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An Instance Reservation Framework for Cost Effective Services in Geo-Distributed Data Centers

机译:地理分布式数据中心的具有成本效益服务的实例预订框架

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Infrastructure-as-a-Service clouds in geo-distributed data centers offer various pricing options, including on-demand and reserved instances, which provide an elastic and cost-effective infrastructure to support High Performance Computing (HPC) applications. In this paper, we propose an instance reservation based cloud service framework, modeling the cost-minimizing reservation decision issue as an NP-hard integer programming problem for distributed data centers. To ease its computation complexity, two algorithms are proposed to minimize the HPC service cost with the worst-case performance guarantees: an offline heuristic-greedy algorithm, and a rolling-horizon based online algorithm when only short-term demand prediction is available. Facing fluctuating demands, instance reservation in a single data center may incur the highly underutilized capacity. To address this issue for further cost reduction, we extend the scheme with a novel cloud broker federation based resource sharing mechanism, reallocating already reserved but unused instances to computation-intensive and short-lived tasks for continuous execution without interruption. Extensive evaluations driven by large-scale trace-based datasets demonstrate that the proposed mechanism can effectively handle large volumes of service requests, saving considerable service costs with higher reservation resource utilization.
机译:地理分布式数据中心中的基础架构 - AS-Service云提供各种定价选项,包括按需和保留的实例,它提供了一种弹性和经济高效的基础架构,以支持高性能计算(HPC)应用程序。在本文中,我们提出了基于实例预约的云服务框架,将成本最小化预留决策问题建模为分布式数据中心的NP-Hard整数编程问题。为了简化其计算复杂性,提出了两种算法,以使HPC服务成本最大限度地利用最坏情况的性能保证:脱机启发式 - 贪婪算法,以及仅当仅提供短期需求预测时基于滚动的在线算法。面对波动的需求,单个数据中心中的实例预留可能会产生高度未充分的能力。为了解决此问题,以便进一步降低成本,我们将该方案扩展了基于新的云代理联合资源共享机制,重新分配已经保留但未使用的实例,以便在不间断地进行连续执行的计算密集型和短暂的任务。大规模基于基于基于基于的数据集驱动的广泛评估表明,该机制可以有效处理大量的服务请求,节省了相当大的维护资源利用率。

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