配置动态需求下云接入策略

Merve Unuvar, Y. Doganata, A. Tantawi
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引用次数: 5

摘要

我们考虑了在云环境中允许具有随机资源需求的虚拟机(vm)集合到物理机(pm)上的问题。目标是在不确定的负载条件下实现与资源过度利用概率相关的指定服务质量,同时最小化VM请求的拒绝概率。提出了一种基于估算项目总资源需求概率分布和过度利用概率的方法。我们将我们的方法与两种简单的录取政策进行比较:基于最大需求的录取和基于平均需求的录取。我们研究了在模拟云环境中使用我们的方法的结果的效率,我们分析了各种参数(承诺因子,变异系数等)对高变量需求解决方案的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Configuring Cloud Admission Policies under Dynamic Demand
We consider the problem of admitting sets of, possibly heterogenous, virtual machines (VMs) with stochastic resource demands onto physical machines (PMs) in a Cloud environment. The objective is to achieve a specified quality-of-service related to the probability of resource over-utilization in an uncertain loading condition, while minimizing the rejection probability of VM requests. We introduce a method which relies on approximating the probability distribution of the total resource demand on PMs and estimating the probability of over-utilization. We compare our method to two simple admission policies: admission based on maximum demand and admission based on average demand. We investigate the efficiency of the results of using our method on a simulated Cloud environment where we analyze the effects of various parameters (commitment factor, coefficient of variation etc.) on the solution for highly variate demands.
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