Self-Adaptive Cloud Capacity Planning

Yexi Jiang, Chang-Shing Perng, Tao Li, Rong N. Chang
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引用次数: 53

Abstract

The popularity of cloud service spurs the increasing demands of cloud resources to the cloud service providers. Along with the new business opportunities, the pay-as-you-go model drastically changes the usage pattern and brings technology challenges to effective capacity planning. In this paper, we propose a new method for cloud capacity planning with the goal of fully utilizing the physical resources, as we believe this is one of the emerging problems for cloud providers. To solve this problem, we present an integrated system with intelligent cloud capacity prediction. Considering the unique characteristics of the cloud service that virtual machines are provisioned and de-provisioned frequently to meet the business needs, we propose an asymmetric and heterogeneous measure for modeling the over-estimation, and under-estimation of the capacity. To accurately forecast the capacity, we first divide the change of cloud capacity demand into provisioning and de-provisioning components, and then estimate the individual components respectively. The future provisioning demand is predicted by an ensemble time-series prediction method, while the future de-provisioning is inferred based on the life span distribution and the number of active virtual machines. Our proposed solution is simple and computational efficient, which make it practical for development and deployment. Our solution also has the advantages for generating interpretable predictions. The experimental results on the IBM Smart Cloud Enterprise trace data demonstrate the effectiveness, accuracy and efficiency of our solution.
自适应云容量规划
随着云服务的普及,云服务提供商对云资源的需求也在不断增加。随着新的业务机会的出现,即用即付模式极大地改变了使用模式,并为有效的容量规划带来了技术挑战。在本文中,我们提出了一种新的云容量规划方法,其目标是充分利用物理资源,因为我们认为这是云提供商面临的新问题之一。为了解决这一问题,我们提出了一个集成的智能云容量预测系统。考虑到云服务为满足业务需求而频繁地提供和取消虚拟机的独特特征,我们提出了一种非对称的异构度量方法来对容量的高估和低估进行建模。为了准确预测容量,我们首先将云容量需求的变化划分为预置和去预置组件,然后分别对各个组件进行估计。通过集成时间序列预测方法预测未来的供应需求,而根据生命周期分布和活动虚拟机数量推断未来的取消供应。我们提出的解决方案简单且计算效率高,这使得它在开发和部署中具有实用性。我们的解决方案还具有生成可解释预测的优点。在IBM智能云企业跟踪数据上的实验结果验证了该方案的有效性、准确性和高效性。
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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