点云资源的自主供应与应用映射

Daniel J. Dubois, G. Casale
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引用次数: 13

摘要

现货实例模型是一种虚拟机定价方案,其中云提供商的未使用资源被提供给出价最高的人。这导致现货价格的形成,现货价格的波动可以决定客户被其他用户出价过高,从而失去他们租用的虚拟机。在本文中,我们提出了一种启发式方法来自动决策:(i)为了运行云应用程序而租用哪些资源和多少资源,(ii)如何将应用程序组件映射到租用的资源,以及(iii)使用什么现货价格来最小化总投标价格,同时保持可接受的性能水平。为了驱动决策,我们的算法将应用程序的多类排队网络模型与描述现货价格随机演变及其对虚拟机可靠性影响的马尔可夫模型相结合。通过使用为真实企业应用程序开发的模型和Amazon EC2现货实例价格的历史轨迹,我们展示了我们的启发式方法找到的低成本解决方案确实能保证所需的性能水平。我们的启发式方法的性能与非线性规划的性能进行了比较,并显示出明显加快了寻找低成本最优解的速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomic Provisioning and Application Mapping on Spot Cloud Resources
The spot instance model is a virtual machine pricing scheme in which unused resources of cloud providers are offered to the highest bidder. This leads to the formation of a spot price, whose fluctuations can determine customers to be overbid by other users and lose the virtual machine they rented. In this paper we propose a heuristic to automate the decision on: (i) which and how many resources to rent in order to run a cloud application, (ii) how to map the application components to the rented resources, and (iii) what spot price bids to use in order to minimize the total bid price while maintaining an acceptable level of performance. To drive the decision making, our algorithm combines a multi-class queueing network model of the application with a Markov model that describes the stochastic evolution of the spot price and its influence on virtual machine reliability. We show, using a model developed for a real enterprise application and historical traces of the Amazon EC2 spot instance prices, that our heuristic finds low cost solutions that indeed guarantee the required levels of performance. The performance of our heuristic method is compared to that of nonlinear programming and shown to markedly accelerate the finding of low-cost optimal solutions.
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