Algorithm Selection in Short-Range Molecular Dynamics Simulations
Algorithm Selection in Short-Range Molecular Dynamics Simulations
Numerous algorithms and parallelisations have been developed for short-range particle simulations; however, none are optimally performant for all scenarios. Such a concept led to the prior development of the particle simulation library AutoPas, which implemented many of these algorithms and parallelisations and could select and tune these over the course of the simulation as the scenario changed. Prior works have, however, used only naive approaches to the algorithm selection problem, which can lead to significant overhead from trialling poorly performing algorithmic configurations. In this work, we investigate this problem in the case of Molecular Dynamics simulations. We present three algorithm selection strategies: an approach which makes performance predictions from past data, an expert-knowledge fuzzy logic-based approach, and a data-driven random forest-based approach. We demonstrate that these approaches can achieve speedups of up to 4.05 compared to prior approaches and 1.25 compared to a perfect configuration selection without dynamic algorithm selection. In addition, we discuss the practicality of the strategies in comparison to their performance, to highlight the tractability of such solutions.
Samuel James Newcome、Fabio Alexander Gratl、Manuel Lerchner、Abdulkadir Pazar、Manish Kumar Mishra、Hans-Joachim Bungartz
计算技术、计算机技术自然科学研究方法
Samuel James Newcome,Fabio Alexander Gratl,Manuel Lerchner,Abdulkadir Pazar,Manish Kumar Mishra,Hans-Joachim Bungartz.Algorithm Selection in Short-Range Molecular Dynamics Simulations[EB/OL].(2025-05-06)[2025-07-01].https://arxiv.org/abs/2505.03438.点此复制
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