混合计算体系结构上蒙特卡罗分子模拟的加速

Claus Braun, S. Holst, H. Wunderlich, Juan Manuel Castillo-Sanchez, J. Gross
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引用次数: 11

摘要

马尔可夫链蒙特卡罗(MCMC)方法是一类重要的仿真技术,它执行一系列的仿真步骤,其中每个新步骤都依赖于前一个步骤。由于这种基本的依赖性,MCMC方法在任何体系结构上都很难并行化。即将到来的混合CPU/GPGPU架构及其多核CPU和紧密耦合的多核GPGPU提供了新的加速机会,特别是对于MCMC方法,如果新的自由度被正确利用。本文介绍了跨学科合作的成果,重点介绍了从热力学到混合CPU/GPGPU计算系统的MCMC分子模拟的并行映射。虽然这种映射是为即将到来的混合架构设计的,但在NVIDIA Tesla系统上实施这种方法已经带来了超过87x的大幅加速,尽管有额外的通信开销。
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Acceleration of Monte-Carlo molecular simulations on hybrid computing architectures
Markov-Chain Monte-Carlo (MCMC) methods are an important class of simulation techniques, which execute a sequence of simulation steps, where each new step depends on the previous ones. Due to this fundamental dependency, MCMC methods are inherently hard to parallelize on any architecture. The upcoming generations of hybrid CPU/GPGPU architectures with their multi-core CPUs and tightly coupled many-core GPGPUs provide new acceleration opportunities especially for MCMC methods, if the new degrees of freedom are exploited correctly. In this paper, the outcomes of an interdisciplinary collaboration are presented, which focused on the parallel mapping of a MCMC molecular simulation from thermodynamics to hybrid CPU/GPGPU computing systems. While the mapping is designed for upcoming hybrid architectures, the implementation of this approach on an NVIDIA Tesla system already leads to a substantial speedup of more than 87× despite the additional communication overheads.
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