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#036 - Max Welling: Quantum, Manifolds & Symmetries in ML

Machine Learning Street Talk (MLST)

NOTE

Unexplored Ideas from Physics in Machine Learning

In a recent talk on the future of graph neural networks, ideas from physics like renormalization, chaos, and holography were discussed. These ideas remain unexplored in machine learning, but more physicists are moving into the field and working on them. Renormalization is the process of coarse graining a system to create an effective theory, similar to how neural nets work. By removing particles and zooming out, an effective description of the world can be built.

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