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With Tempo's MCP App Store, building functional applications with AI becomes a reality Let’s build a web scraper using Firecrawl and Tempo p.s It only took 1 prompt

18,197 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Micky
Micky1 год назад

@firecrawl_dev why is the guy who does the demos always so handsome??

Фото профиля Greg Caplan 🚀
Greg Caplan 🚀2 лет назад

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

Фото профиля Git Maxd
Git Maxd1 год назад

@firecrawl_dev Ridiculously cool - @Tempo_Labs is on fire!

Фото профиля Alex Shibu
Alex Shibu1 год назад

@firecrawl_dev Magnificent!!

Фото профиля Andrey
Andrey1 год назад

@firecrawl_dev Wow, really useful, is it like a no-code agent builder? Or cursor for building agent with plugins to install?

Фото профиля Sinuhet
Sinuhet1 год назад

@firecrawl_dev Very nice. Why I have to choose Supabase with firecrawl? can I not use Convex instead? Asking as I have seen Convex app in your video

Фото профиля Michael Israel
Michael Israel1 год назад

@firecrawl_dev

Фото профиля dyfrai
dyfrai1 год назад

@firecrawl_dev GJ

Фото профиля Dux
Dux1 год назад

@firecrawl_dev That's pretty quacked!! Will have to give Tempo a try

Фото профиля Charles Heitmuller
Charles Heitmuller1 год назад

@firecrawl_dev Micky, you should start an agency where your services are demoing people's products 👏 This was super clean and very well done, congrats on the launch

Фото профиля ChatableApps
ChatableApps1 год назад

@firecrawl_dev Just one prompt? I need that kind of magic for my laundry!

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