Solving physics many-body problems with deep learning
PIRSA ID:
19110081
Series:
Machine Learning Initiative
Event Type:
Seminar
End date:
Speaker(s):
- Frank Noe, Freie Universität Berlin
Solving classical and quantum physics many-body systems are amongst the hardest problems in the natural sciences, but also of fundamental importance for applications such as material and drug design. In this talk, I will give a an overview of fundamental physics problems at multiple time- and lengthscales and describe deep learning methods to address them: 1) solving the quantum-chemical electronic Schrödinger equation with deep variational Monte Carlo, 2) learning to coarse-grain many-body systems, and 3) sampling equilibrium states of classical many-body systems with generative learning.