Bulletin of the American Physical Society
2023 APS March Meeting
Volume 68, Number 3
Las Vegas, Nevada (March 5-10)
Virtual (March 20-22); Time Zone: Pacific Time
Session T50: Learning Materials Properties and Dynamics with Graph Neural Network Models
11:30 AM–1:18 PM,
Thursday, March 9, 2023
Room: Room 320
Sponsoring
Unit:
DCOMP
Chair: Boris Kozinsky, Harvard University
Abstract: T50.00001 : Large-scale equivariant deep learning of atomistic force fields
11:30 AM–12:06 PM
Presenter:
Albert Musaelian
(Harvard University)
Author:
Albert Musaelian
(Harvard University)
This talk discusses Allegro and NequIP, two methods that are instead equivariant to the Euclidean group E(3) and operate directly on the unprocessed 3D geometry: their inputs, internal latent representations, and predictions can contain not only invariants, but also equivariant geometric vectors and higher-order tensors, which transform correspondingly when the input is transformed. Applied to machine learning interatomic potentials, this approach yields remarkable improvements in accuracy, configurational and chemical generalization, simulation stability, and sample efficiency. I will discuss how equivariance is mathematically enabled, the theoretical properties and motivations of the proposed approach, and finally demonstrate the methods through example applications to complex catalytic and diffusive materials, organic molecules, ionic liquids, and biomolecules.
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