基于群体智能和机器学习的云任务调度

Gaith Rjoub, J. Bentahar
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引用次数: 17

摘要

云计算是并行计算、分布式计算的扩展。云计算技术的应用越来越广泛,而任务调度问题是云计算环境中的一个基本问题。然而,在云环境中调度是一个困难的问题,因为它基本上是np完全的。因此,提出了许多基于近似技术的变体,特别是受群体智能(SI)的启发。本文提出了一种机器学习算法,通过多准则决策来指导云选择调度技术以优化性能。我们工作的主要贡献是最小化给定任务集的完工时间。使用CloudSim工具包对新策略进行了模拟,其中使用不同数量的vm(从2到50)以及30字节到2700字节之间的不同任务大小来检查算法的影响。实验结果表明,该算法将执行时间和makespan最小化在7% ~ 75%之间,提高了负载均衡调度的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud Task Scheduling Based on Swarm Intelligence and Machine Learning
Cloud computing is the expansion of parallel computing, distributed computing. The technology of cloud computing becomes more and more widely used, and one of the fundamental issues in this cloud environment is related to task scheduling. However, scheduling in Cloud environments represents a difficult issue since it is basically NP-complete. Thus, many variants based on approximation techniques, especially those inspired by Swarm Intelligence (SI) have been proposed. This paper proposes a machine learning algorithm to guide the cloud choose the scheduling technique by using multi criteria decision to optimize the performance. The main contribution of our work is to minimize the makespan of a given task set. The new strategy is simulated using the CloudSim toolkit package where the impact of the algorithm is checked with different numbers of VMs varying from 2 to 50, and different task sizes between 30 bytes and 2700 bytes. Experiment results show that the proposed algorithm minimizes the execution time and the makespan between 7% and 75%, and improves the performance of the load balancing scheduling.
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