Smooth Dynamic Cutoffs for Machine Learning Interatomic Potentials
Kevin Han, Haolin Cong, Bowen Deng, Amir Barati Farimani

TL;DR
This paper introduces a dynamic cutoff method for MLIPs that reduces memory and inference time while maintaining accuracy, enabling more scalable molecular dynamics simulations.
Contribution
It proposes the first dynamic cutoff formulation for MLIPs, improving efficiency without sacrificing stability or accuracy, and demonstrates its effectiveness on multiple models.
Findings
2.26x less memory consumption
2.04x faster inference time
Minimal accuracy loss
Abstract
Machine learning interatomic potentials (MLIPs) have proven to be wildly useful for molecular dynamics simulations, powering countless drug and materials discovery applications. However, MLIPs face two primary bottlenecks preventing them from reaching realistic simulation scales: inference time and memory consumption. In this work, we address both issues by challenging the long-held belief that the cutoff radius for the MLIP must be held to a fixed, constant value. For the first time, we introduce a dynamic cutoff formulation that still leads to stable, long timescale molecular dynamics simulation. In introducing the dynamic cutoff, we are able to induce sparsity onto the underlying atom graph by targeting a specific number of neighbors per atom, significantly reducing both memory consumption and inference time. We show the effectiveness of a dynamic cutoff by implementing it onto 4…
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Taxonomy
TopicsMachine Learning in Materials Science · Quantum many-body systems · Model Reduction and Neural Networks
