论执行模型的影响:以计算化学为例

D. Chavarría-Miranda, M. Halappanavar, S. Krishnamoorthy, J. Manzano, Abhinav Vishnu, A. Hoisie
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引用次数: 1

摘要

高效利用高性能计算平台是一个重要而复杂的问题。执行模型是对执行栈动态运行时行为的抽象描述,对高性能计算系统的利用率有重要影响。我们以计算化学内核为例,结合负载平衡技术,探讨了各种执行模型对高性能计算系统利用率的影响。我们演示了与传统的静态调度方法相比,使用工作窃取可以提高50%的性能。我们还使用了一种新颖的半匹配技术来实现负载平衡,其性能可与传统的基于超图的分区实现相媲美,后者的计算成本很高。通过这项研究,我们发现执行模型的设计选择和假设可能会限制关键的优化,比如全局的、动态的负载平衡,以及在可用的工作单元和不同的系统和运行时开销之间找到正确的平衡。随着多核和多核架构的出现,以及随之而来的高性能计算平台复杂性的增长,我们相信这些经验教训将有助于研究人员在现代高性能计算平台上调整各种应用程序,特别是在具有能量诱导性能变化的新兴动态平台上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Impact of Execution Models: A Case Study in Computational Chemistry
Efficient utilization of high-performance computing (HPC) platforms is an important and complex problem. Execution models, abstract descriptions of the dynamic runtime behavior of the execution stack, have significant impact on the utilization of HPC systems. Using a computational chemistry kernel as a case study and a wide variety of execution models combined with load balancing techniques, we explore the impact of execution models on the utilization of an HPC system. We demonstrate a 50 percent improvement in performance by using work stealing relative to a more traditional static scheduling approach. We also use a novel semi-matching technique for load balancing that has comparable performance to a traditional hyper graph-based partitioning implementation, which is computationally expensive. Using this study, we found that execution model design choices and assumptions can limit critical optimizations such as global, dynamic load balancing and finding the correct balance between available work units and different system and runtime overheads. With the emergence of multi- and many-core architectures and the consequent growth in the complexity of HPC platforms, we believe that these lessons will be beneficial to researchers tuning diverse applications on modern HPC platforms, especially on emerging dynamic platforms with energy-induced performance variability.
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