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首页> 外文期刊>Journal of Low Power Electronics >SmartDPM: Machine Learning-Based Dynamic Power Management for Multi-Core Microprocessors
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SmartDPM: Machine Learning-Based Dynamic Power Management for Multi-Core Microprocessors

机译:SMARTDPM:用于多核微处理器的基于机器的动态电源管理

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摘要

To address the power management challenge in multi-core microprocessors, we present a lightweight machine learning based dynamic power management (SmartDPM) scheme in which the voltage–frequency levels of the cores are dynamically adjusted along with online learning basedworkload prediction in an observer-controller loop. To enable scalability, our SmartDPM employs a per-application autonomous power management policy, in which online machine learning principles are employed for predicting the workload and capturing sporadic variations under the constraintsof accurate yet lightweight. Further, applications are assigned appropriate voltage–frequency level towards an efficient power management. The learning helps in dynamically reducing prediction error. Compared to the non-DVFS implementation, SmartDPM achieves nearly 35%power saving and nearly 15% higher power savings on average compared to the existing machine learning based power management schemes for a microprocessor with up to 32-cores.
机译:为了解决多核微处理器中的电源管理挑战,我们介绍了一种基于轻量级机器学习的动态电源管理(SmartDPM)方案,其中核心的电压 - 频率电平随着观察者控制器中的基于在线学习预测的在线学习环形。为了实现可扩展性,我们的SMARTDPM采用了每次应用程序自主电源管理策略,其中用于预测工作负载和捕获精确的约束中的工作量和捕获零星变化的在线机器学习原则。此外,将应用程序分配给高效电源管理的适当电压频率。学习有助于动态减少预测误差。与非DVFS实现相比,与现有的基于机器学习的电源管理方案相比,SMARTDPM达到近35%的省电且节省近15%的功率节省,其基于微处理器具有最多32个核心的微处理器。

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