Latent Space: The AI Engineer Podcast

🔬Searching the Space of All Possible Materials — Prof. Max Welling, CuspAI

273 snips
Feb 25, 2026
Max Welling, renowned theoretical physicist and ML researcher building CuspAI to speed materials discovery for climate solutions. He sketches nature as a kind of computer and the idea of a “physics processing unit.” Topics include symmetry and equivariant networks, diffusion models tied to thermodynamics, why materials may limit the energy transition, and how AI and lab experiments can form an automated discovery loop.
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Symmetry Connects Physics And ML

  • Physics—especially symmetry and group theory—forms the throughline from Welling's quantum work to equivariant neural networks.
  • He credits Taco Cohen and Maurice Weiler for formalizing equivariance across rotations, spheres, and gauge symmetries.

Generative Models Mirror Stochastic Thermodynamics

  • Welling identifies a deep mathematical equivalence between diffusion/generative models and stochastic thermodynamics.
  • He turned course material into a book showing how free energy, diffusion, Schrodinger bridges and MCMC mirror non-equilibrium physics.

Materials Are The Real Bottleneck

  • Welling argues materials are the foundational bottleneck beneath software and AI because hardware depends on material innovation.
  • He frames materials discovery as a searchable space like a search engine that can be automated to propose novel molecules and polymers.
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