时间序列数据的自动分析以理解并行程序的行为

Lai Wei, J. Mellor-Crummey
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引用次数: 2

摘要

传统上,性能分析工具关注于收集度量,将它们归因于程序源代码,并呈现它们;分析和解释测量数据的责任落在了应用程序开发人员身上。虽然并行程序的概要文件可以识别性能问题的存在,但开发人员通常需要随着时间的推移分析执行行为,以了解并行效率低下是如何以及为什么产生的。随着超级计算机规模的不断扩大,这种人工分析变得越来越困难。在许多情况下,感兴趣的性能问题只会出现在更大的规模上。对极端规模并行系统上执行的时间序列数据进行手动分析是令人生畏的,因为跨处理器和时间的数据量使其难以吸收。为了解决这个问题,我们开发了一个自动分析框架,为并行程序执行生成时间序列数据的紧凑摘要。这些摘要为用户提供了对性能数据模式的高级洞察,并可以快速引导用户注意潜在的性能瓶颈。我们通过将我们的框架应用于两个科学代码的时间序列测量来证明它的有效性。
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Automated Analysis of Time Series Data to Understand Parallel Program Behaviors
Traditionally, performance analysis tools have focused on collecting measurements, attributing them to program source code, and presenting them; responsibility for analysis and interpretation of measurement data falls to application developers. While profiles of parallel programs can identify the presence of performance problems, often developers need to analyze execution behavior over time to understand how and why parallel inefficiencies arise. With the growing scale of supercomputers, such manual analysis is becoming increasingly difficult. In many cases, performance problems of interest only appear at larger scales. Manual analysis of time series data from executions on extreme-scale parallel systems is daunting as the volume of data across processors and time makes it difficult to assimilate. To address this problem, we have developed an automated analysis framework that generates compact summaries of time series data for parallel program executions. These summaries provide users with high-level insight into patterns in the performance data and can quickly direct a user's attention to potential performance bottlenecks. We demonstrate the effectiveness of our framework by applying it to time-series measurements of two scientific codes.
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