使用PMlib的科学应用程序的性能评估和可视化

Kazunori Mikami, K. Ono, J. Nonaka
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引用次数: 1

摘要

在高性能计算系统上,科学应用的计算性能往往远远低于基于系统最大性能规格的用户期望。要了解这种性能差距的基础,多角度评估是很重要的。例如,从用户的角度来看,将作为源程序编码的理论计算与编译器产生的实际计算工作量相关联是有价值的。从系统的角度出发,对处理器内核、存储器等微体系结构元件的特性进行评估具有重要意义。开发了一个名为PMlib的开源库来处理这些类型的综合评估。PMlib为报告源程序中显式编码的算术/应用程序工作负载以及实际执行的系统工作负载提供了一种途径。它还提供了特定处理器硬件的详细利用率报告,包括分类SIMD指令统计数据、分层缓存命中率/失误率和有效内存带宽,这些都是通过硬件性能计数器(HWPC)捕获的。使用PMlib,用户可以对应用程序性能进行综合分析,并获得有用的反馈,以进一步优化应用程序的执行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Evaluation and Visualization of Scientific Applications Using PMlib
The computational performance of scientific applications on HPC systems is often much lower than user expectation based on the system's maximum performance specifications. To understand the basis for this performance gap, a multi-perspective evaluation is important. For instance, from the user perspective, correlating the theoretical computation coded as a source program with the actual computation workload produced by the compilers is valuable. From the system perspective, evaluating the characteristics of microarchitecture elements such as processor core and memory is of significance. An open source library called PMlib was developed to address these types of synthetic evaluations. PMlib provides an avenue for reporting the arithmetic/application workload explicitly coded in the source program, as well as the actually executed system workload. It also provides detailed utilization reports of processor-specific hardware including the categorized SIMD instruction statistics, the layered cache hit/miss rate, and the effective memory bandwidth, which are captured via hardware performance counters (HWPC). Using PMlib, users can conduct a synthetic analysis of application performance, and obtain useful feedback for further optimized execution of applications.
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