Cloud bursting approach based on predicting requests for business-critical web systems

Yukio Ogawa, G. Hasegawa, M. Murata
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引用次数: 9

Abstract

Cloud bursting temporarily expands the capacity of cloud-based service hosted in a private data center by renting public data center capacity when the demand for capacity spikes. This paper presents a cloud bursting approach based on long- and short-term predictions of requests to a business-critical web system to determine the optimal resources of the system deployed over private and public data centers. In a private data center, a dedicated pool of virtual machines (VMs) is assigned to the web system on the basis of one-week predictions. Moreover, in both private and public data centers, VMs are activated on the basis of one-hour predictions. We formulated a problem that includes the total cost and response time constraints and conducted numerical simulations. The results indicate that our approach is tolerant of prediction errors. Even if the website receives bursty requests and one-hour predictions include a mean absolute percentage error (MAPE) of 0.2, the total cost decreases to a half the current cost while 95% of response time is kept below 0.15 s.
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基于预测关键业务web系统请求的云爆发方法
云爆发通过在容量需求激增时租用公共数据中心容量,暂时扩展托管在私有数据中心的基于云的服务的容量。本文提出了一种基于对业务关键型web系统请求的长期和短期预测的云爆发方法,以确定在私有和公共数据中心部署的系统的最佳资源。在私有数据中心中,根据一周的预测为web系统分配一个专用的虚拟机池。此外,在私有和公共数据中心中,虚拟机都是根据一小时的预测来激活的。我们制定了一个包含总成本和响应时间约束的问题,并进行了数值模拟。结果表明,我们的方法对预测误差具有一定的容忍度。即使网站收到突发请求,并且一小时预测包含0.2的平均绝对百分比误差(MAPE),总成本也会降低到当前成本的一半,而95%的响应时间保持在0.15秒以下。
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