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chrome-devtools-mcp

December 14, 202516,6861,029

Summary

An MCP server that exposes Chrome DevTools to coding agents, enabling them to inspect and manipulate web pages programmatically. This is a big enabler for realistic browser-based agents that need deep debugging and automation capabilities. ([github.com](https://github.com/trending?since=daily))

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