Litcius/Paper detail

Pretraining of attention-based deep learning potential model for molecular simulation

Duo Zhang, Hangrui Bi, Fu‐Zhi Dai, Wanrun Jiang, Xinzijian Liu, Linfeng Zhang, Han Wang

2024npj Computational Materials96 citationsDOIOpen Access PDF

Abstract

Abstract Machine learning-assisted modeling of the inter-atomic potential energy surface (PES) is revolutionizing the field of molecular simulation. With the accumulation of high-quality electronic structure data, a model that can be pretrained on all available data and finetuned on downstream tasks with a small additional effort would bring the field to a new stage. Here we propose DPA-1, a Deep Potential model with a gated attention mechanism, which is highly effective for representing the conformation and chemical spaces of atomic systems and learning the PES. We tested DPA-1 on a number of systems and observed superior performance compared with existing benchmarks. When pretrained on large-scale datasets containing 56 elements, DPA-1 can be successfully applied to various downstream tasks with a great improvement of sample efficiency. Surprisingly, for different elements, the learned type embedding parameters form a s p i r a l in the latent space and have a natural correspondence with their positions on the periodic table, showing interesting interpretability of the pretrained DPA-1 model.

Topics & Concepts

Computer scienceDeep learningPsychologyArtificial intelligenceCognitive psychologyMachine Learning in Materials ScienceComputational Drug Discovery MethodsProtein Structure and Dynamics