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LMS-based low-complexity game workload prediction for DVFS

机译:基于LMS的低复杂性游戏DVFS的工作负载预测

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While dynamic voltage and frequency scaling (DVFS) based power management has been widely studied for video processing, there is very little work on game power management. Recent work on proportional-integral-derivative (PID) controllers fro predicting game workload used hand-turned PID controller gains on relatively short game plays. This left open questions on the robustness of the PID controller and how sensitive the prediction quality is on the choice of the gain values, especially for long game plays involving different scenarios and scene changes. In this paper we propose a Least Mean Squares (LMS) Linear Predictor, which is a regression model commonly used for system parameter identification. Our results show that game workload variation can be estimated using a linear-in-parameters (LIP) model. This observation dramatically reduces the complexity of parameter estimation as the LMS Linear Predictor learns the relevant parameters of the model iteratively as the game progresses. The only parameter to be tuned by the system designer is the learning rate, which is relatively straightforward. Our experimental results using the LMS Linear Predictor show comparable power savings and game quality with those obtained from a highly-tuned PID controller.
机译:虽然基于动态电压和频率缩放(DVFS)的电源管理已被广泛研究视频处理,但在游戏电源管理方面很少有效。最近的比例积分衍生物(PID)控制器的工作来看,预测游戏工作负载使用的手工转动的PID控制器在相对较短的游戏中播放。这对PID控制器的鲁棒性以及预测质量的选择有多敏感,因此对增益值的选择有多敏感,特别是对于涉及不同场景和场景的长游戏。在本文中,我们提出了一种最小均方块(LMS)线性预测器,其是一种常用于系统参数识别的回归模型。我们的结果表明,可以使用LINEAL-INEARIAL(LIP)模型来估计游戏工作负载变化。随着LMS线性预测器在游戏进展的情况下,随着LMS线性预测器在迭代地了解模型的相关参数,显着降低了参数估计的复杂性。系统设计器唯一要调整的参数是学习率,相对简单。我们使用LMS线性预测器的实验结果表明了从高度调谐的PID控制器获得的那些具有相当的功率节省和游戏质量。

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