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Race to idle or not: balancing the memory sleep time with DVS for energy minimization

机译:竞争闲置与否:使用DVS平衡存储睡眠时间以获得能量最小化

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Reducing energy consumption is a critical problem in most of the computing systems today. Among all the computing system components, processor and memory are two significant energy consumers. Dynamic voltage scaling is typically applied to reduce processor energy while sleep mode is usually injected to trim memory's leakage energy. However, in the memory architecture with multiple cores sharing memory, in order to optimize the system-wide energy, these two classic techniques are difficult to be directly combined due to the complicated interactions. In this work, we explore the coordination of the multiple cores and the memory, and present systematic analysis for minimizing the system-wide energy based on different system models and task models. For tasks with common release time, optimal schemes are presented for the systems both with and without considering the static power of the cores. For agreeable deadline tasks, different dynamic programming-based optimal solutions are proposed for negligible and non-negligible static power of cores. For the general task model, this paper proposes a heuristic online algorithm. Furthermore, the scheme is extended to handle the problem when the transition overhead between the active and sleep modes is considered. The optimality of the proposed schemes for common release time and agreeable deadline tasks are proved. The validity of the proposed heuristic scheme is evaluated through experiments. Experimental results confirm the superiority of the heuristic scheme in terms of the energy saving improvement compared to the most related existing work.
机译:降低能耗是今天大多数计算系统中的关键问题。在所有计算系统组件中,处理器和存储器是两个重要的能量消费者。通常应用动态电压缩放以减少处理器能量,而睡眠模式通常注入以修剪内存的泄漏能量。然而,在具有多个核心共享存储器的存储器体系结构中,为了优化系统范围的能量,由于复杂的相互作用,这两个经典技术难以直接组合。在这项工作中,我们探讨了多核和内存的协调,并提出了基于不同系统模型和任务模型最小化系统范围的能量的系统分析。对于具有通用释放时间的任务,对于系统,而不考虑核心的静态功率,可以为系统提供最佳方案。对于令人愉悦的截止日期任务,提出了不同的基于动态编程的最佳解决方案,以便可忽略不可或缺的核心静态功率。对于常规任务模型,本文提出了一种启发式在线算法。此外,当考虑主动和睡眠模式之间的过渡开销时,该方案扩展以处理问题。证明了普通释放时间和令人愉快的截止日期任务的提议方案的最优性。通过实验评估拟议启发式计划的有效性。与最相关的工作相比,实验结果证实了启发式方案的优越性方案。

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