Scalable Analysis Techniques for Microprocessor Performance Counter Metrics

D. Ahn, J. Vetter
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引用次数: 67

Abstract

Contemporary microprocessors provide a rich set of integrated performance counters that allow application developers and system architects alike the opportunity to gather important information about workload behaviors. Current techniques for analyzing data produced from these counters use raw counts, ratios, and visualization techniques help users make decisions about their application performance. While these techniques are appropriate for analyzing data from one process, they do not scale easily to new levels demanded by contemporary computing systems. Very simply, this paper addresses these concerns by evaluating several multivariate statistical techniques on these datasets. We find that several techniques, such as statistical clustering, can automatically extract important features from the data. These derived results can, in turn, be fed directly back to an application developer, or used as input to a more comprehensive performance analysis environment, such as a visualization or an expert system.
微处理器性能计数器指标的可扩展分析技术
现代微处理器提供了一组丰富的集成性能计数器,使应用程序开发人员和系统架构师都有机会收集有关工作负载行为的重要信息。当前用于分析这些计数器产生的数据的技术使用原始计数、比率和可视化技术,帮助用户对其应用程序性能做出决策。虽然这些技术适合于分析来自一个进程的数据,但它们不容易扩展到现代计算系统所要求的新水平。很简单,本文通过评估这些数据集上的几种多元统计技术来解决这些问题。我们发现一些技术,如统计聚类,可以自动从数据中提取重要特征。这些导出的结果可以直接反馈给应用程序开发人员,或者用作更全面的性能分析环境(如可视化或专家系统)的输入。
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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