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An Ant Colony Optimization Approach to a Grid Workflow Scheduling Problem With Various QoS Requirements

机译:多种QoS需求的网格工作流调度问题的蚁群优化方法

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摘要

Grid computing is increasingly considered as a promising next-generation computational platform that supports wide-area parallel and distributed computing. In grid environments, applications are always regarded as workflows. The problem of scheduling workflows in terms of certain quality of service (QoS) requirements is challenging and it significantly influences the performance of grids. By now, there have been some algorithms for grid workflow scheduling, but most of them can only tackle the problems with a single QoS parameter or with small-scale workflows. In this frame, this paper aims at proposing an ant colony optimization (ACO) algorithm to schedule large-scale workflows with various QoS parameters. This algorithm enables users to specify their QoS preferences as well as define the minimum QoS thresholds for a certain application. The objective of this algorithm is to find a solution that meets all QoS constraints and optimizes the user-preferred QoS parameter. Based on the characteristics of workflow scheduling, we design seven new heuristics for the ACO approach and propose an adaptive scheme that allows artificial ants to select heuristics based on pheromone values. Experiments are done in ten workflow applications with at most 120 tasks, and the results demonstrate the effectiveness of the proposed algorithm.
机译:网格计算日益被视为支持广域并行和分布式计算的有希望的下一代计算平台。在网格环境中,应用程序始终被视为工作流。根据特定的服务质量(QoS)要求调度工作流的问题极具挑战性,并且极大地影响了网格的性能。到目前为止,已经有一些用于网格工作流调度的算法,但是大多数算法只能解决单个QoS参数或小规模工作流的问题。在此框架下,本文旨在提出一种蚁群优化(ACO)算法来调度具有各种QoS参数的大规模工作流。该算法使用户能够指定他们的QoS偏好以及定义特定应用程序的最小QoS​​阈值。该算法的目的是找到一种满足所有QoS约束并优化用户首选QoS参数的解决方案。基于工作流调度的特征,我们为ACO方法设计了七个新的启发式算法,并提出了一种自适应方案,该方案允许人工蚂蚁根据信息素值选择启发式算法。实验在最多120个任务的十个工作流应用程序中进行,结果证明了该算法的有效性。

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