Empirical model for cooperative resizing of processor structures to exploit power-performance efficiency at runtime

O. Khan, S. Kundu
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Abstract

Power consumption has become a major cause of concern spanning from data centres to handheld devices. Traditionally, improvement in power-performance efficiency of a modern superscalar processor came from technology scaling. However, that is no longer the case. Many of the current systems deploy coarse grain voltage and/or frequency scaling for power management. These techniques are attractive, but limited because of their granularity of control and effectiveness in nano-complementary metal-oxide-semiconductor (CMOS) technologies. This study proposes a novel architecture-level mechanism to exploit intra-thread variations for power-performance efficiency in modern superscalar processors. This class of processors implement several buffer/queue structures to support speculative out-of-order execution for performance enhancement. Applications may not need full capabilities of such structures at all times. A mechanism that collaboratively adapts a finite set of key hardware structures to the changing programme behaviour can allow the processor to operate with heterogeneous power-performance capabilities. This study presents a novel offline regression-based empirical model to estimate structure resizing for a selected set of structures. It is shown that using a few processor runtime events, the system can dynamically estimate structure resizing to exploit power-performance efficiency. Results show that using the proposed empirical model, a selective set of key structures can be resized at runtime to deliver on average 40% power-performance efficiency over a baseline design, with only 5% loss of performance.
基于运行时功率性能效率的协同调整处理器结构的经验模型
从数据中心到手持设备,电力消耗已经成为人们关注的主要问题。传统上,现代超标量处理器的功率性能效率的提高来自于技术的缩放。然而,情况已不再如此。目前许多系统采用粗粒度电压和/或频率缩放来进行电源管理。这些技术很有吸引力,但由于其控制粒度和纳米互补金属氧化物半导体(CMOS)技术的有效性而受到限制。本研究提出了一种新的架构级机制来利用现代超标量处理器的线程内变化来提高功率性能效率。这类处理器实现了几个缓冲区/队列结构,以支持推测的乱序执行,从而提高性能。应用程序可能并不总是需要这种结构的全部功能。协同调整有限的关键硬件结构以适应不断变化的程序行为的机制可以使处理器具有异构的功率性能能力。本文提出了一种新的基于离线回归的经验模型来估计一组选定结构的结构调整大小。结果表明,利用少量处理器运行时事件,系统可以动态估计结构调整大小,从而提高功率性能效率。结果表明,使用所提出的经验模型,可以在运行时调整一组选定的关键结构的大小,从而在基准设计的基础上提供平均40%的功率性能效率,而性能损失仅为5%。
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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