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4/ Crew AI Orchestration framework for building reliable autonomous AI agents This example shows an agent that automatically creates and schedules social media posts, but it can research, code, and even write apps João Moura あい

36,126 views • 2 years ago •via X (Twitter)

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Alex Reibman 🖇️'s profile picture
Alex Reibman 🖇️2 years ago

OpenAI is losing its lead to AI that’s actually Open. And these cracked engineers are here to prove it. Some of the most impressive demos I’ve seen in a long time. Here’s what we saw at the @ollama Open Source and Local AI meetup at @cerebral_valley (🧵):

Alex Reibman 🖇️'s profile picture
Alex Reibman 🖇️2 years ago

1/ Ollama for Windows @ollama running natively and seamlessly on Windows 10 and 11. Super fast, and no need for WSL @dhiltgen

Alex Reibman 🖇️'s profile picture
Alex Reibman 🖇️2 years ago

2/ LangGraph Create LLM applications and agents with planned graph execution workflows @RLanceMartin @LangChainAI

Alex Reibman 🖇️'s profile picture
Alex Reibman 🖇️2 years ago

3/ Procrastination Coach Open source and local productivity monitor that looks at your screen and uses LLaVA to determine whether you’re being productive or slacking off @charliebholtz @replicate

Alex Reibman 🖇️'s profile picture
Alex Reibman 🖇️2 years ago

That's all for this time. Huge thanks to @ollama @cerebral_valley @SHACK15sf @mchiang0610 for hosting. More insane demos from the OSS LLM community coming soon Want to see more of the latest advancements in agents, LLMs, and generative Al? Follow @AlexReibman

Mrigank Tripathi's profile picture
Mrigank Tripathi2 years ago

@joaomdmoura @crewai @vishalsaha

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