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Investigation of LSTM based prediction for dynamic energy management in chip multiprocessors

机译:基于LSTM的芯片多处理器动态能量管理预测研究

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In this paper, we investigate the effectiveness of using long short-term memory (LSTM) instead of Kalman filtering to do prediction for the purpose of constructing dynamic energy management (DEM) algorithms in chip multi-processors (CMPs). Either of the two prediction methods is employed to estimate the workload in the next control period for each of the processor cores. These estimates are then used to select voltage-frequency (VF) pairs for each core of the CMP during the next control period as part of a dynamic voltage and frequency scaling (DVFS) technique. The objective of the DVFS technique is to reduce energy consumption under performance constraints that are set by the user. We conduct our investigation using a custom Sniper system simulation framework. Simulation results for 16 and 64 core network-on-chip based CMP architectures and using several benchmarks demonstrate that the LSTM is slightly better than Kalman filtering.
机译:在本文中,我们研究了使用长短期记忆(LSTM)代替卡尔曼滤波进行预测的有效性,目的是在芯片多处理器(CMP)中构造动态能量管理(DEM)算法。两种预测方法中的任何一种都可用于估计每个处理器内核在下一个控制周期中的工作量。然后,这些估计值将被用作动态电压和频率缩放(DVFS)技术的一部分,在下一个控制周期内为CMP的每个核心选择电压-频率(VF)对。 DVFS技术的目标是在用户设置的性能约束下降低能耗。我们使用自定义的Sniper系统仿真框架进行调查。基于16和64核心片上网络的CMP架构的仿真结果以及使用多个基准测试的结果表明,LSTM略优于Kalman滤波。

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