Productive Asset Management Methodology Technique in Virtual Machines to Increase CPU Utilization

A. Patil, Bharati Harsoor
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Abstract

One of the technologies with the quickest growth is cloud computing, which is utilized in many applications where customers can access virtual machines (VMs) that are offered by cloud service providers in data centers. The ideal distribution should meet both the needs of users and service providers. A2OA, an adaptive Archimedes optimization algorithm, is the suggested mechanism for allocating resources in cloud computing. The optimization problem will be solved and user tasks will be distributed using this adaptive approach. The adaptive approach will combine the Seagull Optimization Algorithm with the Archimedes Optimization Algorithm (AOA) (SOA). The update procedure in the AOA will be improved. in cooperation with the SOA. The tasks will be distributed to the user optimally based on the proposed A2OA. In MATLAB, the suggested methodology will be put into practice, and results will be examined. Performance metrics such make span, load standard deviation, load ratio, user provider satisfaction level, response time, and convergence analysis will be used to assess how well the suggested methodology performs. The suggested approach will be contrasted with the traditional approaches, including the Genetic Algorithm (GA), Particle Swarm Algorithm (PSO), and Whale Optimization Algorithm (WOA), respectively. Key Word: Virtual machines, adaptive Archimedes optimization algorithm (A2OA), Seagull Optimization Algorithm (SOA), Genetic Algorithm (GA), maximum power, load ratio
提高CPU利用率的虚拟机生产性资产管理方法技术
增长最快的技术之一是云计算,在许多应用程序中,客户可以访问由数据中心的云服务提供商提供的虚拟机(vm)。理想的分布应该同时满足用户和服务提供商的需求。A2OA是一种自适应阿基米德优化算法,是云计算中资源分配的建议机制。利用这种自适应方法解决了优化问题,实现了用户任务的分配。该自适应方法将海鸥优化算法与阿基米德优化算法(AOA) (SOA)相结合。AOA的更新程序将得到改进。与SOA合作。任务将根据建议的A2OA最优地分配给用户。在MATLAB中,建议的方法将付诸实践,并对结果进行检验。性能指标,如跨度、负载标准偏差、负载比率、用户提供者满意度、响应时间和收敛分析,将用于评估所建议的方法的执行情况。本文提出的方法将分别与遗传算法(GA)、粒子群算法(PSO)和鲸鱼优化算法(WOA)等传统方法进行对比。关键词:虚拟机,自适应阿基米德优化算法(A2OA),海鸥优化算法(SOA),遗传算法(GA),最大功率,负载比
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