Effective adaptive computing environment management via dynamic optimization

Shiwen Hu, M. Valluri, L. John
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引用次数: 15

Abstract

To minimize the surging power consumption of microprocessors, adaptive computing environments (ACEs) where microarchitectural resources can be dynamically tuned to match a program's runtime requirement and characteristics are becoming increasingly common. Adaptive computing environments usually have multiple configurable hardware units, necessitating exploration of a large number of combinatorial configurations in order to identify the most energy-efficient configuration. In this paper, we propose a scheme for efficient management of multiple configurable units, utilizing the inherent capabilities of dynamic optimization systems. Most dynamic optimizers typically detect dominant code regions (hotspots). We develop an ACE management scheme where hotpot boundaries are used for phase detection and adaptation. Since hotspots are of variable sizes and are often nested, program phase behavior which is hierarchical in nature is automatically captured in this technique. To demonstrate the usefulness and effectiveness of our framework, we use the proposed framework to dynamically adapt the sizes of L1 data and L2 caches that have different reconfiguration latencies and overheads. Our technique reduces L1D and L2 cache energy consumption by 47% and 58%, while a popular previously proposed technique only achieves reduction of 32% and 52% respectively.
通过动态优化实现有效的自适应计算环境管理
为了尽量减少微处理器激增的功耗,自适应计算环境(ace)正变得越来越普遍,在这种环境中,微架构资源可以动态调整以匹配程序的运行时需求和特征。自适应计算环境通常具有多个可配置的硬件单元,因此需要探索大量的组合配置,以确定最节能的配置。在本文中,我们提出了一种利用动态优化系统固有能力对多个可配置单元进行有效管理的方案。大多数动态优化器通常检测主导代码区域(热点)。我们开发了一种ACE管理方案,其中火锅边界用于相位检测和自适应。由于热点的大小是可变的,并且通常是嵌套的,因此这种技术可以自动捕获本质上分层的程序阶段行为。为了证明我们的框架的有用性和有效性,我们使用提出的框架来动态调整具有不同重新配置延迟和开销的L1数据和L2缓存的大小。我们的技术将L1D和L2缓存的能耗分别降低了47%和58%,而之前流行的技术仅分别降低了32%和52%。
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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