Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Learning Local Equivariant Representations for Large-Scale Atomistic Dynamics

About

A simultaneously accurate and computationally efficient parametrization of the energy and atomic forces of molecules and materials is a long-standing goal in the natural sciences. In pursuit of this goal, neural message passing has lead to a paradigm shift by describing many-body correlations of atoms through iteratively passing messages along an atomistic graph. This propagation of information, however, makes parallel computation difficult and limits the length scales that can be studied. Strictly local descriptor-based methods, on the other hand, can scale to large systems but do not currently match the high accuracy observed with message passing approaches. This work introduces Allegro, a strictly local equivariant deep learning interatomic potential that simultaneously exhibits excellent accuracy and scalability of parallel computation. Allegro learns many-body functions of atomic coordinates using a series of tensor products of learned equivariant representations, but without relying on message passing. Allegro obtains improvements over state-of-the-art methods on the QM9 and revised MD-17 data sets. A single tensor product layer is shown to outperform existing deep message passing neural networks and transformers on the QM9 benchmark. Furthermore, Allegro displays remarkable generalization to out-of-distribution data. Molecular dynamics simulations based on Allegro recover structural and kinetic properties of an amorphous phosphate electrolyte in excellent agreement with first principles calculations. Finally, we demonstrate the parallel scaling of Allegro with a dynamics simulation of 100 million atoms.

Albert Musaelian, Simon Batzner, Anders Johansson, Lixin Sun, Cameron J. Owen, Mordechai Kornbluth, Boris Kozinsky• 2022

Related benchmarks

TaskDatasetResultRank
Molecular property predictionQM9 (test)--
174
Force PredictionMD17 revised (test)
Force MAE (Aspirin)7.3
19
Energy PredictionMD17 Malonaldehyde
MAE (kcal/mol)0.0138
16
Interatomic potential modelingRevised MD17 (val test)
Aspirin Force Error7.3
15
Force PredictionMD17 Salicylic acid
MAE (kcal/mol/Å)0.0669
15
Force PredictionMD17 Malonaldehyde
MAE (kcal/mol/Å)0.083
15
Energy PredictionMD17 Naphthalene
MAE (kcal/mol)0.0046
14
Energy PredictionMD17 Ethanol
MAE (kcal/mol)0.0092
14
Atomization energy predictionQM9 original (test)
MAE (meV)4.7
11
Force PredictionMD17 Aspirin
MAE (kcal/mol/Å)0.1683
11
Showing 10 of 46 rows

Other info

Follow for update