程序相位持续时间预测及其在细粒度电源管理中的应用

S. Srinivasan, Raghavan Kumar, S. Kundu
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引用次数: 10

摘要

为了实现能量最优计算,处理器资源必须根据程序的计算需要动态调整。应用程序的计算需求可能在其执行期间发生变化,这取决于所处理数据的类型和位置。以前有人建议,当处理器等待缓存丢失上的数据时,可以使用动态电压和频率缩放(DVFS)来减少能耗。然而,由于DVFS涉及诸如电容器充电/放电时间和锁相环锁定时间等开销,细粒度DVFS没有获得吸引力。本文提出了一种基于程序执行行为预测的细粒度DVFS方案。如果预计程序将长时间保持在低IPC模式,那么为了实现潜在的节能,容忍锁相环锁定时间开销可能是值得的。运行时预测方案基于基于硬件的动态程序阶段分类和下一阶段持续时间估计。相位持续时间预测方案基于线性加权最小二乘估计(WLSE)方法,该方法速度快,硬件开销低。基于多个内存密集型SPEC2000基准测试的模拟,我们表明,与传统的DVFS方法相比,细粒度DVFS方案可以实现> 7%的能耗降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Program phase duration prediction and its application to fine-grain power management
To achieve energy optimal computing, processor resources must be adjusted dynamically to the computing needs of a program. The computational needs of an application may change during its execution depending on the type and locality of the processed data. It has been previously suggested that while a processor waits for data on a cache miss, dynamic voltage and frequency scaling (DVFS) may be used to reduce the energy consumption. However, due to the overheads involved in DVFS such as capacitor charging/discharging time and PLL locking time, fine-grain DVFS did not gain attraction. In this paper, we present a fine-grain DVFS scheme based on the prediction of program execution behavior. If a program is predicted to stay in a low IPC mode for a long period, it may be worthwhile to tolerate the PLL lock time overhead for achieving potential energy savings. The run-time prediction scheme is based on a hardware based dynamic program phase classification and next phase duration estimation. The phase duration prediction scheme is based on a linear weighted least square estimation (WLSE) approach, which is fast and incurs very low hardware overhead. Based on the simulation of several memory intensive SPEC2000 benchmarks, we show that energy reduction of > 7% can be achieved from fine-grain DVFS scheme over the traditional DVFS approach.
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