Neural Network-Based Task Scheduling with Preemptive Fan Control

Bilge Acun, Eun Kyung Lee, Yoonho Park, L. Kalé
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引用次数: 4

Abstract

As cooling cost is a significant portion of the total operating cost of supercomputers, improving the efficiency of the cooling mechanisms can significantly reduce the cost. Two sources of cooling inefficiency in existing computing systems are discussed in this paper: temperature variations, and reactive fan speed control. To address these problems, we propose a learning-based approach using a neural network model to accurately predict core temperatures, a preemptive fan control mechanism, and a thermal-aware load balancing algorithm that uses the temperature prediction model. We demonstrate that temperature variations among cores can be reduced from 9°C to 2°C, and that peak fan power can be reduced by 61%. These savings are realized with minimal performance degradation.
基于神经网络的优先风扇控制任务调度
由于冷却成本是超级计算机总运行成本的重要组成部分,因此提高冷却机制的效率可以显著降低成本。本文讨论了现有计算系统中冷却效率低下的两个来源:温度变化和反应式风扇转速控制。为了解决这些问题,我们提出了一种基于学习的方法,使用神经网络模型来准确预测核心温度,一种先发制人的风扇控制机制,以及一种使用温度预测模型的热感知负载平衡算法。我们证明了内核之间的温度变化可以从9°C减少到2°C,并且风扇的峰值功率可以降低61%。这些节省以最小的性能下降实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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