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A multi-objective optimization scheduling method based on the ant colony algorithm in cloud computing

机译:云计算中基于蚁群算法的多目标优化调度方法

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摘要

Abstract:udFor task-scheduling problems in cloud computing, a multi-objective optimization method is proposed here. First, with an aim toward the biodiversity of resources and tasks in cloud computing, we propose a resource cost model that defines the demand of tasks on resources with more details. This model reflects the relationship between the user's resource costs and the budget costs. A multi-objective optimization scheduling method has been proposed based on this resource cost model. This method considers the makespan and the user's budget costs as constraints of the optimization problem, achieving multi-objective optimization of both performance and cost. An improved ant colony algorithm has been proposed to solve this problem. Two constraint functions were used to evaluate and provide feedback regarding the performance and budget cost. These two constraint functions made the algorithm adjust the quality of the solution in a timely manner based on feedback in order to achieve the optimal solution. Some simulation experiments were designed to evaluate this method's performance using four metrics: 1) the makespan; 2) cost; 3) deadline violation rate; and 4) resource utilization. Experimental results show that based on these four metrics, a multi-objective optimization method is better than other similar methods, especially as it increased 56.6% in the best case scenario.
机译:摘要: ud针对云计算中的任务调度问题,提出了一种多目标优化方法。首先,针对云计算中资源和任务的生物多样性,我们提出了一种资源成本模型,该模型详细定义了任务对资源的需求。该模型反映了用户的资源成本与预算成本之间的关系。基于该资源成本模型,提出了一种多目标优化调度方法。该方法将制造期和用户的预算成本视为优化问题的约束,从而实现了性能和成本的多目标优化。为了解决这个问题,提出了一种改进的蚁群算法。使用两个约束函数来评估并提供有关绩效和预算成本的反馈。这两个约束函数使算法能够基于反馈及时调整解决方案的质量,以实现最佳解决方案。设计了一些模拟实验,以使用四个指标来评估此方法的性能:1)工期; 2)费用; 3)截止期限违规率; 4)资源利用。实验结果表明,基于这四个指标,多目标优化方法要优于其他类似方法,尤其是在最佳情况下,提高了56.6%。

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