log view for my_dag
    • @airflow show me variables
    • @airflow go to connections
    • @airflow open provider list
    • @airflow show server health

📷 Screenshots

Dag Tree Runs Tasks
screenshoot screenshoot screenshoot
Info Run History AI
screenshoot screenshoot screenshoot
Daily Dag Runs Dag Run History
screenshoot screenshoot

⚙️ Configuration

After installing the extension, you need to configure the extension to connect to your Airflow Server.

  • Click 🔌 Connect to Airflow Server at the top of the extension sidebar.
  • Enter your Airflow Server API Url
    • Exp Airflow 2: http://localhost:8080/api/v1
    • Exp Airflow 3: http://localhost:8080/api/v2
  • Enter your Airflow username
  • Enter your Airflow password

You can also add multiple Airflow Servers to connect to.

  • Use [+] button to add a new Airflow Server
  • Use [-] button to remove an Airflow Server
  • Use [🔌] to switch between servers

ℹ️ To be able to connect an Airflow Server, you should enable Airflow Rest Api. You can take a look the link below on how to do it.

https://airflow.apache.org/docs/apache-airflow/stable/security/api.html

🪲 Bug & New Feature Report

If you have an issue or new feature request, please click link below to add a new issue.

https://github.com/necatiarslan/airflow-vscode-extension/issues/new

💻 Local Airflow via Astronomer

Use Astro provided by the team who build Airflow https://docs.astronomer.io/astro/cli/overview

To spin up a local Airflow instance for testing:

brew install astro  #install cli tool from homebrew
astro dev init      #init the local env
astro dev start     #start airflow as a docker container

#Then you can connect your local airflow using the extension.
#airflow 2 url        http://localhost:8080/api/v1
#airflow 3 url        http://localhost:8080/api/v2
#user/pass  admin/admin

📝 Roadmap

Coming Soon

  • Task View
    • Instance Details
    • Rendered Template

💖 Sponsor & Feedback

If you find this extension useful, please consider:

  • ⭐️ Starring the repo
  • 🪲 Reporting bugs or suggesting features on GitHub Issues
  • 💖 Sponsoring me on GitHub
  • ✍️ Taking our quick user survey

📬 Stay in Touch

  • Author: Necati ARSLAN (necatia@gmail.com)
  • LinkedIn: https://www.linkedin.com/in/necati-arslan/
  • Marketplace: https://marketplace.visualstudio.com/items?itemName=NecatiARSLAN.airflow-vscode-extension

Enjoy! 🚀

  • Contact us
  • Jobs
  • Privacy
  • Manage cookies
  • Terms of use
  • Trademarks
© 2025 Microsoft