Futility Scaling: High-Associativity Cache Partitioning

Ruisheng Wang, Lizhong Chen
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引用次数: 50

Abstract

As shared last level caches are widely used in many-core CMPs to boost system performance, partitioning a large shared cache among multiple concurrently running applications becomes increasingly important in order to reduce destructive interference. However, while recent works start to show the promise of using replacement-based partitioning schemes, such existing schemes either suffer from the severe associativity degradation when the number of partitions is high, or lack the ability to precisely partition the whole cache which leads to decreased resource efficiency. In this paper, we propose Futility Scaling (FS), a novel replacement-based cache partitioning scheme that can precisely partition the whole cache while still maintaining high associativity even with a large number of partitions. The futility of a cache line represents the uselessness of this line to application performance and can be ranked in different ways by various policies, e.g., LRU and LFU. The idea of FS is to control the size of a partition by properly scaling the futility of its cache lines. We study the properties of FS on both associativity and sizing in an analytical framework, and present a feedback-based implementation of FS that incurs little overhead in practice. Simulation results show that, FS improves performance over previously proposed Vantage and Prism by up to 6.0% and 13.7%, respectively.
无效扩展:高关联缓存分区
随着共享最后一级缓存被广泛用于多核cmp以提高系统性能,在多个并发运行的应用程序之间划分大型共享缓存变得越来越重要,以减少破坏性干扰。然而,尽管最近的研究开始显示出使用基于替换的分区方案的希望,但当分区数量很高时,这些现有的方案要么存在严重的关联性下降,要么缺乏对整个缓存进行精确分区的能力,从而导致资源效率下降。在本文中,我们提出了一种新的基于替换的缓存分区方案——无效缩放(FS),它可以精确地对整个缓存进行分区,同时即使在大量分区的情况下仍然保持高的关联性。缓存线路的无用性表示该线路对应用程序性能的无用性,并且可以通过不同的策略(例如LRU和LFU)以不同的方式进行排名。FS的思想是通过适当地扩展其缓存线的有效性来控制分区的大小。我们在分析框架中研究了FS在结合性和大小方面的特性,并提出了一个基于反馈的FS实现,在实践中产生了很少的开销。仿真结果表明,与先前提出的Vantage和Prism相比,FS的性能分别提高了6.0%和13.7%。
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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