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An Improved Q-Learning for System Power Optimization with Temperature, Performance and Energy Constraint Modeling

机译:具有温度,性能和能量约束建模的系统功率优化的改进Q学习

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Power management of embedded systems based on machine learning have drawn more and more attention. High-level software power management and optimization have gradually become important technologies for controlling the computer system power dissipation. In paper, we have employed an improved power optimization management technique which employ Q-learning algorithm based on temperature, performance and energy. The improved Q-learning has been employed to control the uncertain states of the running system and can effectively make decisions to select a rational policy with multiple parameter constraints. As running hardware and application data can be effectively collected and modeled, the power management framework can easily explore an ideal policy by value function of Q-learning algorithm.
机译:基于机器学习的嵌入式系统的电源管理越来越受到关注。高级软件电源管理和优化逐渐成为控制计算机系统功耗的重要技术。在纸质中,我们采用了一种改进的功率优化管理技术,该技术采用了基于温度,性能和能量的Q学习算法。已采用改进的Q学习来控制运行系统的不确定状态,并且可以有效地做出决定选择具有多个参数约束的Rational策略。随着运行硬件和应用程序数据可以有效地收集和建模,电源管理框架可以通过Q学习算法的价值函数轻松探索理想的策略。

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