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Now you can supercharge your terminal with MCP servers (open-source). MCP CLI lets you interact with local and remote MCP servers, built with a rich UI, and full LLM provider integration. You can run tools, manage conversations, or automate workflows directly from your terminal. Key features: - Multiple interaction...

39,981 次观看 • 11 个月前 •via X (Twitter)

10 条评论

Avi Chawla 的头像
Avi Chawla11 个月前

GitHub Repo → Get a free visual guidebook to learn MCPs from scratch (with 11 projects):

Avi Chawla 的头像
Avi Chawla11 个月前

If you found it insightful, reshare it with your network. Find me → @_avichawla Every day, I share tutorials and insights on DS, ML, LLMs, and RAGs.

Akshay 🚀 的头像
Akshay 🚀11 个月前

Connect you CLI to any MCP server! Thanks for sharing Avi! 🙌

Avi Chawla 的头像
Avi Chawla11 个月前

🤝

TheAICoder 的头像
TheAICoder11 个月前

Terminal LLM integration is definitely the way to go for dev workflows. The "rich UI" part in a CLI is intriguing, gotta see how that feels.

Kelechi RecordBreaker 的头像
Kelechi RecordBreaker11 个月前

Concurrent execution in the terminal? Brilliant. This will save me hours on workflow automation. Love how it handles LLM switching too.

Robert Youssef 的头像
Robert Youssef11 个月前

sounds like a neat tool for terminal enthusiasts. but let’s be real, how often do these features actually deliver? concurrency is nice, but don’t get too cozy. stick to simple, reliable tasks first.

Chris Felix 的头像
Chris Felix11 个月前

How different is it from Gemini CLI?

Mialo Tech | AI Innovation 的头像
Mialo Tech | AI Innovation11 个月前

Seamless CLI interactions for multi-provider LLM ops, exactly the modular approach teams need to manage data heavy pipelines.

Webtalkbot 的头像
Webtalkbot11 个月前

Only tools are supported? What about tokens counting?

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141,952 次观看 • 1 年前