Source level transformations to improve I/O data partitioning

Yijian Wang, D. Kaeli
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引用次数: 10

Abstract

The main goal for parallel I/O is to increase I/O parallelism by providing multiple, independent data channels between processors and disks. To realize this goal, I/O streams need to be parallelized and partitioned at multiple system layers. Contention at any level can dramatically decrease performance and limit scalability. To address this disk contention bottleneck, it is important to carefully study disk access patterns.From our previous work on I/O profiling, we found that I/O access patterns of parallel scientific applications are usually very regular and highly predictable. Thus it is possible to detect I/O access patterns statically during compiler time. Large datasets are logically linearized in file space on disk, and these intensive data accesses follow a linear space traversal. In this paper, we present our recent work on compiler-directed I/O partitioning, based on Linear Disk Access Descriptors (LDAD). We use the SUIF compiler infrastructure to perform data-flow analysis and recognize LDADs. We then use these LDADs to guide our I/O data partitioning that utilizes multiple disks to significantly increase I/O throughput.
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改进I/O数据分区的源级转换
并行I/O的主要目标是通过在处理器和磁盘之间提供多个独立的数据通道来增加I/O并行性。为了实现这一目标,I/O流需要在多个系统层进行并行化和分区。任何级别的争用都可能显著降低性能并限制可伸缩性。为了解决这个磁盘争用瓶颈,仔细研究磁盘访问模式非常重要。从我们之前关于I/O分析的工作中,我们发现并行科学应用程序的I/O访问模式通常是非常规则且高度可预测的。因此,可以在编译期间静态地检测I/O访问模式。大型数据集在磁盘上的文件空间中逻辑上线性化,这些密集的数据访问遵循线性空间遍历。在本文中,我们介绍了我们最近在基于线性磁盘访问描述符(LDAD)的编译器定向I/O分区方面的工作。我们使用SUIF编译器基础结构来执行数据流分析和识别ldap。然后,我们使用这些ldap来指导I/O数据分区,该分区利用多个磁盘来显著提高I/O吞吐量。
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