蓝色基因/L MPI性能分析工具

I. Chung, R. Walkup, H. Wen, Hao Yu
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引用次数: 34

摘要

今天的大规模并行超级计算机上的应用程序通常由性能分析工具引导,以实现在数千个处理器上的可伸缩性能。然而,由于需要处理大量数据,传统的并行性能分析工具存在严重的问题。本文讨论了在世界上最快的超级计算平台Blue Gene/L上进行MPI性能分析的可扩展性问题。首先,我们对从其他平台移植到BG/L的现有MPI性能工具进行了实验研究。这些工具可以分为两类:收集时间摘要的分析工具,以及收集时间戳事件序列的跟踪工具。分析工具产生的数据量很小,可以很好地扩展,但是跟踪工具的扩展能力很差。然后,我们描述了为BG/L开发的可配置MPI跟踪工具。通过提供一种可配置的跟踪生成方法,可以控制跟踪数据的数量,并显著提高可伸缩性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MPI Performance Analysis Tools on Blue Gene/L
Applications on today's massively parallel supercomputers are often guided with performance analysis tools toward scalable performance on thousands of processors. However, conventional tools for parallel performance analysis have serious problems due to the large data volume that needs to be handled. In this paper, we discuss the scalability issue for MPI performance analysis on Blue Gene/L, the world's fastest supercomputing platform. First we present an experimental study of existing MPI performance tools that were ported to BG/L from other platforms. These tools can be classified into two categories: profiling tools that collect timing summaries, and tracing tools that collect a sequence of time-stamped events. Profiling tools produce small data volumes and can scale well, but tracing tools tend to scale poorly. We then describe a configurable MPI tracing tool developed for BG/L. By providing a configurable method for trace generation, the volume of trace data can be controlled, and scalability is significantly improved
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