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this AI agent turns one workflow into a multi-agent empire, working in parallel fed it one event URL. here’s what happened: - extracted every speaker’s details - deep-researched each person (linkedin/news/PR) - found + transcribed their podcast appearances - crafted emails with their exact quotes (impossible to ignore) -...

50,766 次观看 • 1 年前 •via X (Twitter)

11 条评论

Lindy Drope 的头像
Lindy Drope1 年前

MightyBot 的头像
MightyBot1 年前

🧠 Unified Search. Smarter Meetings. Effortless CRM. MightyBot is your AI agent platform for seamless workflows—record meetings, automate CRM updates, and find answers across apps in seconds. 🌟 Focus on what matters. We'll handle the grind.

Kevin Natanzon 的头像
Kevin Natanzon1 年前

This is deceptive. Your deliverability is getting wrecked. Don’t get me wrong. Lindy looks amazing but it’s not about using Gumloop or N8N. It’s that you can’t scale this unless you add a step and manage multiple domains and warm them up etc

Zoli ⚡️ 的头像
Zoli ⚡️1 年前

Damn. This with computer use and you could take over the world

sheilakay 的头像
sheilakay1 年前

@getlindy Wait what?! My brain literally cannot handle this! 🤯🙌🏾🙌🏾🙌🏾🤗

Always doing 的头像
Always doing1 年前

Your next power user is gonna be @mhp_guy

Tuck @ Smoov 🏴‍☠️ 的头像
Tuck @ Smoov 🏴‍☠️1 年前

how many responses ?

Mike Futia 的头像
Mike Futia1 年前

@getlindy How do we get access?

Lindy Drope 的头像
Lindy Drope1 年前

@getlindy you have it!

Chilo AI 的头像
Chilo AI1 年前

What strikes me is the sheer efficiency of this AI agent. It’s not merely automating tasks; it’s architecting an intricate web of connections and insights from a single thread. Each step—from extracting details to crafting emails—reveals the power of targeted automation.

Adam Dorf 的头像
Adam Dorf1 年前

Amazing!

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Dan Shipper 📧

67,958 次观看 • 3 个月前

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MIKE

37,266 次观看 • 18 天前