Evaluating similarity-based trace reduction techniques for scalable performance analysis

K. Mohror, K. Karavanic
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引用次数: 32

Abstract

Event traces are required to correctly diagnose a number of performance problems that arise on today's highly parallel systems. Unfortunately, the collection of event traces can produce a large volume of data that is difficult, or even impossible, to store and analyze. One approach for compressing a trace is to identify repeating trace patterns and retain only one representative of each pattern. However, determining the similarity of sections of traces, i.e., identifying patterns, is not straightforward. In this paper, we investigate pattern-based methods for reducing traces that will be used for performance analysis. We evaluate the different methods against several criteria, including size reduction, introduced error, and retention of performance trends, using both benchmarks with carefully chosen performance behaviors, and a real application.
评估用于可扩展性能分析的基于相似性的跟踪减少技术
事件跟踪是正确诊断当今高度并行系统中出现的许多性能问题所必需的。不幸的是,事件跟踪的收集可能会产生大量难以存储和分析甚至不可能存储和分析的数据。压缩跟踪的一种方法是识别重复的跟踪模式,并只保留每个模式的一个代表。然而,确定路段的相似性,即识别模式,并不是直截了当地的。在本文中,我们研究基于模式的方法来减少将用于性能分析的痕迹。我们根据几个标准评估不同的方法,包括大小减少、引入的错误和性能趋势的保留,使用具有精心选择的性能行为的基准测试和实际应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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