热约束下多核处理器的频率规划

M. Kadin, S. Reda
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引用次数: 21

摘要

本文的目标是:(1)开发一种频率规划方法,使多核处理器的总性能最大化,并根据设计约束限制其最高温度;(2)建立技术扩展对多核处理器性能限制的影响。考虑到多核或多核处理器的复杂设计和工作负载,开发能够准确计算给定处理器在各种操作条件下的温度和性能的模型在计算上是非常困难的。为了抽象潜在的设计复杂性,我们建议使用监督机器学习技术来开发通用模型,以捕获多核处理器在各种输入条件和工作负载下的热特性。然后,我们使用开发的模型来创建一个框架,其中各种设计约束和目标被表达并使用组合优化技术解决。使用已建立的功率建模和热仿真工具,我们表明有可能在不影响最高温度的情况下将多核处理器的性能提高11.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequency planning for multi-core processors under thermal constraints
The objectives of this paper are (1) to develop a frequency planning methodology that maximizes the total performance of multi-core processors and that limits their maximum temperature as specified by the design constraints; and (2) to establish the implications of technology scaling on the performance limits of multi-core processors. Given the intricate designs and workloads of multi or many-core processors, it is computationally exhaustive to develop models that accurately calculate the temperature and performance of a given processor under various operating conditions. To abstract the underlying design complexity, we propose the use of supervised machine learning techniques to develop versatile models that capture the thermal characterization of multi-core processors under various input conditions and workloads. We then use the developed models to create a framework where various design constraints and objectives are expressed and solved using combinatorial optimization techniques. Using established power modeling and thermal simulation tools, we show that it is possible to boost the performance of multi-core processors by up to 11.4% at no impact to the maximum temperature.
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