
browser mcp
A simple MCP to call the browser-use repo
Repository Info
About This Server
A simple MCP to call the browser-use repo
Model Context Protocol (MCP) - This server can be integrated with AI applications to provide additional context and capabilities, enabling enhanced AI interactions and functionality.
Documentation
browser-mcp
A MCP (Model Control Protocol) server for browser-use library. This package allows AI agents to perform web browsing tasks through a standardized interface.
Installation
You can install the package using pip:
pip install browser-mcp
Or with uv (recommended):
uv pip install browser-mcp
After installation, you'll need to install Playwright's browser dependencies:
playwright install
Alternatively, you can use the browser-mcp-run command which will automatically install these dependencies if they're missing.
Setup
For development, clone the repository and install in development mode:
# Clone the repository
git clone https://github.com/pranav7/browser-mcp.git
cd browser-mcp
# Install dependencies with uv
uv pip install -e .
# Or with pip
pip install -e .
Environment Variables
Create a .env file with your OpenAI API key:
OPENAI_API_KEY=your_api_key_here
Usage
Running the MCP Server
In Development Mode
When working with the package in development mode, you can run it directly with Python:
mcp dev browser_mcp/server.py
In Production
After installing the package from PyPI, you can run it with uvx:
uvx browser-mcp
The package is specifically designed to work with uvx, which allows for more efficient package loading and execution.
With Automatic Dependency Check
You can also use the browser-mcp-run command, which checks for and installs Playwright dependencies automatically before starting the server:
browser-mcp-run
This ensures that all required Playwright browsers are installed on your system.
Using as a Client
from mcp.client import Client
async def main():
client = await Client.connect()
# Perform a task with the browser
result = await client.rpc("perform_task_with_browser",
task="Search for the latest news about AI and summarize the top 3 results")
print(result)
await client.close()
Programmatic Usage
You can also use the package programmatically:
# In development mode
from src import run
# In production (after installing the package)
# from browser_mcp import run
# Run the MCP server with stdio transport
run(transport="stdio")
# Or with SSE transport
# run(transport="sse")
Available RPC Methods
search_web(task: str, model: str = "gpt-4o-mini")- Performs basic web searches using browser-use Agent. Themodelparameter is optional and defaults to "gpt-4o-mini".search_web_with_planning(task: str, base_model: str = "gpt-4o-mini", planning_model: str = "o3-mini")- Performs complex web searches that require planning. Uses a planner LLM for better task decomposition. Bothbase_modelandplanning_modelparameters are optional with their respective defaults.
Development
Testing
Tests can be run with:
python -m unittest discover
You can also test the package functionality with:
python test_uvx.py
This script will:
- Test importing the package directly (development mode)
- Attempt to run it with uvx (production mode)
Note: The uvx test may fail in development mode unless the package is published to PyPI. This is expected behavior.
Publishing to PyPI
This project uses GitHub Actions to automatically publish to PyPI when a new release is created. The workflow:
- Builds the package using uv
- Publishes it to PyPI using trusted publishing
To create a new release:
- Update the version in
pyproject.toml - Create a new release on GitHub
- The GitHub Action will automatically build and publish the package
License
MIT License
Quick Start
Clone the repository
git clone https://github.com/pranav7/browser-mcpInstall dependencies
cd browser-mcp
npm installFollow the documentation
Check the repository's README.md file for specific installation and usage instructions.
Repository Details
Recommended MCP Servers
Discord MCP
Enable AI assistants to seamlessly interact with Discord servers, channels, and messages.
Knit MCP
Connect AI agents to 200+ SaaS applications and automate workflows.
Apify MCP Server
Deploy and interact with Apify actors for web scraping and data extraction.
BrowserStack MCP
BrowserStack MCP Server for automated testing across multiple browsers.
Zapier MCP
A Zapier server that provides automation capabilities for various apps.