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We trained a graph-native AI, then let it reason for days, forming a dynamic relational world model on its own - no pre-programming. Emergent hubs, small-world properties, modularity, & scale-free structures arose naturally. The model then exploited compositional reasoning & uncovered uncoded properties from deep synthesis: Materials with memory,...

359,403 görüntüleme • 1 yıl önce •via X (Twitter)

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benferrum - e/jounce profil fotoğrafı
benferrum - e/jounce1 yıl önce

Hello sir, is there a paper/code available?

Markus J. Buehler profil fotoğrafı
Markus J. Buehler1 yıl önce

Yes - here it is:

InterSystems Developers profil fotoğrafı
InterSystems Developers1 yıl önce

📺 Watch this #video to learn how #OpenSource vs. proprietary #AI models compare one to another. We explore how proprietary models dominate leaderboards like Chatbot Arena, but open-source models are quickly catching up. Plus, we discuss how businesses can start with proprietary models and transition to open-source alternatives over time 👇 Fit AI into your development strategy!

Leonidas Pitsoulis profil fotoğrafı
Leonidas Pitsoulis1 yıl önce

very interesting work, exciting to see graph reasoning as a paradigm

Markus J. Buehler profil fotoğrafı
Markus J. Buehler1 yıl önce

Thanks @LPitsoulis !

Ryan Freel profil fotoğrafı
Ryan Freel1 yıl önce

For the normies imagine you build a machine to organize your sock drawer, but instead of just sorting socks, it spends a few days thinking and suddenly figures out physics, biology, and self-repairing materials all on its own. You didn’t program it to do that. It just happened.

Ali Ihsan Nergiz profil fotoğrafı
Ali Ihsan Nergiz1 yıl önce

Interesting project as always Markus, really loved the graphics around it. It kind of reminds evolutional process

Markus J. Buehler profil fotoğrafı
Markus J. Buehler1 yıl önce

Thank you @aihsannergiz !

Brian Hershey profil fotoğrafı
Brian Hershey1 yıl önce

This is next level proof of concept Markus, you kinda shifted my gears with this one 🙏

Markus J. Buehler profil fotoğrafı
Markus J. Buehler1 yıl önce

Thanks 😀 we were blown away by this result also!

👾Moritz Rietschel profil fotoğrafı
👾Moritz Rietschel1 yıl önce

what did you use grok for? the graphics?

Markus J. Buehler profil fotoğrafı
Markus J. Buehler1 yıl önce

Yes, the 3D graphics - to visualize how the graphs formed over the thinking period evolve.

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