colab-mcp
Enables agents to control Google Colab notebooks through a secure, headless WebSocket architecture, allowing cell creation, editing, execution, and inspection without browser automation.
README
Headless Colab MCP Server
colab-mcp is a FastMCP server for controlling Google Colab notebooks through a secure, headless WebSocket architecture. Agents can create, edit, run, and inspect notebook cells without browser automation or UI scraping.
Features
- Headless Operation — Run notebook operations through a secure WebSocket proxy
- Zero Browser Management — No Chromium, browser profiles, or DOM scraping
- ML-Ready Tooling — Workspace setup, dataset handling, and pipeline execution
- Structured Results — Typed stdout, stderr, file paths, and error details
- FastMCP Integration — Clean MCP server interface for tool composition
Architecture
The server uses two cooperating layers:
ColabSessionProxy
- Starts a localhost WebSocket server
- Generates a one-time connection URL with
mcpProxyTokenandmcpProxyPort - Waits for an authenticated Colab tab to attach
NotebookController
- Exposes the stable MCP tool surface
- Discovers proxy capabilities from the connected Colab frontend
- Maps server-owned tools to proxy-backed cell operations
- Falls back to direct runtime execution only when needed
Requirements
| Requirement | Version |
|---|---|
| Python | 3.13+ |
| uv | Latest |
| Google Colab | Active browser session |
Installation
uv sync
uv run colab-mcp
Configuration
Add this to your MCP configuration:
{
"mcpServers": {
"colab-mcp-local": {
"command": "uv",
"args": ["run", "colab-mcp"],
"cwd": "${workspaceFolder}",
"timeout": 30000
}
}
}
API Reference
Core Notebook Tools
| Tool | Description |
|---|---|
connect_colab(notebook_url?) |
Initialize connection and retrieve proxy URL |
list_colab_cells() |
List all cells in the notebook |
read_colab_cell(cell_id) |
Read a specific cell |
write_colab_cell(code, cell_id?, mode?) |
Write code to a cell |
run_colab_cell(cell_id?, wait?, timeout_seconds?) |
Execute a cell |
run_colab_code(code, mode?, wait?, timeout_seconds?) |
Write and execute code in one step |
get_colab_output(cell_id?) |
Retrieve execution output |
save_colab_notebook() |
Save the notebook |
run_runtime_code(code) |
Execute code directly in the runtime |
ML Workflow Tools
| Tool | Description |
|---|---|
setup_ml_workspace(packages) |
Install packages and create standard data directories |
fetch_remote_dataset(download_url, extract_to) |
Download and extract datasets |
execute_ml_pipeline(code_block) |
Execute Python blocks with structured results |
Usage
- Start the MCP server.
- Call
connect_colabto get aconnect_url,proxy_token, andproxy_port. - Paste the
connect_urlinto an active Colab tab. - Wait for the proxy connection to establish.
- Run notebook operations through the MCP tools.
Example
uv run colab-mcp
connect_colab()
setup_ml_workspace(["pandas", "scikit-learn"])
fetch_remote_dataset(url, "/content/data")
execute_ml_pipeline(training_code)
get_colab_output()
Development & Verification
PYTHONPATH=src python scripts/smoke_test.py
PYTHONPATH=src py -m pytest
cat RELEASE_CHECKLIST.md
Test coverage
- Proxy capability discovery
- Native Colab argument mapping
- Cell ID extraction
- ML tool routing through proxy
- Execution result normalization
License
This project is licensed under the Apache License 2.0.
Acknowledgments
This headless WebSocket proxy architecture was inspired by the open-source work provided by the Google Colab team.
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