
Speaker: Filippo Bigi EPFL, Switzerland
Link: Teams
Symmetry-conserving machine learning models, while physically principled, often suffer from limited computational efficiency. Here, we investigate symmetry-free approaches from different axes, showing that non-equivariant and non-energy-conserving machine-learned force fields can be used to provide remarkable acceleration of atomistic simulations, while producing correct physical observables. Furthermore, we present both symmetric and symmetry-free approaches for the long-time-step prediction of molecular dynamics simulations. This emerging paradigm, which aims to directly predict future positions and momenta in a simulation, affords an acceleration factor of up to two orders of magnitude compared to machine-learned interatomic potentials, with the potential to dramatically extend the time scales accessible to atomic-scale modeling.
Host: Federico Grasselli