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Don't just learn how to build AI agents. Instead, learn how to build... ...full-stack AI agents that actually work inside apps. Yet, the main challenge is transitioning them from local setups to user-facing apps. Here are some key factors to consider: - How do you embed a seamless UI?...

27,153 次观看 • 1 年前 •via X (Twitter)

11 条评论

Akshay 🚀 的头像
Akshay 🚀1 年前

Power your stack apps with AI Agents!🔥 Check out CopilotKit's GitHub repo here:

Greg Caplan 🚀 的头像
Greg Caplan 🚀2 年前

Stop wasting time following up with leads. Let our AI agents do it for you.

io.net 的头像
io.net1 年前

first prompt is the most important

house of crypto 的头像
house of crypto1 年前

I want a full dezentralized system to have full data security.

A L I Z - AZTELA 的头像
A L I Z - AZTELA1 年前

this is super helpful where do you find this so fast?

Akshay 🚀 的头像
Akshay 🚀1 年前

Glad you liked it! :)

Farhan 的头像
Farhan1 年前

This is next-level AI development

Avi Chawla 的头像
Avi Chawla1 年前

Finally!! Been waiting for this for quite some time. Thanks Akshay, going to check this.

Jobnova.ai 的头像
Jobnova.ai1 年前

debugging AI integration feels like waiting on HR's ACK... both need better error handling. at least with AI maybe automate the 'we'll be in touch' loop. layer by layer, right?

€kemini 的头像
€kemini1 年前

Not just impressive, this is next level!

Arindam Majumder 𝕏 的头像
Arindam Majumder 𝕏1 年前

Been using Copilotkit for a while they are amazing!

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320,284 次观看 • 5 个月前

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