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Spot-on for Timed instances: Striking a Balance between Spot and On-demand Instances

机译:定时实例发现:在现货和按需实例之间击中平衡

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Infrastructure as a Service (IaaS) providers currently have no knowledge of the time frame customers intend to lease resources. However, scheduling in the absence of lease time information leads to wasted resources in times of decreasing demand. We explore how IaaS providers can use lease times to optimize resource allocation. We present two virtual machine scheduling algorithms to optimize the virtual-to-physical machine mapping taking lease time into account. Through simulation with synthetic and real-world workloads we evaluate the algorithms' potential to reduce the number of powered-up physical machines. Depending on data center size and request distribution the cumulative machine uptime is reduced by 28.4% to 51.5% when compared to round robin scheduling and by 3.3% to 16.7% when compared to first fit. Using a real-world workload from Google we achieve savings of 36.7% and 9.9% compared against round robin and first fit, respectively.
机译:作为服务的基础设施(IAAS)提供商目前不了解时框架客户打算租赁资源的时间。 然而,在没有租赁时间信息的情况下调度导致需求减少的资源浪费。 我们探索IAAS提供商如何使用租赁时间来优化资源分配。 我们展示了两个虚拟机调度算法,以优化租用时间的虚拟到物理机器映射。 通过综合和现实世界工作负载的仿真,我们评估算法的潜力,以减少上电物理机的数量。 根据数据中心尺寸和请求分配,与第一次适合相比,累计机器正常运行时间减少了28.4%至51.5%。 使用来自谷歌的真实工作量,我们可以分别达到36.7%和9.9%的节省,分别与循环罗宾和第一次适合相比。

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