Resource Deployment and Task Scheduling Based on Cloud Computing

He Sun
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引用次数: 1

Abstract

Cloud computing is a computing model developed from parallel computing and distributed computing. The rapid development of cloud computing technology not only expands the scale of data in the database, but also consumes a lot of resources for data processing, resulting in huge energy costs. In addition, scheduling policies that do not conform to the actual situation will cause uneven task distribution, cause serious waste of resources, and increase cloud data management operating costs. In cloud computing related research, resource deployment and task scheduling have a great impact on the overall performance of the system. In order to solve the above problems, more and more scholars have conducted in-depth research on this problem. Reduce the energy consumption (EC) of cloud data processing, improve data processing efficiency, propose cloud computing architecture, build resource deployment (RD) model and task scheduling (TS) model on this basis. The usefulness of the model is discussed in depth. Aiming at low EC and high-efficiency resource allocation tasks, a TS algorithm based on improved particle swarm optimization (PSO) algorithm is proposed to further improve the performance of cloud computing systems. The experimental results show that the resource deployment and task scheduling model constructed in this paper can consume bad particles, maximize resource utilization, and reduce the EC of cloud computing (CC) systems after being optimized by particle swarm optimization. Compared with the traditional PSO algorithm, the improved PSO algorithm in this paper can effectively avoid the problem of user query resource allocation lag, improve the task execution efficiency, and enhance the stability of the CC system.
基于云计算的资源部署与任务调度
云计算是由并行计算和分布式计算发展而来的一种计算模型。云计算技术的快速发展不仅扩大了数据库中的数据规模,同时也消耗了大量的数据处理资源,造成了巨大的能源成本。此外,不符合实际情况的调度策略会造成任务分配不均,造成资源严重浪费,增加云数据管理运营成本。在云计算相关研究中,资源部署和任务调度对系统的整体性能影响很大。为了解决上述问题,越来越多的学者对这一问题进行了深入的研究。降低云数据处理的能耗(EC),提高数据处理效率,提出云计算架构,在此基础上构建资源部署(RD)模型和任务调度(TS)模型。对模型的实用性进行了深入的讨论。针对低EC、高效率的资源分配任务,提出了一种基于改进粒子群优化(PSO)算法的TS算法,进一步提高云计算系统的性能。实验结果表明,本文构建的资源部署和任务调度模型经过粒子群优化后,能够消耗坏粒子,最大限度地提高资源利用率,降低云计算系统的EC。与传统的粒子群算法相比,本文改进的粒子群算法可以有效避免用户查询资源分配滞后的问题,提高任务执行效率,增强CC系统的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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