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Kagi Session2API MCP

Kagi Session2API MCP is an open-source MCP server that lets AI assistants access Kagi Search and Summarizer through existing session tokens rather than a separate API key. It is aimed at Claude Desktop, Cursor, Windsurf, Hermes, and other MCP-client users who want high-quality web search available directly inside agent workflows. The project is useful for research assistants, coding agents, and personal automation setups where search and summarization need to be called as tools. Its appeal is pragmatic: it bridges a paid search product into the model-context ecosystem with local configuration and no heavyweight platform. It is notable now because recent GitHub MCP searches showed strong early interest and stars for a very specific agent-tooling gap.

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