集成数据重组和磁盘映射,降低磁盘能耗

S. Son, M. Kandemir
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引用次数: 6

摘要

高性能系统的功耗增加会导致可靠性、生存能力和冷却相关问题。受到这一观察结果的启发,最近的一些工作集中于通过基于硬件、操作系统和编译器的技术来降低磁盘功耗。本文提出了一种降低大规模、阵列密集型科学应用中磁盘功耗的新方法。它提出并评估了一种基于编译器的方法,该方法采用了两种互补的技术:数据重组和磁盘映射。其中第一种技术是数据重组,确定阵列空间中数据的适当布局,而第二种技术是磁盘映射,决定磁盘空间中相应的布局。数据重组和磁盘映射的目标是确保在同一循环迭代中访问的数据(来自不同的驻留磁盘数组)位于同一组磁盘中。通过这种方式,我们可以增加磁盘间访问时间(磁盘的空闲时间),这反过来又允许更好地利用用于降低功耗的底层硬件机制。我们对8个磁盘I/ o密集型科学应用程序进行的实验表明,所提出的方法可以显著降低能耗,无论底层磁盘系统使用休眠磁盘还是减速磁盘,这是之前提出的两种基于硬件的磁盘功耗降低方案。结果还表明,我们方案的两个组件(数据重组和磁盘映射)都非常重要,因为单独应用这些组件中的任何一个都不会为我们的大多数应用程序产生大量节省。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated Data Reorganization and Disk Mapping for Reducing Disk Energy Consumption
Increasing power consumption of high-performance systems leads to reliability, survivability, and cooling related problems. Motivated by this observation, several recent efforts focused on reducing disk power consumption through hardware, OS and compiler based techniques. This paper presents a novel approach to reducing disk power consumption of large-scale, array-intensive scientific applications. It proposes and evaluates a compiler-based approach that employs two complementary techniques: data reorganization and disk mapping. The first of these, data reorganization, determines a suitable layout for data in the array space, whereas the second technique, disk mapping, decides the corresponding layout in the disk space. The goal of data reorganization and disk mapping is to ensure that data (from the different disk-resident arrays) that are accessed within the same loop iteration are colocated in the same set of disks. In this way, we can increase disk inter-access times (idle periods of disks) and this in turn allows better exploitation of the underlying hardware mechanisms used for reducing power. Our experiments with eight disk I/O-intensive scientific applications indicate that the proposed approach brings significant reductions in energy consumption, whether the underlying disk system uses spin-down disks or speed-reduced disks, two previously- proposed hardware-based disk power reduction schemes. The results also show that both the components of our scheme (data reorganization and disk mapping) are very important since applying any of these components alone does not generate large savings for most of our applica tions.
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