UMAMI: a recipe for generating meaningful metrics through holistic I/O performance analysis

Glenn K. Lockwood, Wucherl Yoo, S. Byna, N. Wright, S. Snyder, K. Harms, Zachary Nault, P. Carns
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引用次数: 30

Abstract

I/O efficiency is essential to productivity in scientific computing, especially as many scientific domains become more data-intensive. Many characterization tools have been used to elucidate specific aspects of parallel I/O performance, but analyzing components of complex I/O subsystems in isolation fails to provide insight into critical questions: how do the I/O components interact, what are reasonable expectations for application performance, and what are the underlying causes of I/O performance problems? To address these questions while capitalizing on existing component-level characterization tools, we propose an approach that combines on-demand, modular synthesis of I/O characterization data into a unified monitoring and metrics interface (UMAMI) to provide a normalized, holistic view of I/O behavior. We evaluate the feasibility of this approach by applying it to a month-long benchmarking study on two distinct large-scale computing platforms. We present three case studies that highlight the importance of analyzing application I/O performance in context with both contemporaneous and historical component metrics, and we provide new insights into the factors affecting I/O performance. By demonstrating the generality of our approach, we lay the groundwork for a production-grade framework for holistic I/O analysis.
UMAMI:通过整体I/O性能分析生成有意义指标的方法
I/O效率对于科学计算的生产力至关重要,特别是在许多科学领域变得更加数据密集型的情况下。已经使用了许多表征工具来阐明并行I/O性能的特定方面,但是孤立地分析复杂I/O子系统的组件无法深入了解关键问题:I/O组件如何交互,对应用程序性能的合理期望是什么,以及I/O性能问题的潜在原因是什么?为了解决这些问题,同时利用现有的组件级表征工具,我们提出了一种方法,该方法将按需、模块化的I/O表征数据合成到统一监控和度量接口(UMAMI)中,以提供I/O行为的规范化、整体视图。我们通过在两个不同的大型计算平台上进行为期一个月的基准测试研究来评估这种方法的可行性。我们提供了三个案例研究,强调了在当前和历史组件指标上下文中分析应用程序I/O性能的重要性,并对影响I/O性能的因素提供了新的见解。通过演示我们方法的通用性,我们为用于整体I/O分析的生产级框架奠定了基础。
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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