基于优化粒子群算法的云计算环境下增强任务调度

Swarnendra Kumar Behera, Saroja Kumar Rout, R. Tiwari
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引用次数: 0

摘要

云计算基础设施中最重要的约束是作业/任务调度,它对整个云计算服务和产品的效率起着至关重要的作用。云基础设施中的作业/任务调度是指通过考虑执行时间和成本、基础设施可扩展性和可靠性、平台可用性和吞吐量、资源利用率和make span等不同因素,为给定的作业/任务分配最合适的云资源。提出了一种基于粒子群优化的增强任务调度算法,该算法考虑了调度目标和调度时间的优化。我们提出了采用基于离散定位(DAPDP)算法的参数动态调整来调度和分配云作业/任务的模型,以确保优化的制作盘和调度时间。通过查看可用的、计划的和分配的云资源,DAPDP可以在实现可靠性方面发挥重要作用。将该方法与现有的粒子群算法和优化作业/任务调度算法进行比较,证明了该方法可以节省调度时间、调度时间和执行时间。
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TSPSO: Enhanced Task Scheduling using Optimized Particle Swarm Algorithm in Cloud Computing Environment
The most significant constraint in cloud computing infrastructure is job/task scheduling which affords the vital role of efficiency of the entire cloud computing services and offerings. Job/ task scheduling in cloud infrastructure means that to assign the best appropriate cloud resources for the given job/task by considering different factors: execution time and cost, infrastructure scalability and reliability, platform availability and throughput, resource utilization, and make span. The proposed enhanced task scheduling algorithm using particle swarm optimization considers the optimization of makes pan and scheduling time. We propose the proposed model by using dynamic adjustment of parameters with discrete positioning (DAPDP) based algorithm to schedule and allocate cloud jobs/tasks that ensure optimized makes pan and scheduling time. DAPDP can witness a substantial role in attaining reliability by seeing the available, scheduled, and allocated cloud resources. Our approach DAPDP compared with other existing particle swarm and optimization job/task scheduling algorithms to prove that DAPDP can save in makes pan, scheduling, and execution time.
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