计算机科学
催交
刮擦
领域(数学)
绘图
过程(计算)
图形处理单元
GSM演进的增强数据速率
迭代和增量开发
人工智能
机器学习
人机交互
软件工程
系统工程
工程类
并行计算
操作系统
纯数学
数学
作者
Xingze Geng,Jianing Gu,Gaowu Qin,Lin‐Wang Wang,Xiangying Meng
摘要
Machine Learning Force Fields (MLFFs) require ongoing improvement and innovation to effectively address challenges across various domains. Developing MLFF models typically involves extensive screening, tuning, and iterative testing. However, existing packages based on a single mature descriptor or model are unsuitable for this process. Therefore, we developed a package named ABFML, based on PyTorch, which aims to promote MLFF innovation by providing developers with a rapid, efficient, and user-friendly tool for constructing, screening, and validating new force field models. Moreover, by leveraging standardized module operations and cutting-edge machine learning frameworks, developers can swiftly establish models. In addition, the platform can seamlessly transition to the graphics processing unit environments, enabling accelerated calculations and large-scale parallel simulations of molecular dynamics. In contrast to traditional from-scratch approaches for MLFF development, ABFML significantly lowers the barriers to developing force field models, thereby expediting innovation and application within the MLFF development domains.
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