Energy-Performance Trade-offs on Energy-Constrained Devices with Multi-component DVFS

R. Begum, David Werner, Mark Hempstead, Guru Prasad Srinivasa, Geoffrey Challen
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引用次数: 32

Abstract

Battery lifetime continues to be a top complaint about smart phones. Dynamic voltage and frequency scaling (DVFS) has existed for mobile device CPUs for some time, and provides a trade off between energy and performance. Dynamic frequency scaling is beginning to be applied to memory as well to make more energy-performance tradeoffs possible. We present the first characterization of the behavior of the optimal frequency settings of workloads running both, under energy constraints and on systems capable of CPU DVFS and memory DFS, an environment representative of next-generation mobile devices. Our results show that continuously using the optimal frequency settings results in a large number of frequency transitions which end up hurting performance. However, by permitting a small loss in performance, transition overhead can be reduced and end-to-end performance and energy consumption improved. We introduce the idea of inefficiency as a way of constraining task energy consumption relative to the most energy-efficient settings, and characterize the performance of multiple workloads running under different inefficiency settings. Overall our results have multiple implications for next-generation mobile devices exposing multiple energy-performance tradeoffs.
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基于多组件DVFS的能量受限设备的能量性能权衡
电池寿命仍然是人们对智能手机的最大抱怨。动态电压和频率缩放(DVFS)已经用于移动设备cpu有一段时间了,它提供了能量和性能之间的折衷。动态频率缩放也开始应用于内存,以使更多的能量性能折衷成为可能。我们首次描述了在能量限制下以及在具有CPU DVFS和内存DFS(下一代移动设备的代表环境)的系统上运行的工作负载的最佳频率设置的行为。我们的结果表明,持续使用最佳频率设置会导致大量的频率转换,最终会损害性能。然而,通过允许性能上的小损失,可以减少转换开销,提高端到端性能和能耗。我们引入了低效率的概念,将其作为一种相对于最节能设置约束任务能耗的方式,并描述了在不同低效率设置下运行的多个工作负载的性能。总的来说,我们的研究结果对下一代移动设备有多种影响,暴露了多种能源性能权衡。
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