Latent Space: The AI Engineer Podcast

🔬Beyond AlphaFold: How Boltz is Open-Sourcing the Future of Drug Discovery

177 snips
Feb 12, 2026
Jeremy Wohlwend, co-founder of Boltz and ML researcher in generative structural biology, and Gabriele Corso, co-founder and structural biology researcher from MIT, discuss open-source Boltz models like Boltz-1 and Boltz-2. They cover the shift from AlphaFold to generative multi-chain modeling. Topics include co-evolution signals, sampling vs regression, affinity prediction, large-scale wet-lab validation, and building an open research platform.
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INSIGHT

Generative Models Capture Conformational Diversity

  • Moving from regression to generative modeling lets models sample multiple conformations instead of averaging ambiguous answers.
  • Generative approaches improve uncertainty handling and modeling of dynamic systems.
INSIGHT

Specialized Geometry Beats Generic Scaling

  • Equivariant, specialized architectures remain crucial because molecular data has hard 3D geometric constraints.
  • Scaling in proteins favors high FLOPs per parameter and pairwise/cubic ops, not huge parameter counts.
ANECDOTE

Single-Shot Training With Mid-Run Fixes

  • Boltz trained their large model once due to limited compute and patched bugs during the single run.
  • The model became irreproducible but succeeded after mid-run fixes and external compute support.
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