在超线程多核架构中优化人类进化统计模拟的执行

R. Dias, C. Rose, A. A. Gomes, N. J. Fagundes
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引用次数: 0

摘要

统计模型的模拟已被用来验证物种进化中过去事件的理论。关于人类进化的研究对于了解我们的历史和生物多样性非常重要。然而,这些方法使用复杂的统计模型,导致较高的计算成本。本文提出了超线程多核架构的优化技术,以提高这些模拟的计算性能。结合粒度研究和超线程优化,与普通并行执行(用户应用的默认并行化)相比,我们将模拟的性能提高了30%以上。使用人类进化研究的一个复杂例子对性能进行了评估[1]。对于这个例子,我们的技术使用户能够将模拟执行时间从50天(连续运行时)减少到不到5天。此外,该评估已扩展到在多个多核集群节点上运行的模拟。我们的测量结果显示出了很高的速度提升,接近理论最大值,160个计算核心的速度提高了129倍。这代表了81%的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing the Execution of Statistical Simulations for Human Evolution in Hyper-threaded Multicore Architectures
Simulations of statistical models have been used to validate theories of past events in evolution of species. Studies concerning human evolution are important for understanding about our history and biodiversity. However, these approaches use complex statistical models, leading to high computational cost. The present paper proposes optimization techniques for Hyper-threaded multicore architectures to improve the computational performance of these simulations. Combining granularity studies and Hyper-threading optimization, we improved the performance of simulations in more than 30%, if compared with common parallel execution (default parallelization applied by users). The performance was evaluated using a complex example of human evolution studies [1]. For this example, our techniques enable the user to decrease the simulation execution time from 50 days (sequential runtime) to less than 5 days. In addition, the evaluation has been extended for simulations running on multiple multicore cluster nodes. Our measurements show a high Speed-up, close to theoretical maximum, being 129 times faster for 160 computational cores. This represents an efficiency of 81%.
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