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David Pfau: Manifold Factorization and AI for Science

The Gradient: Perspectives on AI

CHAPTER

Intro

The guest talks about their research interests in using machine learning for computational physics, discussing topics like differential geometry in unsupervised learning and neural network wave functions for quantum chemistry. The conversation touches on disentangled representations and the guest's unique perspective on AGI.

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