瓶颈
冯·诺依曼建筑
计算机科学
分子动力学
现场可编程门阵列
领域(数学)
计算科学
人工神经网络
乘法(音乐)
限制
高效能源利用
计算机工程
人工智能
并行计算
嵌入式系统
数学
计算化学
化学
工程类
机械工程
电气工程
组合数学
纯数学
操作系统
作者
Pinghui Mo,Chang Li,Dan Zhao,Zhang Yu-jia,Mengchao Shi,Junhua Li,Jie Liu
标识
DOI:10.1038/s41524-022-00773-z
摘要
Abstract Force field-based classical molecular dynamics (CMD) is efficient but its potential energy surface (PES) prediction error can be very large. Density functional theory (DFT)-based ab-initio molecular dynamics (AIMD) is accurate but computational cost limits its applications to small systems. Here, we propose a molecular dynamics (MD) methodology which can simultaneously achieve both AIMD-level high accuracy and CMD-level high efficiency. The high accuracy is achieved by exploiting deep neural network (DNN)’s arbitrarily-high precision to fit PES. The high efficiency is achieved by deploying multiplication-less DNN on a carefully-optimized special-purpose non von Neumann (NvN) computer to mitigate the performance-limiting data shuttling (i.e., ‘memory wall bottleneck’). By testing on different molecules and bulk systems, we show that the proposed MD methodology is generally-applicable to various MD tasks. The proposed MD methodology has been deployed on an in-house computing server based on reconfigurable field programmable gate array (FPGA), which is freely available at http://nvnmd.picp.vip .
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