Physics ∩ ML
a virtual hub at the interface of theoretical physics and deep learning.
Past talks:
10
Mar 2021
Generative and Invertible Networks for the LHC
Tilman Plehn, Heidelberg University, 12:00 EDT
24
Feb 2021
Neural Mechanics: Symmetry and Broken Conservation Laws in Deep Learning Dynamics
Daniel Kunin and Hidenori Tanaka, 12:00 EDT
10
Feb 2021
Physics meets ML to solve cosmological inference
Ben Wandelt, Institut d’Astrophysique de Paris / Institut Lagrange, Sorbonne University and Center for Computational Astrophysics, Flatiron Institute, New York, 12:00 EDT
27
Jan 2021
The Importance of Being Interpretable
Michelle Ntampaka, Space Telescope Science Institute, 12:00 EDT
13
Jan 2021
Quantum Machine Learning in High Energy Physics
Sofia Vallecorsa, CERN, 12:00 EDT
16
Dec 2020
Two talks from string_data 2020
Haggai Maron (NVIDIA Research) and Sergei Gukov (CalTech), 12:00 EDT
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