A Dynamic Hybrid Resource Provisioning Approach for Running Large-Scale Computational Applications on Cloud Spot and On-Demand Instances

Sifei Lu, Xiaorong Li, Long Wang, Henry Kasim, H. Palit, T. Hung, E. F. Legara, G. Lee
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引用次数: 20

Abstract

Testing and executing large-scale computational applications in public clouds is becoming prevalent due to cost saving, elasticity, and scalability. However, how to increase the reliability and reduce the cost to run large-scale applications in public clouds is still a big challenge. In this paper, we analyzed the pricing schemes of Amazon Elastic Compute Cloud (EC2) and found the disturbance effect that the price of the spot instances can be heavily affected due to the large number of spot instances required. We proposed a dynamic approach which schedules and runs large-scale computational applications on a dynamic pool of cloud computational instances. We use hybrid instances, including both on-demand instances for high priority tasks and backup, and spot instances for normal computational tasks so as to further reduce the cost without significantly increasing the completion time. Our proposed method takes the dynamic pricing of cloud instances into consideration, and it reduces the cost and tolerates the failures for running large-scale applications in public clouds. We conducted experimental tests and an agent based Scalable complex System modeling for Sustainable city (S3) application is used to evaluate the scalability, reliability and cost saving. The results show that our proposed method is robust and highly flexible for researchers and users to further reduce cost in real practice.
在云点和按需实例上运行大规模计算应用的动态混合资源供应方法
由于节省成本、弹性和可伸缩性,在公共云中测试和执行大规模计算应用程序变得越来越普遍。然而,如何提高可靠性并降低在公共云中运行大规模应用程序的成本仍然是一个很大的挑战。本文对Amazon Elastic Compute Cloud (EC2)的定价方案进行了分析,发现由于需要大量的现货实例,现货实例的价格会受到很大的影响。我们提出了一种动态的方法,在动态的云计算实例池上调度和运行大规模的计算应用程序。我们使用混合实例,包括用于高优先级任务和备份的按需实例,以及用于正常计算任务的spot实例,以便在不显著增加完成时间的情况下进一步降低成本。我们提出的方法考虑了云实例的动态定价,降低了在公共云中运行大规模应用程序的成本并容忍了失败。我们进行了实验测试,并使用基于agent的可扩展复杂系统模型对可持续城市(S3)应用的可扩展性、可靠性和成本节约进行了评估。结果表明,该方法鲁棒性好,具有较高的灵活性,在实际应用中可以进一步降低成本。
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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