云环境下的资源优化分配

Fangzhe Chang, J. Ren, R. Viswanathan
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引用次数: 116

摘要

云平台使企业能够以虚拟机的形式租用计算能力。对于这样的企业用户来说,一个重要的问题是了解云计算需要多少虚拟机以及需要哪种类型的虚拟机。我们将对计算能力和其他资源的需求表述为具有多重性的资源分配问题,其中必须并发执行的计算表示为任务,后一个任务可以重用前一个任务释放的资源。我们证明了找到最小化分配是np完全的。本文提出了一种近似算法,并证明了它的近似界在多项式时间内能产生接近最优解。企业用户可以利用该解决方案来降低租赁成本并分摊管理开销(例如,设置vpn或配置集群)。云提供商可以利用该解决方案在大量用户之间共享其资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Resource Allocation in Clouds
Cloud platforms enable enterprises to lease computing power in the form of virtual machines. An important problem for such enterprise users is to understand how many and what kinds of virtual machines will be needed from clouds. We formulate demand for computing power and other resources as a resource allocation problem with multiplicity, where computations that have to be performed concurrently are represented as tasks and a later task can reuse resources released by an earlier task. We show that finding a minimized allocation is NP-complete. This paper presents an approximation algorithm with a proof of its approximation bound that can yield close to optimum solutions in polynomial time. Enterprise users can exploit the solution to reduce the leasing cost and amortize the administration overhead (e.g., setting up VPNs or configuring a cluster). Cloud providers may utilize the solution to share their resources among a larger number of users.
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