notebookllm_mcp
Converts Jupyter notebooks to a simplified plain text format to reduce token usage for LLMs, and can convert back. Enables loading, editing, and saving notebooks via MCP tools.
README
NotebookLLM MCP Server
A Model Context Protocol server for working with Jupyter Notebooks (
.ipynb files) in a way that is efficient for Large Language Models (LLMs). It converts notebooks to a simplified plain text format to reduce token usage and cost, and can convert them back.
Available Tools
load_notebook: Loads a.ipynbfile into memory.- Arguments:
filepath(string): The absolute path to the.ipynbfile.
- Returns: (string) Success or failure message, including cell count.
- Arguments:
notebook_to_plain_text: Converts a.ipynbfile (loaded or from path) to a simplified plain text representation.- Arguments:
input_filepath(string, optional): Absolute path to the.ipynbfile for on-the-fly conversion.
- Returns: (string) Plain text representation or error message.
- Arguments:
plain_text_to_notebook_file: Converts plain text content back to a.ipynbfile and saves it.- Arguments:
plain_text_content(string): Plain text content to convert.output_filepath(string): Absolute path to save the.ipynbfile (must end with.ipynb).
- Returns: (string) Success or failure message.
- Arguments:
add_code_cell_to_loaded_notebook: Adds a new code cell to the currently loaded notebook.- Arguments:
code_content(string): Source code for the new cell.position(integer, optional): Position to insert the cell (appends ifnull).
- Returns: (string) Success or failure message and current cell count.
- Arguments:
add_markdown_cell_to_loaded_notebook: Adds a new markdown cell to the currently loaded notebook.- Arguments:
markdown_content(string): Markdown content for the new cell.position(integer, optional): Position to insert the cell (appends ifnull).
- Returns: (string) Success or failure message and current cell count.
- Arguments:
save_loaded_notebook: Saves the currently loaded notebook to a file.- Arguments:
output_filepath(string, optional): Absolute path to save the.ipynbfile (must end with.ipynb). Saves to original path ifnull.
- Returns: (string) Success or failure message.
- Arguments:
Installation
Using uv (recommended)
When using uv, no specific installation is needed. We will use uvx to directly run notebookllm_mcp.
Using PIP
Alternatively, you can install notebookllm_mcp via pip:
pip install notebookllm-mcp
After installation, you can run it as a script using:
python -m notebookllm_mcp
Configuration
Configure for Claude.app
Add to your Claude settings:
Using uvx
{
"mcpServers": {
"notebookllm": {
"command": "uvx",
"args": ["notebookllm_mcp"]
}
}
}
Using pip installation
{
"mcpServers": {
"notebookllm": {
"command": "python",
"args": ["-m", "notebookllm_mcp"]
}
}
}
Configure for Zed
Add to your Zed settings.json:
Using uvx
"context_servers": [
"notebookllm": {
"command": "uvx",
"args": ["notebookllm_mcp"]
}
],
Using pip installation
"context_servers": {
"notebookllm": {
"command": "python",
"args": ["-m", "notebookllm_mcp"]
}
},
Configure for VS Code
For quick installation, use one of the one-click install buttons below...
For manual installation, add the following JSON block to your User Settings (JSON) file in VS Code. You can do this by pressing Ctrl + Shift + P (or Cmd + Shift + P on macOS) and typing Preferences: Open User Settings (JSON).
Optionally, you can add it to a file called .vscode/mcp.json in your workspace. This will allow you to share the configuration with others.
Note that the
mcpkey is needed when using themcp.jsonfile.
Using uvx
{
"mcp": {
"servers": {
"notebookllm": {
"command": "uvx",
"args": ["notebookllm_mcp"]
}
}
}
}
Using pip installation
{
"mcp": {
"servers": {
"notebookllm": {
"command": "python",
"args": ["-m", "notebookllm_mcp"]
}
}
}
}
Example Interactions
-
Load a notebook:
{ "name": "load_notebook", "arguments": { "filepath": "/path/to/your/notebook.ipynb" } }Response:
{ "message": "Notebook /path/to/your/notebook.ipynb loaded successfully. Cell count: 10" } -
Convert loaded notebook to plain text:
{ "name": "notebook_to_plain_text", "arguments": {} }Response:
# CELL 1 CODE print("Hello World") # CELL 2 MARKDOWN This is a markdown cell. ... -
Convert plain text back to a notebook file:
{ "name": "plain_text_to_notebook_file", "arguments": { "plain_text_content": "# CELL 1 CODE\nprint(\"Hello Again\")\n\n# CELL 2 MARKDOWN\nAnother markdown cell.", "output_filepath": "/path/to/your/new_notebook.ipynb" } }Response:
{ "message": "Notebook saved to /path/to/your/new_notebook.ipynb" }
Debugging
You can use the MCP inspector to debug the server. For uvx installations:
npx @modelcontextprotocol/inspector uvx notebookllm_mcp
Or if you've installed the package via pip:
npx @modelcontextprotocol/inspector python -m notebookllm_mcp
Build
This package is typically installed via pip or used directly with uvx. If you are developing the package, you can build it using standard Python build tools.
python -m build
Contributing
Contributions are welcome! Please feel free to submit pull requests for bug fixes, new features, or improvements to documentation.
License
This project is licensed under the MIT License.
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