MatterSim: A Deep Learning Atomistic Model Across Elements, Temperatures and Pressures
Han Yang, Chenxi Hu, Yichi Zhou, Xixian Liu, Yu Shi, Jielan Li,, Guanzhi Li, Zekun Chen, Shuizhou Chen, Claudio Zeni, Matthew Horton, Robert, Pinsler, Andrew Fowler, Daniel Z\"ugner, Tian Xie, Jake Smith, Lixin Sun,, Qian Wang, Lingyu Kong, Chang Liu, Hongxia Hao, Ziheng Lu

TL;DR
MatterSim is a deep learning model that accurately predicts a wide range of material properties across the periodic table under various conditions, significantly reducing computational costs and enabling efficient materials design.
Contribution
The paper introduces MatterSim, a deep learning atomistic model trained on large-scale first-principles data, capable of high-precision predictions across diverse elements, temperatures, and pressures.
Findings
Achieves up to ten-fold accuracy improvement over previous models.
Predicts Gibbs free energies with near-first-principles accuracy.
Reduces data requirements by up to 97% through fine-tuning.
Abstract
Accurate and fast prediction of materials properties is central to the digital transformation of materials design. However, the vast design space and diverse operating conditions pose significant challenges for accurately modeling arbitrary material candidates and forecasting their properties. We present MatterSim, a deep learning model actively learned from large-scale first-principles computations, for efficient atomistic simulations at first-principles level and accurate prediction of broad material properties across the periodic table, spanning temperatures from 0 to 5000 K and pressures up to 1000 GPa. Out-of-the-box, the model serves as a machine learning force field, and shows remarkable capabilities not only in predicting ground-state material structures and energetics, but also in simulating their behavior under realistic temperatures and pressures, signifying an up to ten-fold…
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Taxonomy
TopicsMachine Learning in Materials Science · Nuclear Physics and Applications
