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Runtime Performance Projection Model for Dynamic Power Management

机译:动态电源管理运行时性能投影模型

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In this paper, a runtime performance projection model for dynamic power management is proposed. The model is built as a first-order linear equation using a linear regression model. It could be used to estimate performance impact from different p-states (voltage-frequency pairs). Workload behavior is monitored dynamically for a program region of 100M instructions using hardware performance monitoring counters (PMCs), and performance for the next region is estimated using the proposed model. For each 100M-instructions interval, the performance of all processor p-states is estimated and the lowest frequency is selected within specified performance constraints. The selected frequency is set with a low-overhead DVFS-based (dynamic voltage-frequency scaling) p-state changing mechanism for the next program region. We evaluate the performance degradation and the amount of energy saving of our dynamic power management scheme using the proposed projection model for SPEC CPU2000 benchmark on a Pentium M platform. We measure the execution time and energy consumption for 4 specified constraints – 10%, 20%, 40%, 80%, on the maximum allowed performance degradation. The result shows that our dynamic management scheme saves energy consumption by 3%, 18%, 38% and 48% with a performance degradation of 3%, 19%, 45% and 79% under 10%,20%,40% and 80% constraints, respectively.
机译:本文提出了一种动态电力管理的运行时性能投影模型。使用线性回归模型作为一阶线性方程构建该模型。它可用于估计来自不同P态的性能影响(电压 - 频率对)。使用硬件性能监视计数器(PMC)动态地监视工作负载行为,用于使用硬件性能监视计数器(PMC),并且使用所提出的模型估计下一个区域的性能。对于每个100M指令间隔,估计所有处理器P状态的性能,并且在指定的性能约束中选择最低频率。采用基于低开销的DVFS(动态电压 - 频率缩放)P状态改变机制,设置所选频率,用于下一个节目区域。我们使用Pentium M平台上的规范CPU2000基准测试所提出的投影模型评估性能下降和能源节能量。我们测量4个指定约束的执行时间和能量消耗 - 10%,20%,40%,80%,最大允许的性能下降。结果表明,我们的动态管理方案将能源消耗节省3%,18%,38%和48%,性能降低3%,19%,45%和79%以下10%,20%,40%和80分别约束。

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