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A framework for machine-learning-augmented multiscale atomistic simulations on parallel supercomputers

机译:并行超级计算机上机器学习增强的多尺度原子模拟的框架

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摘要

Recent advances in quantum mechanical (QM)-based molecular dynamics (MD) simulations have used machine-learning (ML) to predict, rather than recalculate, QM-accurate forces in atomic configurations sufficiently similar to previously encountered ones. Here, we discuss how ML approaches can be deployed within large-scale QM/MM materials simulations on massively parallel supercomputers, making QM zones of 1000 atoms routinely attainable. We argue that the ML approach allows computational effort to be concentrated on the most chemically active subregions of the QM zone, significantly improving the overall efficiency of the simulation. We thus propose a novel method to partition large QM regions into multiple subregions, which can be computed in parallel to achieve optimal scaling. Then we review a recently proposed QM/ML MD scheme (Z. Li, J.R. Kermode, A. De Vita Phys. Rev. Lett., 2015, 114, 096405), discussing how this could be efficiently combined with QM-zone partitioning. (c) 2015 Wiley Periodicals, Inc.
机译:基于量子力学(QM)的分子动力学(MD)模拟的最新进展已使用机器学习(ML)来预测而不是重新计算原子构型中的QM精确力,该力与先前遇到的力足够相似。在这里,我们讨论了如何在大型并行超级计算机上的大规模QM / MM材料模拟中部署ML方法,从而使常规获得1000个原子的QM区成为可能。我们认为ML方法可以使计算工作集中在QM区域中化学活性最高的子区域上,从而显着提高了模拟的整体效率。因此,我们提出了一种将大型QM区域划分为多个子区域的新颖方法,可以并行计算以实现最佳缩放比例。然后,我们回顾了最近提出的QM / ML MD方案(Z. Li,J.R. Kermode,A. De Vita Phys。Rev. Lett。,2015,114,096405),讨论了如何将其与QM分区有效结合。 (c)2015年威利期刊有限公司

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