Using Quantile Regression for Reclaiming Unused Cloud Resources While Achieving SLA

Jean-Emile Dartois, Anas Knefati, Jalil Boukhobza, Olivier Barais
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引用次数: 14

Abstract

Although Cloud computing techniques have reduced the total cost of ownership thanks to virtualization, the average usage of resources (e.g., CPU, RAM, Network, I/O) remains low. To address such issue, one may sell unused resources. Such a solution requires the Cloud provider to determine the resources available and estimate their future use to provide availability guarantees. This paper proposes a technique that uses machine learning algorithms (Random Forest, Gradient Boosting Decision Tree, and Long Short Term Memory) to forecast 24-hour of available resources at the host level. Our technique relies on the use of quantile regression to provide a flexible trade-off between the potential amount of resources to reclaim and the risk of SLA violations. In addition, several metrics (e.g., CPU, RAM, disk, network) were predicted to provide exhaustive availability guarantees. Our methodology was evaluated by relying on four in production data center traces and our results show that quantile regression is relevant to reclaim unused resources. Our approach may increase the amount of savings up to 20% compared to traditional approaches.
在实现SLA的同时使用分位数回归回收未使用的云资源
尽管由于虚拟化,云计算技术降低了总体拥有成本,但资源(例如CPU、RAM、网络、I/O)的平均使用率仍然很低。为了解决这个问题,可以出售未使用的资源。这样的解决方案要求云提供商确定可用的资源,并估计其未来的使用情况,以提供可用性保证。本文提出了一种使用机器学习算法(随机森林、梯度增强决策树和长短期记忆)来预测主机级24小时可用资源的技术。我们的技术依赖于分位数回归的使用,以在回收的潜在资源量和违反SLA的风险之间提供灵活的权衡。此外,几个指标(例如,CPU、RAM、磁盘、网络)被预测为提供详尽的可用性保证。我们的方法是通过依赖于四个生产数据中心跟踪来评估的,我们的结果表明分位数回归与回收未使用的资源有关。与传统方法相比,我们的方法可以节省高达20%的费用。
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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