基于多目标蚁群优化的志愿移动采购

K. Areekijseree, T. Achalakul
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引用次数: 2

摘要

志愿计算是最近流行的分布式计算概念之一。其基本理念是允许计算机所有者将计算能力和存储空间捐赠给科学应用。在这项研究中,我们对志愿移动设备的利用感兴趣。这种概念的实现是复杂的,因为很难准确估计工作流任务在众多移动设备上的执行时间。因此,有效地调度应用程序工作流可能是一个真正的挑战。在本文中,我们提出了一种实用的方法来构建一个估计开销和执行时间的工作流,以及一个高度分布式计算平台的调度算法。其主要思想是在当前可用的移动设备上有效地优化任务调度,其两个目标是最大限度地节省成本和执行时间。因此,费用将由志愿者承担。我们在框架中采用了多目标蚁群优化(MOACO)算法。我们在不同数量的志愿设备下对不同规模的科学工作流进行了实验。结果表明,使用移动源可以最大限度地减少数据中心的能源消耗,同时将执行时间保持在合理的期限内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Volunteered mobile sourcing with multi-objective ant colony optimization
Volunteered computing has been one of the popular distributed computing concepts recently. The basic idea is to allow computer owners to donate the computing power and storage to scientific applications. In this research, we are interested in the utilization of volunteered mobile devices. The implementation of such a concept is complicated since it is hard to accurately estimate the execution time of workflow tasks on numerous mobile devices. To efficiently schedule application workflows can thus be a real challenge. In this paper, we proposed a practical way to construct a workflow with estimated overhead and execution time, as well as a scheduling algorithm for a highly distributed computing platform. The main idea is to effectively optimize task scheduling onto the currently available mobile devices with two objectives of maximizing both cost and execution time saved. Therefore, the cost will be covered by the volunteers. We adapt the Multi-objective Ant Colony Optimization (MOACO) algorithm in our framework. We perform an experiment with different sizes of scientific workflows under different numbers of volunteered devices. The results show a good potential in using mobile sources to minimize the energy consumption at the data center while keeping the execution time within a reasonable deadline.
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