A Review of An Idea For Secure Resource Usage And Load Balancing Using Integrated Cloud Computing Strategies

Ruchika, Dhiraj Khurana
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Abstract

In this study, numerous cloud computing load balancing algorithms are examined, and important difficulties that must be considered while building new load balancing algorithms are also explored. Various measurement criteria, such as performance, scalability, throughput, resource usage, fault tolerance, reaction time, and others, are studied in the literature to compare current static and dynamic load balancing methods. Cloud computation offloading and work schedules have been the subject of some research. Degrading cloud computing performance is a major concern for cloud enterprises of the huge amount of data and varied sources inside this cloud that must be managed. To maximize system performance and reduce carbon emissions, load balancing aims to use resources in the most efficient way possible while minimizing the number of resources used. This paper focuses on cloud computing load balancing strategies. Several qualitative factors, including throughput, reliability, energy-saving features, performance, scalability, and associated overhead, are considered to examine, and compare the present techniques of load balancing.
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基于集成云计算策略的安全资源使用和负载平衡思想综述
在本研究中,研究了许多云计算负载平衡算法,并探讨了在构建新的负载平衡算法时必须考虑的重要困难。文献中研究了各种测量标准,如性能、可伸缩性、吞吐量、资源使用、容错、反应时间等,以比较当前的静态和动态负载平衡方法。云计算卸载和工作安排一直是一些研究的主题。降低云计算性能是云企业的一个主要问题,因为云中的大量数据和各种来源必须进行管理。为了最大限度地提高系统性能并减少碳排放,负载平衡旨在以最有效的方式使用资源,同时最大限度地减少使用的资源数量。本文主要研究云计算负载均衡策略。考虑了几个定性因素,包括吞吐量、可靠性、节能特性、性能、可伸缩性和相关开销,以检查和比较当前的负载平衡技术。
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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