在IaaS云环境中,为资源过度使用提供预测分析

R. Ghosh, V. Naik
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引用次数: 66

摘要

云服务提供商一直在寻找增加收入和降低成本的方法,要么减少容量需求,要么在不增加容量的情况下支持更多用户。过度使用物理资源而不增加更多容量就是这样一种方法。趋向于“峰值”的工作负载是过度提交的特别有吸引力的目标,因为这些工作负载只是偶尔使用它们有权使用的所有系统资源。候选工作负载的在线识别和风险的量化是与过度使用资源相关的两个关键问题。在本文中,为了估计与过度提交相关的风险,我们描述了一种基于对一组工作负载的总资源使用行为的统计分析的机制。使用从内部私有云收集的CPU使用数据,我们证明了我们提出的方法是有效和实用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biting Off Safely More Than You Can Chew: Predictive Analytics for Resource Over-Commit in IaaS Cloud
Cloud service providers are constantly looking for ways to increase revenue and reduce costs either by reducing capacity requirements or by supporting more users without adding capacity. Over-commit of physical resources, without adding more capacity, is one such approach. Workloads that tend to be 'peaky' are especially attractive targets for over-commit since only occasionally such workloads use all the system resources that they are entitled to. Online identification of candidate workloads and quantification of risks are two key issues associated with over-committing resources. In this paper, to estimate the risks associated with over-commit, we describe a mechanism based on the statistical analysis of the aggregate resource usage behavior of a group of workloads. Using CPU usage data collected from an internal private Cloud, we show that our proposed approach is effective and practical.
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