分子对接的不规则计算映射到SX-Aurora TSUBASA矢量引擎

Leonardo Solis-Vasquez, E. Focht, Andreas Koch
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引用次数: 1

摘要

分子对接是计算机辅助药物设计的一种关键方法,快速识别候选药物对对抗疾病至关重要。AutoDock是一个广泛使用的分子对接程序,具有不规则结构,其特点是控制流发散和计算密集。这项工作研究了将AutoDock移植到SX-Aurora TSUBASA矢量引擎上,并评估了在许多实际输入化合物上可实现的性能。特别地,我们讨论了处理AutoDock使用的两种本地搜索方法中的高度不规则性所需的特定于平台的编码风格。这些Solis-Wets和ADADELTA方法占用了很大一部分总计算时间。根据我们的实验,我们在SX-Aurora TSUBASA VE 20B上实现了比现代双插槽64核CPU节点平均快3倍的运行时间。我们的解决方案与V100 gpu具有竞争力,尽管这些gpu已经使用了较新的芯片制造技术(VE 20B上的12纳米与16纳米)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping Irregular Computations for Molecular Docking to the SX-Aurora TSUBASA Vector Engine
Molecular docking is a key method in computer-aided drug design, where the rapid identification of drug candidates is crucial for combating diseases. AutoDock is a widely-used molecular docking program, having an irregular structure characterized by a divergent control flow and compute-intensive calculations. This work investigates porting AutoDock to the SX-Aurora TSUBASA vector engine and evaluates the achievable performance on a number of real-world input compounds. In particular, we discuss the platform-specific coding styles required to handle the high degree of irregularity in both local-search methods employed by AutoDock. These Solis-Wets and ADADELTA methods take up a large part of the total computation time. Based on our experiments, we achieved runtimes on the SX-Aurora TSUBASA VE 20B that are on average 3 x faster than on modern dual-socket 64-core CPU nodes. Our solution is competitive with V100 GPUs, even though these already use newer chip fabrication technology (12 nm vs. 16 nm on the VE 20B).
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