一种基于深度学习技术的节能任务调度算法

Jenifer Mahilraj, P. Sivaram, Ns Lokesh, B. Sharma
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引用次数: 1

摘要

信息技术(IT)和移动计算产业目前正处于云计算(CC)的发展阶段。不需要购买软件、cpu、内存、I/O硬件等资源,而是根据需要使用和收费。数据中心的大规模扩展需要大量的能源消耗,或者数据中心容纳各种各样的计算机。因此,云服务提供商正在探索降低能源使用和碳排放的低成本战略。因此,对有效资源和不良能源消耗的工作规划受到了高度关注和关键考虑。本文提出了一种称为短期或长期记忆(LSTM)的机器学习技术,用于有效的电力任务调度,以解决日益增长的碳或能源排放问题。推荐的调度策略考虑完成时间或资源任务的独占使用情况,以及标准化过程。采用新颖的黑窗来减轻LTSM的重量,提高LTSM的性能。通过仿真分析,对LSTM-NBW算法的效率进行了评价,评价了该算法的调度速度、功耗、任务完成时间和资源利用率。结果表明,对于80kB的用户作业,建议的模型仅比原始的LSTM模型多获得400KWh。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Optimised Energy Efficient Task Scheduling Algorithm based on Deep Learning Technique for Energy Consumption
The information technology (IT) and mobile computing industries are now in the development stages of cloud computing (CC). Instead of being purchased, resources such as software, CPUs, memory, I/O hardware, and others are used and charged as needed. The massive expansion of CC necessitates enormous energy consumption, or data centers house a diverse spectrum of computers. Consequently, cloud service providers are exploring low-cost strategies for reducing energy use and carbon emissions. Therefore, work planning has garnered great attention and critical consideration about effective resources and bad energy consumption. This paper proposes a machine learning technique called short-term or Long-Term Memory (LSTM) for efficient power task scheduling to address growing carbon or energy emissions. The recommended strategy for scheduling considers the finish time or exclusive usage of a resource task, as well as the standardizing process. The Novel Black Window is used to reduce weight and improve the performance of LTSM. The simulated analysis is used to evaluate the efficiency of the LSTM-NBW in aspects of makes pan, power consumption, task completion time, and resource utilization. The findings show that the suggested model only obtained 400KWh more for the 80kB user job than the original LSTM model.
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