Jupyter Earth MCP Server
Provides tools for geospatial analysis within Jupyter notebooks.
This repository is archived - Use https://github.com/datalayer/earthdata-mcp-server instead.
🌎 ✨ Jupyter Earth MCP Server
🌍 Jupyter Earth MCP Server is a Model Context Protocol (MCP) server implementation that provides a set of tools for 🗺️ Geospatial analysis in 📓 Jupyter notebooks.
The following demo uses the Earthdata MCP server to search for datasets and data granules on NASA Earthdata, this MCP server to download the data in Jupyter and the jupyter-mcp-server to run further analysis.
Start JupyterLab
Make sure you have the following installed. The collaboration package is needed as the modifications made on the notebook can be seen thanks to Jupyter Real Time Collaboration.
pip install jupyterlab==4.4.1 jupyter-collaboration==4.0.2 ipykernel
pip uninstall -y pycrdt datalayer_pycrdt
pip install datalayer_pycrdt==0.12.17
Then, start JupyterLab with the following command.
jupyter lab --port 8888 --IdentityProvider.token MY_TOKEN --ip 0.0.0.0
You can also run make jupyterlab.
[!NOTE]
The
--ipis set to0.0.0.0to allow the MCP server running in a Docker container to access your local JupyterLab.
Use with Claude Desktop
Claude Desktop can be downloaded from this page for macOS and Windows.
For Linux, we had success using this UNOFFICIAL build script based on nix
# ⚠️ UNOFFICIAL
# You can also run `make claude-linux`
NIXPKGS_ALLOW_UNFREE=1 nix run github:k3d3/claude-desktop-linux-flake \
--impure \
--extra-experimental-features flakes \
--extra-experimental-features nix-command
To use this with Claude Desktop, add the following to your claude_desktop_config.json (read more on the MCP documentation website).
[!IMPORTANT]
Ensure the port of the
SERVER_URLandTOKENmatch those used in thejupyter labcommand.The
NOTEBOOK_PATHshould be relative to the directory where JupyterLab was started.
Claude Configuration on macOS and Windows
{
"mcpServers": {
"jupyter-earth": {
"command": "docker",
"args": [
"run",
"-i",
"--rm",
"-e",
"SERVER_URL",
"-e",
"TOKEN",
"-e",
"NOTEBOOK_PATH",
"datalayer/jupyter-earth-mcp-server:latest"
],
"env": {
"SERVER_URL": "http://host.docker.internal:8888",
"TOKEN": "MY_TOKEN",
"NOTEBOOK_PATH": "notebook.ipynb"
}
}
}
}
Claude Configuration on Linux
CLAUDE_CONFIG=${HOME}/.config/Claude/claude_desktop_config.json
cat <<EOF > $CLAUDE_CONFIG
{
"mcpServers": {
"jupyter-earth": {
"command": "docker",
"args": [
"run",
"-i",
"--rm",
"-e",
"SERVER_URL",
"-e",
"TOKEN",
"-e",
"NOTEBOOK_PATH",
"--network=host",
"datalayer/jupyter-earth-mcp-server:latest"
],
"env": {
"SERVER_URL": "http://localhost:8888",
"TOKEN": "MY_TOKEN",
"NOTEBOOK_PATH": "notebook.ipynb"
}
}
}
}
EOF
cat $CLAUDE_CONFIG
Components
Tools
The server currently offers 1 tool:
download_earth_data_granules
- Add a code cell in a Jupyter notebook to download Earth data granules from NASA Earth Data.
- Input:
folder_name(string): Local folder name to save the data.short_name(string): Short name of the Earth dataset to download.count(int): Number of data granules to download.temporal(tuple): (Optional) Temporal range in the format (date_from, date_to).bounding_box(tuple): (Optional) Bounding box in the format (lower_left_lon, lower_left_lat, upper_right_lon, upper_right_lat).
- Returns: Cell output.
Prompts
download_analyze_global_sea_level- To ask for downloading and analyzing global sea level data in Jupyter.
- Returns: Prompt correctly formatted.
Building
You can build the Docker image it from source.
make build-docker
संबंधित सर्वर
Alpha Vantage MCP Server
प्रायोजकAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Figma
Interact with Figma files to view, comment on, and analyze designs.
Alertmanager
MCP to interact with Alertmanager - observability alerts management tool
Code Sync MCP Server
Hot reload remote containerized Python applications directly from your IDE.
CLI Exec
Execute shell commands with structured output via a powerful CLI server.
OpenRouter MCP Client for Cursor
An MCP client for Cursor that uses OpenRouter.ai to access multiple AI models. Requires an OpenRouter API key.
ThoughtSpot SpotterCode MCP Server
AI-powered MCP server from ThoughtSpot that helps developers integrate ThoughtSpot content, Visual Embed SDK, and REST APIs in AI-native IDEs.
TypeScript Migrator MCP
Migrate JavaScript files to TypeScript with customizable conversion rules.
ComfyUI MCP Server
An image generation server that connects to a local ComfyUI instance via its API, supporting dynamic workflows.
Pprof Analyzer
Analyze Go pprof performance profiles (CPU, heap, goroutine, etc.) and generate flamegraphs.
即梦AI多模态MCP
A multimodal generation service using Volcengine Jimeng AI for image generation, video generation, and image-to-video conversion.