Bulletin of the American Physical Society
2024 APS March Meeting
Monday–Friday, March 4–8, 2024; Minneapolis & Virtual
Session D60: Machine Learning of Molecules and Materials: Chemical Space and Dynamics
3:00 PM–5:48 PM,
Monday, March 4, 2024
Room: 207AB
Sponsoring
Unit:
DCOMP
Chair: Davide Tisi, Federal Institute of Technology (EPFL)
Abstract: D60.00006 : Learning polarization using equivariant neural networks
4:48 PM–5:00 PM
Presenter:
Stefano Falletta
(Harvard University)
Authors:
Stefano Falletta
(Harvard University)
Andrea Cepellotti
(Harvard University)
Albert Musaelian
(Harvard University)
Anders Johansson
(Harvard University)
Chuin Wei Tan
(Harvard University)
Boris Kozinsky
(Harvard University)
[1] R. Resta, Macroscopic polarization in crystalline dielectrics: the geometric phase approach, Rev. Mod. Phys. 66, 899 (1994).
[2] P. Umari and A. Pasquarello, Ab initio molecular dynamics in a finite homogeneous electric field, Phys. Rev. Lett. 89, 157602 (2002).
[3] A. Musaelian, S. Batzner, A. Johansson, L. Sun, C. Owen, M. Kornbluth, and B. Kozinsky, Learning local equivariant representations for large-scale atomistic dynamics, Nat. Commun. 14, 579 (2023).
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