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Parallel I/O performance: From events to ensembles

机译:并行I / O性能:从事件到集成

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摘要

Parallel I/O is fast becoming a bottleneck to the research agendas of many users of extreme scale parallel computers. The principle cause of this is the concurrency explosion of high-end computation, coupled with the complexity of providing parallel file systems that perform reliably at such scales. More than just being a bottleneck, parallel I/O performance at scale is notoriously variable, being influenced by numerous factors inside and outside the application, thus making it extremely difficult to isolate cause and effect for performance events. In this paper, we propose a statistical approach to understanding I/O performance that moves from the analysis of performance events to the exploration of performance ensembles. Using this methodology, we examine two I/O-intensive scientific computations from cosmology and climate science, and demonstrate that our approach can identify application and middleware performance deficiencies - resulting in more than 4× run time improvement for both examined applications.
机译:并行I / O迅速成为许多超大型并行计算机用户的研究议程的瓶颈。造成这种情况的主要原因是高端计算的并发爆炸性增长,以及提供以这种规模可靠运行的并行文件系统的复杂性。大规模并行I / O性能不仅是瓶颈,而且众所周知,可变I / O性能是可变的,受应用程序内外的许多因素影响,因此很难区分性能事件的因果关系。在本文中,我们提出了一种统计方法来理解I / O性能,该方法从对性能事件的分析转向对性能集合的探索。使用这种方法,我们检查了来自宇宙学和气候科学的两次I / O密集型科学计算,并证明了我们的方法可以识别应用程序和中间件性能缺陷-导致这两种被检查的应用程序的运行时间缩短了4倍以上。

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