A heuristic machine learning-based algorithm for power and thermal management of heterogeneous MPSoCs

Arman Iranfar, S. Shahsavani, M. Kamal, A. Afzali-Kusha
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引用次数: 20

Abstract

In this work, we propose a power and thermal management algorithm based on machine learning to control the thermal stresses and power consumption of the heterogeneous MPSoCs. The objectives of the proposed algorithm are increasing the performance and decreasing the spatial and temporal temperature gradients along with the thermal cycling under the power and temperature constraints. Our proposed power and thermal management method is based on a heuristic approach to speed up the convergence of the machine learning algorithm which makes it applicable for general purpose processors. Adopting Q-Learning as the machine learning algorithm, the heuristic approach aids to limit the learning space by suggesting the most appropriate actions to the agent in each decision epoch. The heuristic algorithm employs the current and previous states of the machine learning, as well as the amount of the temperature stress and power consumption of each core to determine the appropriate action for each core, independently. The proposed algorithm is evaluated on 4-core, 8-core and 16-core homogeneous and heterogeneous MPSoCs for some benchmarks in the Splash2 benchmark package. The results reveal a faster convergence of machine learning and more thermal stresses reduction.
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基于启发式机器学习的异构mpsoc功率和热管理算法
在这项工作中,我们提出了一种基于机器学习的功率和热管理算法来控制异构mpsoc的热应力和功耗。该算法的目标是在功率和温度约束下提高性能,减小随热循环而产生的时空温度梯度。我们提出的功率和热管理方法是基于一种启发式方法来加速机器学习算法的收敛,使其适用于通用处理器。采用Q-Learning作为机器学习算法,启发式方法通过在每个决策时期向智能体建议最合适的动作来限制学习空间。启发式算法利用机器学习的当前和以前的状态,以及每个核心的温度应力和功耗的大小,独立地确定每个核心的适当动作。在Splash2基准测试包中的一些基准测试中,对所提出的算法在4核、8核和16核同构和异构mpsoc上进行了评估。结果表明,机器学习的收敛速度更快,热应力降低程度更高。
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