🪐✨ Jupyter MCP Server
@datalayer
🪐✨ Jupyter MCP Server について
🪐 🔧 Model Context Protocol (MCP) Server for Jupyter.
基本情報
設定
ツール
ツールは検出されませんでした
ツールは README から自動的に抽出されます。メンテナーは ## Tools という見出しの下に記載することで、このタブに反映できます。
概要
What is 🪐✨ Jupyter MCP Server?
An open-source MCP server that enables AI agents to connect to and manage Jupyter Notebooks in real-time. It bridges AI assistants with Jupyter environments, allowing direct notebook creation, cell execution, and output retrieval. Developed by Datalayer.
How to use 🪐✨ Jupyter MCP Server?
Install via pip install jupyter-mcp-server and configure your MCP client with environment variables JUPYTER_URL, JUPYTER_TOKEN, and ALLOW_IMG_OUTPUT. Run using uvx for quick start or Docker for production. Alternatively, run as a Jupyter Server extension. The server supports STDIO and Streamable HTTP transports.
Key features of 🪐✨ Jupyter MCP Server
- Real-time notebook control with instant output viewing.
- Smart execution that adjusts after cell failures.
- Context-aware understanding of entire notebooks.
- Multimodal output support (images, plots, text).
- Multi-notebook switching and management.
- JupyterLab integration with additional commands.
Use cases of 🪐✨ Jupyter MCP Server
- AI-assisted code development and debugging in Jupyter.
- Automated data analysis and visualization workflows.
- Interactive exploration of notebooks via natural language.
- Orchestrating multi-notebook experiments with an AI agent.
- Real-time collaborative editing with JupyterLab integration.
FAQ from 🪐✨ Jupyter MCP Server
What MCP clients are supported?
Works with any MCP client, including Claude Desktop, Cursor, Windsurf, and others.
How do I configure the server?
Set JUPYTER_URL, JUPYTER_TOKEN, and ALLOW_IMG_OUTPUT environment variables. A MCP_TOKEN is also required since version 1.0.0.
Is Docker supported?
Yes. Use the datalayer/jupyter-mcp-server Docker image with environment variables passed at runtime.
What are the runtime requirements?
Python environment with JupyterLab 4.4.1+, jupyter-collaboration, jupyter-mcp-tools, ipykernel, and pycrdt. Starting v1.0.2, datalayer_pycrdt is no longer needed.
Does it support JupyterHub or Google Colab?
Support for JupyterHub and Google Colab deployments is actively being developed; user feedback is welcome.
「データと分析」の他のコンテンツ
mcp-server-apache-airflow
yangkyeongmoPubMed Analysis MCP Server
DarkroasterA PubMed MCP server.
Bright Data MCP
luminati-ioA powerful Model Context Protocol (MCP) server that provides an all-in-one solution for public web access.
arxiv-latex MCP Server
takashiishidaMCP server that uses arxiv-to-prompt to fetch and process arXiv LaTeX sources for precise interpretation of mathematical expressions in scientific papers.
Bright Data MCP
brightdataA powerful Model Context Protocol (MCP) server that provides an all-in-one solution for public web access.
コメント