用于云中资源分配的机制和工具

J. Kaur
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引用次数: 0

摘要

对计算机资源的即用即付访问是云计算模型的一个主要卖点。除了传统的计算机资源外,云租户还需要将其专用资源完全联网,以便简单地实现网络功能和服务。按需资源供应的灵活性和便利性使云计算成为一个引人注目的计算平台。满足波动的需求和使云支持基础设施投资回报最大化的关键是动态资源分配和再分配。对于传统IaaS,我们提出了一种基于bin packing的节能资源分配策略。本文通过将节能资源分配问题转化为一个箱包模型,提出了一种精确的初始资源分配的节能意识方法。可用的虚拟机(虚拟机)采用改进版的最大最小调度技术,节省资金和资源。本研究的结果为比较和对比其他研究者提出的许多不同的资源分配方法提供了一个框架。高效的数据中心对云计算的重要性与日俱增。由于其不断扩大的规模和广泛的使用,功耗一直是一个主要问题。这项工作的首要目的是为资源分配创建既节能又考虑各种相关因素的模型和算法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MECHANISMS AND TOOLS USED FOR RESOURCE ALLOCATION IN THE CLOUD
Pay-as-you-go access to computer resources is a major selling point of the cloud computing model. Cloud tenants demand complete networking of their dedicated resources to simply implement network functions and services, in addition to the conventional computer resources. The flexibility and convenience of on-demand resource provisioning make cloud computing a compelling computing platform. The key to meeting fluctuating needs and maximizing return on investment from Cloud-supporting infrastructure is dynamic resource allocation and reallocation. For traditional IaaS, we offer an energy-efficient resource allocation strategy based on bin packing. In this paper, we present an accurate energy-conscious method for initial resource allocation by casting the issue of energy-efficient resource allocation as a bin-packing model. The available VMs (virtual machines) employ a modified version of the max-min scheduling technique, which saves money and resources. The results of this study give a framework for comparing and contrasting the many different resource distribution approaches that have been proposed by other researchers. The importance of efficient data centers for the cloud is growing. Power consumption has been a major problem due to its expanding size and widespread usage. The overarching purpose of this effort is to create models and algorithms for resource allocation that are both energy-efficient and take into account a variety of relevant factors
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