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Setting up your own MCP server shouldn’t take hours. With Composio, you can launch a fully functional MCP server straight from the dashboard in just a few clicks. No setup scripts. No infra headaches. No complex configs. Just a clean, intuitive interface where you click, configure, and go live...

18,580 次观看 • 1 年前 •via X (Twitter)

11 条评论

Arindam Majumder 𝕏 的头像
Arindam Majumder 𝕏1 年前

Composio is Awesome Gonna build some projects with it soon

Mobile Scanner 的头像
Mobile Scanner1 年前

Scan any documents, convert images into text, PDF files, etc. 👍

Haimantika Mitra 的头像
Haimantika Mitra1 年前

Nice video

Not Adarsh 👀 的头像
Not Adarsh 👀1 年前

Magic ✨

Omkar_G 的头像
Omkar_G1 年前

Neat !

Anisha😼 的头像
Anisha😼1 年前

Niceeee

Jay 的头像
Jay1 年前

this is good

Ish Kapoor 的头像
Ish Kapoor1 年前

Very cool

govind ✢ 的头像
govind ✢1 年前

this is cool!

Shivay Lamba 的头像
Shivay Lamba1 年前

awesome!

Aniket 的头像
Aniket1 年前

pretty clean

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Andrew Ng

142,010 次观看 • 1 年前