Browser-use-claude-mcp

Created By
jasondsmith72a year ago
A browser automation MCP server for AI models like Claude and Gemini 2.5, enabling web browsing capabilities through natural language
Overview

What is Browser-use-claude-mcp?

Browser-use-claude-mcp is a browser automation server designed for AI models like Claude and Gemini 2.5, enabling them to browse the web and interact with websites using natural language commands.

How to use Browser-use-claude-mcp?

To use this project, clone the repository, install the dependencies, configure the environment variables, and start the server. You can then use various tools to perform web browsing tasks.

Key features of Browser-use-claude-mcp?

  • Full browser automation capabilities (navigation, form filling, clicking, etc.)
  • Web search and content extraction features
  • Support for multiple AI providers including Google Gemini 2.5 and Anthropic Claude
  • Image analysis and AI-powered content analysis
  • Modular architecture with comprehensive logging and error handling

Use cases of Browser-use-claude-mcp?

  1. Automating web searches and data extraction for research purposes.
  2. Assisting AI models in browsing and interacting with web content.
  3. Capturing screenshots and analyzing webpage content for insights.

FAQ from Browser-use-claude-mcp?

  • Can this project work with any AI model?

It primarily supports Google Gemini 2.5 and Anthropic Claude, but can be extended to other models.

  • Is there a detailed installation guide?

Yes, detailed installation instructions are provided in the INSTALL.md file in the repository.

  • What programming language is used?

The project is written in TypeScript for reliability and maintainability.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
jasondsmith72
Star
0
Language
TypeScript
License
MIT license

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