A Segment-Level Adaptive Data Layout Scheme for Improved Load Balance in Parallel File Systems

Huaiming Song, Yanlong Yin, Xian-He Sun, R. Thakur, S. Lang
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引用次数: 32

Abstract

Parallel file systems are designed to mask the ever-increasing gap between CPU and disk speeds via parallel I/O processing. While they have become an indispensable component of modern high-end computing systems, their inadequate performance is a critical issue facing the HPC community today. Conventionally, a parallel file system stripes a file across multiple file servers with a fixed stripe size. The stripe size is a vital performance parameter, but the optimal value for it is often application dependent. How to determine the optimal stripe size is a difficult research problem. Based on the observation that many applications have different data-access clusters in one file, with each cluster having a distinguished data access pattern, we propose in this paper a segmented data layout scheme for parallel file systems. The basic idea behind the segmented approach is to divide a file logically into segments such that an optimal stripe size can be identified for each segment. A five-step method is introduced to conduct the segmentation, to identify the appropriate stripe size for each segment, and to carry out the segmented data layout scheme automatically. Experimental results show that the proposed layout scheme is feasible and effective, and it improves performance up to 163% for writing and 132% for reading on the widely used IOR and IOzone benchmarks.
一种改进并行文件系统负载平衡的段级自适应数据布局方案
并行文件系统旨在通过并行I/O处理来掩盖CPU和磁盘速度之间不断增加的差距。虽然它们已经成为现代高端计算系统中不可或缺的组成部分,但它们的性能不足是当今高性能计算社区面临的一个关键问题。通常,并行文件系统使用固定的条带大小在多个文件服务器上对文件进行条带化。条带大小是一个重要的性能参数,但它的最佳值通常取决于应用程序。如何确定最优条纹尺寸是一个研究难题。基于许多应用程序在一个文件中具有不同的数据访问集群,每个集群具有不同的数据访问模式的观察,本文提出了一种用于并行文件系统的分段数据布局方案。分段方法背后的基本思想是将文件逻辑地划分为段,以便为每个段确定最佳条带大小。采用五步法进行数据分割,确定每个数据段合适的条带大小,并自动执行分割后的数据布局方案。实验结果表明,该布局方案是可行和有效的,在广泛使用的IOR和IOzone基准测试中,该布局方案的写入性能提高了163%,读取性能提高了132%。
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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