CHEM-PHLGSep 21, 2023

From Peptides to Nanostructures: A Euclidean Transformer for Fast and Stable Machine Learned Force Fields

arXiv:2309.15126v24 citationsh-index: 21
Originality Highly original
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This addresses reliability issues in molecular dynamics for biochemistry, enabling realistic exploration of quantum properties, though it is incremental in improving existing methods.

The paper tackles the instability of machine learned force fields in molecular dynamics simulations by proposing SO3krates, a transformer architecture that combines sparse equivariant representations with self-attention, achieving stable trajectories for peptides and nanostructures with hundreds of atoms and exploring thousands of minima for medium-sized molecules.

Recent years have seen vast progress in the development of machine learned force fields (MLFFs) based on ab-initio reference calculations. Despite achieving low test errors, the reliability of MLFFs in molecular dynamics (MD) simulations is facing growing scrutiny due to concerns about instability over extended simulation timescales. Our findings suggest a potential connection between robustness to cumulative inaccuracies and the use of equivariant representations in MLFFs, but the computational cost associated with these representations can limit this advantage in practice. To address this, we propose a transformer architecture called SO3krates that combines sparse equivariant representations (Euclidean variables) with a self-attention mechanism that separates invariant and equivariant information, eliminating the need for expensive tensor products. SO3krates achieves a unique combination of accuracy, stability, and speed that enables insightful analysis of quantum properties of matter on extended time and system size scales. To showcase this capability, we generate stable MD trajectories for flexible peptides and supra-molecular structures with hundreds of atoms. Furthermore, we investigate the PES topology for medium-sized chainlike molecules (e.g., small peptides) by exploring thousands of minima. Remarkably, SO3krates demonstrates the ability to strike a balance between the conflicting demands of stability and the emergence of new minimum-energy conformations beyond the training data, which is crucial for realistic exploration tasks in the field of biochemistry.

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