Machine Learning Street Talk (MLST)

#60 Geometric Deep Learning Blueprint (Special Edition)

64 snips
Sep 19, 2021
Joining the discussion are Petar Veličković from DeepMind, renowned for his work on graph neural networks, Taco Cohen from Qualcomm AI Research, specializing in geometric deep learning, and Joan Bruna, an influential figure in data science at NYU. They delve into geometric deep learning, exploring its foundations in symmetry and invariance. The conversation highlights innovative mathematical frameworks, the unification of geometries, and their implications in AI. Insights on dimensionality, algorithmic reasoning, and historical perspectives on geometry further enrich this engaging dialogue.
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ANECDOTE

Geometric Deep Learning in Drug Discovery

  • Michael Bronstein's team used Geometric Deep Learning to predict anti-cancer drug properties in molecules.
  • This framework addresses the challenge of traditional ML with network-structured data.
INSIGHT

Symmetry in Physics and Deep Learning

  • Symmetry is a fundamental concept underpinning modern physics and deep learning.
  • Bronstein uses symmetry principles to derive new neural network architectures.
ANECDOTE

Geometric Deep Learning Mindset

  • The Geometric Deep Learning proto-book emphasizes a mindset of deriving architectures from symmetry and scale separation.
  • Petar Veličković co-authored the book, highlighting its unique approach.
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