具有截止日期和预算限制的云自动扩展

Ming Mao, Jie Li, M. Humphrey
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引用次数: 336

摘要

云已经成为一个有吸引力的计算平台,它提供按需计算能力和存储容量。它的动态可伸缩性使用户能够根据业务量、性能需求和其他动态行为快速扩展和缩减底层基础设施。然而,当考虑到计算实例的非确定性获取时间、多个VM实例类型、独特的云计费模型和用户预算约束时,挑战就出现了。以更低的成本为用户所需的性能规划足够的计算资源,这也可以自动适应工作负载的变化,这不是一个简单的问题。在本文中,我们提出了一种基于工作负载信息和性能需求的云计算自动扩展机制。我们的机制安排VM实例启动和关闭活动。它使云应用程序能够通过控制底层实例数在截止日期内完成提交的作业,并通过选择适当的实例类型降低用户成本。我们已经在Windows Azure平台上实现了我们的机制,并使用模拟和真实的科学云应用程序对其进行了评估。结果表明,我们的云自动扩展机制能够以较低的成本满足用户指定的性能目标。
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Cloud auto-scaling with deadline and budget constraints
Clouds have become an attractive computing platform which offers on-demand computing power and storage capacity. Its dynamic scalability enables users to quickly scale up and scale down underlying infrastructure in response to business volume, performance desire and other dynamic behaviors. However, challenges arise when considering computing instance non-deterministic acquisition time, multiple VM instance types, unique cloud billing models and user budget constraints. Planning enough computing resources for user desired performance with less cost, which can also automatically adapt to workload changes, is not a trivial problem. In this paper, we present a cloud auto-scaling mechanism to automatically scale computing instances based on workload information and performance desire. Our mechanism schedules VM instance startup and shut-down activities. It enables cloud applications to finish submitted jobs within the deadline by controlling underlying instance numbers and reduces user cost by choosing appropriate instance types. We have implemented our mechanism in Windows Azure platform, and evaluated it using both simulations and a real scientific cloud application. Results show that our cloud auto-scaling mechanism can meet user specified performance goal with less cost.
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