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Inferring Large-Scale Computation Behavior via Trace Extrapolation

机译:通过跟踪外推推断大规模计算行为

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Understanding large-scale application behavior is critical for effectively utilizing existing HPC resources and making design decisions for upcoming systems. In this work we present a methodology for characterizing an MPI application's large-scale computation behavior and system requirements using information about the behavior of that application at a series of smaller core counts. The methodology finds the best statistical fit from among a set of canonical functions in terms of how a set of features that are important for both performance and energy (cache hit rates, floating point intensity, ILP, etc.) change across a series of small core counts. The statistical models for each of these application features can then be utilized to generate an extrapolated trace of the application at scale. The fidelity of the fully extrapolated traces is evaluated by comparing the results of building performance models using both the extrapolated trace along with an actual trace in order to predict application performance at using each. For two full-scale HPC applications, SPECFEM3D and UH3D, the extrapolated traces had absolute relative errors of less than 5%.
机译:了解大规模的应用程序行为对于有效利用现有的HPC资源以及为即将到来的系统进行设计决策至关重要。在这项工作中,我们介绍了一种方法,用于表征MPI应用程序的大规模计算行为和系统要求,使用关于该应用程序在一系列较小的核心计数下的该应用程序的信息。根据如何在一系列小的功能和能量(高速缓存命中率,浮点强度,ILP等)的一组特征方面,该方法从一组规范函数中找到了最佳统计契合。核心计数。然后,可以利用这些应用特征中的每一个的统计模型以在比例下生成应用的外推轨迹。通过将建筑物性能模型的结果与实际迹线一起比较来评估完全外推迹线的保真性,以便预测使用每个迹线。对于两个满量程HPC应用,SpecFem3D和UH3D,外推的迹线绝对相对误差小于5%。

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