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Our Hyperbolic agent can now perform fine-tuning tasks! This is a step forward for our self-evolving agent vision. Kudos to Zile from Blockchain Capital! This is how it works: 1. sync files to remote machine 2. install relevant dependencies 3. run an initial Unsloth AI fine-tune task 4. do...

20,693 Aufrufe • vor 1 Jahr •via X (Twitter)

11 Kommentare

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Jaspervor 1 Jahr

Check out the PR:

Profilbild von Jasper
Jaspervor 1 Jahr

I met @zile_cao at @coinbase @CoinbaseDev agent hackathon two weeks ago. While his team didn't finish the self-evolving bounty at that time, we were still amazed by their understanding of our agent framework and the progress. We decided to give them the bounty and it motivated him to continue building on our agent framework. Hackathon is the best place to build out the developer community. We have met so many talented builders and all of them are building toward AI's open future 💜

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Togoda AI Search Enginevor 1 Jahr

Togoda is Google on Steroids with AI summaries . 🚀 The only thematic AI search engine.👀 It's 100% private with third party proxy. 🧨 Try it today & experience the difference! 👉Follow us @togoda_com 👈 🚀Help us grow & share this post!🚀

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Hyperbolicvor 1 Jahr

@zile_cao @blockchaincap @UnslothAI Accelerate!

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Eazydoe.apt (🏴‍☠️,🌐)vor 1 Jahr

@hyperbolic_labs @zile_cao @blockchaincap @UnslothAI Sounds like progress, but while you're taking steps, the rest are already winning. If you want to outpace, look at BlockProtocol's Web3 AI-driven marketing tool—already a game-changer.

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🐧 lalo adrian morales 𝕏vor 1 Jahr

@hyperbolic_labs @zile_cao @blockchaincap @UnslothAI that was one of the best tutorials ive ever seen.. and i watch a crap load. great job man

Profilbild von Crypto Gyan
Crypto Gyanvor 1 Jahr

@hyperbolic_labs @zile_cao @blockchaincap @UnslothAI Fine tuning is future, tailoring models to specific tasks for faster, smarter, and more efficient performance.

Profilbild von 𝙅𝙖𝙮𝙈☂️
𝙅𝙖𝙮𝙈☂️vor 1 Jahr

@hyperbolic_labs @zile_cao @blockchaincap @UnslothAI Incredible leap for AI! #Hyperbolic’s crushing it with this fine-tuning upgrade and GPU Marketplace expansion huge props all around

Profilbild von Ayush Mudgal
Ayush Mudgalvor 1 Jahr

@hyperbolic_labs @zile_cao @blockchaincap @UnslothAI How do you curate the dataset for this fine tune run? Also amazing to see the usage of @UnslothAI!

Profilbild von Jasper
Jaspervor 1 Jahr

@zile_cao @blockchaincap @UnslothAI If you're building some cool apps or agents on Hyperbolic, share the demos with me and I'm happy to share them publicly!

Profilbild von bigray0x.eth 🌱
bigray0x.eth 🌱vor 1 Jahr

@hyperbolic_labs @zile_cao @blockchaincap @UnslothAI Keep shipping sir 🫡

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Santiago

164,162 Aufrufe • vor 1 Jahr