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Consistent runtime thermal prediction and control through workload phase detection

机译:通过工作负载阶段检测实现一致的运行时热预测和控制

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Elevated temperatures impact the performance, power consumption, and reliability of processors, which rely on integrated thermal sensors to measure runtime thermal behavior. These thermal measurements are typically inputs to a dynamic thermal management system that controls the operating parameters of the processor and cooling system. The ability to predict future thermal behavior allows a thermal management system to optimize a processor's operation so as to prevent the on-set of high temperatures. In this paper we propose a new thermal prediction method that leads to consistent results between the thermal models used in prediction and observed thermal sensor measurements, and is capable of accurately predicting temperature behavior with heterogenous workload assignment on a multicore platform. We devise an off-line analysis algorithm that learns a set of thermal models as a function of operating frequency and globally defined workload phases. We incorporate these thermal models into a dynamic voltage and frequency scaling (DVFS) technique that limits the maximum temperature during runtime. We demonstrate the effectiveness of our proposed system in predicting the thermal behavior of a real quad-core processor in response to different workloads. In comparison to a reactive thermal management technique, our predictive method dramatically reduces the number of thermal violations, the magnitude of thermal cycles, and workload runtimes.
机译:温度升高会影响处理器的性能,功耗和可靠性,而处理器则依赖集成的热传感器来测量运行时的热行为。这些热量测量通常是输入动态热量管理系统的输入,该系统控制处理器和冷却系统的操作参数。预测未来热行为的能力使热管理系统能够优化处理器的运行,从而防止高温的发生。在本文中,我们提出了一种新的热预测方法,该方法可在预测和观察到的热传感器测量中使用的热模型之间产生一致的结果,并且能够通过在多核平台上分配异构工作负载来准确预测温度行为。我们设计了一种离线分析算法,该算法可以根据运行频率和全局定义的工作负荷阶段来学习一组热模型。我们将这些热模型纳入动态电压和频率缩放(DVFS)技术中,该技术可限制运行时的最高温度。我们证明了我们提出的系统在预测实际四核处理器响应不同工作负载的热行为方面的有效性。与被动热管理技术相比,我们的预测方法大大减少了热违规的次数,热循环的数量和工作负载的运行时间。

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