Research on a cloud resource scheduling strategy based on asynchronous reinforcement learning

Yuejiao Ma, Long Yang, Feng Hu
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引用次数: 3

Abstract

The effective management of cloud-based IT infrastructure resources plays an important role in the development of grid business and the reduction of operation and maintenance costs. For cloud resource scheduling, there are many factors that affect its performance, and it is difficult to use general methods to effectively solve the problem of cloud resource scheduling. In order to achieve efficient resource scheduling, this paper proposes a cloud resource scheduling strategy based on reinforcement learning. At the same time, in order to deal with the problem of slow convergence speed and low accuracy when the exploration and update of a single agent, By introducing a heterogeneous model to construct a cloud resource scheduling mechanism, which uses multithread to explore the environment at the same time to improve the convergence speed. Experiments show that the scheduling strategy of this method has better performance than the random scheduling strategy.
基于异步强化学习的云资源调度策略研究
对基于云的IT基础设施资源进行有效管理,对发展网格业务、降低运维成本具有重要意义。对于云资源调度来说,影响其性能的因素很多,很难用一般的方法来有效解决云资源调度问题。为了实现高效的资源调度,本文提出了一种基于强化学习的云资源调度策略。同时,为了解决单个agent在探索和更新时收敛速度慢、精度低的问题,通过引入异构模型构建云资源调度机制,在采用多线程探索环境的同时提高收敛速度。实验表明,该方法的调度策略比随机调度策略具有更好的性能。
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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