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Abstract The rapid development of artificial intelligence (AI) is driving significant changes in the field of atomic modeling, simulation, and design. AI-based potential energy models have been successfully used to perform large-scale and long-time simulations with the accuracy of ab initio electronic structure methods. However, the model generation process still hinders applications at scale. We envision that the next stage would be a model-centric ecosystem, in which a large atomic model (LAM), pre-trained with as many atomic datasets as possible and can be efficiently fine-tuned and distilled to downstream tasks, would serve the new infrastructure of the field of molecular modeling. We show that DPA-2 can accurately represent a diverse range of chemical systems and materials, enabling high-quality simulations and predictions with significantly reduced efforts compared to traditional methods. Our approach paves the way for a universal large atomic model that can be widely applied in molecular and material simulation research, opening new opportunities for scientific discoveries and industrial applications.
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Han Wang
Institute of Applied Physics
Duo Zhang
Peking University
Xinzijian Liu
Peking University
Princeton University
Chinese Academy of Sciences
Rutgers, The State University of New Jersey
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Wang et al. (Tue,) studied this question.
synapsesocial.com/papers/68e6de7cb6db64358765a7d8 — DOI: https://doi.org/10.21203/rs.3.rs-4100052/v1