Reinforcement Learning for Reducing the Interruptions and Increasing Fault Tolerance in the Cloud Environment

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-08-02 DOI:10.3390/informatics10030064
P. Lahande, Parag Ravikant Kaveri, Jatinderkumar R. Saini
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Abstract

Cloud computing delivers robust computational services by processing tasks on its virtual machines (VMs) using resource-scheduling algorithms. The cloud’s existing algorithms provide limited results due to inappropriate resource scheduling. Additionally, these algorithms cannot process tasks generating faults while being computed. The primary reason for this is that these existing algorithms need an intelligence mechanism to enhance their abilities. To provide an intelligence mechanism to improve the resource-scheduling process and provision the fault-tolerance mechanism, an algorithm named reinforcement learning-shortest job first (RL-SJF) has been implemented by integrating the RL technique with the existing SJF algorithm. An experiment was conducted in a simulation platform to compare the working of RL-SJF with SJF, and challenging tasks were computed in multiple scenarios. The experimental results convey that the RL-SJF algorithm enhances the resource-scheduling process by improving the aggregate cost by 14.88% compared to the SJF algorithm. Additionally, the RL-SJF algorithm provided a fault-tolerance mechanism by computing 55.52% of the total tasks compared to 11.11% of the SJF algorithm. Thus, the RL-SJF algorithm improves the overall cloud performance and provides the ideal quality of service (QoS).
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在云环境中减少中断和提高容错性的强化学习
云计算通过使用资源调度算法在虚拟机上处理任务,从而提供强大的计算服务。由于资源调度不当,云计算的现有算法提供的结果有限。此外,这些算法不能处理在计算过程中产生错误的任务。主要原因是这些现有的算法需要一种智能机制来增强它们的能力。为了提供一种智能机制来改善资源调度过程并提供容错机制,将强化学习技术与现有的SJF算法相结合,实现了一种强化学习-最短作业优先(RL-SJF)算法。在仿真平台上进行了RL-SJF与SJF的工作对比实验,并对多种场景下的挑战性任务进行了计算。实验结果表明,RL-SJF算法比SJF算法提高了14.88%的总成本,提高了资源调度的效率。此外,RL-SJF算法提供了容错机制,计算总任务的55.52%,而SJF算法为11.11%。因此,RL-SJF算法提高了云的整体性能,并提供了理想的服务质量(QoS)。
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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