Videos

Machine learning for lattice field theory

Presenter
September 26, 2019
Abstract
Phiala Shanahan - Massachusetts Institute of Technology (MIT) I will discuss opportunities for machine learning, in particular generative models, to accelerate lattice quantum field theory calculations of key nuclear physics processes from the Standard Model of particle physics. Particular challenges in this context include incorporating complex (gauge) symmetries into model architectures, and scaling models to the large number of degrees of freedom of state-of-the-art numerical studies.
Supplementary Materials