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Using Machine Affinity to Increase Science Throughput (Machine Affinity Characterization of the HPCMP Workload)

机译:使用机器亲和力来提高科学吞吐量(HPCMP工作负载的机器亲和力表征)

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Machine affinity is the observed phenomena that some applications benefit more than others from features of high performance computing (HPC) architectures. When considering a diverse portfolio of HPC machines manufactured by different vendors and of different ages, such as the set of all supercomputers currently operated by the Department of Defense High Performance Computing Modernization Program, it should be obvious that some run a given application faster than others do. Therefore, almost every user would request to run on the fastest machines. But an important insight is that some applications benefit more from the features of the faster machines than others do. If allocations are done in such a way that applications that benefit the most from the features of the fastest machines are assigned to those machines then overall throughput across all machines is boosted by more than 10%. We exhibit exemplary empirical analysis and provide a simple algorithm for doing allocations based on machine affinity. The net effect is like adding a new $10M supercomputer to the portfolio without paying for it.
机译:机亲和力是观察到的现象,某些应用程序比其他从计算(HPC)架构的高性能特征获益更多。当考虑由不同的厂商,不同年龄段,如设置目前由国防部高性能计算现代化计划署辖下所有超级计算机的制造HPC机器的一个多元化的投资组合,它应该是显而易见的,一些运行特定的应用比别人快做。因此,几乎每一个用户将请求上最快的计算机上运行。但一个重要的观点是,某些应用程序的速度更快的机器的功能中获益比别人做的。如果分配以这样一种方式,即受益于最快的计算机的功能,大多数应用都在所有机器分配给那些机器则整体吞吐量完成由超过10%的推动。我们表现​​出典型的实证分析,并做基于机器亲和力分配一个简单的算法。最终的效果是一样添加一个新的$ 10M的超级计算机的组合而不考虑它付出。

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