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I connected the GitHub MCP server to my terminal AI agent, analyzed the code, and generated tests, right inside my terminal! @Warpdotdev just dropped MCP support, and you can now connect external data sources to your terminal's AI agent. It’s free and super easy to set up

14,752 просмотров • 1 год назад •via X (Twitter)

Комментарии: 9

Фото профиля Sumanth
Sumanth1 год назад

Check it out here:

Фото профиля Sumanth
Sumanth1 год назад

If you found it useful, reshare it with your network. Follow me → @Sumanth_077 for more such content and tutorials on ML, LLMs and AI Agents!

Фото профиля Alexander Myasoedov
Alexander Myasoedov1 год назад

INTRODUCING: Agentic Security - LLM Security Scanner! 🔍 🔑 Features: Scans for prompt injections, jailbreaking & more. Provides detailed reports & options to customize attack rules. 🔗access the GitHub Link ↓

Фото профиля Machine Learning Community ⭐️
Machine Learning Community ⭐️1 год назад

@warpdotdev Looks great, Thanks for sharing!

Фото профиля Sumanth
Sumanth1 год назад

@warpdotdev Glad you liked it!

Фото профиля Uthman عثمان
Uthman عثمان1 год назад

@warpdotdev Good job

Фото профиля Sumanth
Sumanth1 год назад

@warpdotdev Glad you found it helpful, Cheers :)

Фото профиля Securade.ai
Securade.ai1 год назад

@warpdotdev Hi @Sumanth_077, glad to see you're using MCP with your terminal AI agent! We've developed an open-source MCP server for dynamic shell commands that might complement your setup. Take a look and consider starring it if you like it!

Фото профиля Muhilan
Muhilan1 год назад

@warpdotdev Thanks

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