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Pushing the Limit of Molecular Dynamics with Ab Initio Accuracy to 100 Million Atoms with Machine Learning

机译:用机器学习将AB Initio精度推动分子动力学的极限为1亿个原子

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For 35 years, ab initio molecular dynamics (AIMD) has been the method of choice for modeling complex atomistic phenomena from first principles. However, most AIMD applications are limited by computational cost to systems with thousands of atoms at most. We report that a machine learning based simulation protocol (Deep Potential Molecular Dynamics), while retaining ab initio accuracy, can simulate more than 1 nanosecond-long trajectory of over 100 million atoms per day, using a highly optimized code (GPU DeePMD-kit) on the Summit supercomputer. Our code can efficiently scale up to the entire Summit supercomputer, attaining 91 PFLOPS in double precision (45.5% of the peak) and 162/275 PFLOPS in mixed-single/half precision. The great accomplishment of this work is that it opens the door to simulating unprecedented size and time scales with ab initio accuracy. It also poses new challenges to the next-generation supercomputer for a better integration of machine learning and physical modeling.
机译:35年来,AB Initio分子动力学(AIMD)一直是从第一原理建模复杂原子现象的首选方法。然而,大多数AIMD应用受到最多有数千个原子的计算成本的限制。我们报告了一种基于机器学习的仿真协议(深度潜在的分子动态),同时保留AB Initio精度,可以使用高度优化的代码(GPU Deepmd-kit)模拟每天超过1亿个原子的1多个纳秒轨迹。在峰会超级计算机上。我们的代码可以高效地扩展到整个峰会超级计算机,以双重精度(峰的45.5%)和162/275普通精度为162/275普通的峰值。这项工作的巨大成就是它打开了模拟具有AB Initio精度的前所未有的大小和时间尺度的门。它对下一代超级计算机提供了新的挑战,以便更好地集成机器学习和物理建模。

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