低效率约束下的CPU和DRAM DVFS算法

R. Begum, Mark Hempstead, Guru Prasad Srinivasa, Geoffrey Challen
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引用次数: 8

摘要

核心和DRAM的动态电压和频率缩放(DVFS)提供了为了节省能源而权衡性能的机会。以前使用DVFS进行核心和DRAM电源管理的方法使用性能,特别是可接受的性能损失作为约束。我们提出了在特定能量预算下协调核心和DRAM频率缩放的能量管理算法。正如我们将展示的那样,在性能限制下工作的方法并不直接适用于在能量限制下运行的系统,因为很难实时计算正确的性能界限以保持在能量预算之下。为不同的应用程序设置任意的能源预算可能会损害应用程序的性能。我们使用之前介绍过的低效率的概念——高于可用于提高性能的最低所需能量的额外能量——为我们的系统提供一个动态的能量约束。我们引入了新的电源管理算法,在此约束下搜索功率和性能空间以找到最佳性能点。我们使用CPU DVFS和DRAM频率缩放来证明我们的算法的有效性。我们表明,与最先进的性能受限系统相比,我们的算法的调整成本降低了24%,节省了高达5%的能源,性能损失很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithms for CPU and DRAM DVFS under inefficiency constraints
Dynamic voltage and frequency scaling (DVFS) of both the core and DRAM provides opportunities to trade-off performance in order to save energy. Previous approaches to core and DRAM power management using DVFS used performance, specifically acceptable performance loss, as a constraint. We present energy management algorithms that coordinate core and DRAM frequency scaling under a specified energy budget. Approaches that work under performance constraints, as we will show, are not directly applicable to systems operating under energy constraints, as it is difficult to calculate the correct performance bounds in real-time to stay under an energy budget. Setting arbitrary energy budgets for a diverse set of applications can be harmful to application performance. We use the previously introduced concept of Inefficiency - the additional amount of energy above the minimum required energy that can be used to improve performance - to provide a dynamic energy constraint to our system. We introduce new power management algorithms that search the power and performance space to find the best performing point under this constraint. We demonstrate the efficacy of our algorithms using CPU DVFS and DRAM frequency scaling. We show that our algorithms have 24% lower tuning cost and save up to 5% energy with a little performance loss compared to a state-of-the-art performance constrained system.
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