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Deadline constrained scheduling in hybrid clouds with Gaussian processes

机译:具有高斯过程的混合云中的最后期限约束调度

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In hybrid clouds, deciding which workloads to outsource and at what time is far from trivial. The objective of this decision is to maximize the utilization of the internal data center and to minimize outsourcing. Neither all tasks' runtime nor their issue time are known in advance. However, a majority of tasks are always issued automatically during the day, e.g. common batch jobs. This work presents experimental results on different optimization strategies for cost-optimal dynamic scheduling in hybrid cloud environments. We estimate task execution times as random variables over day time from past observations using Heteroscedastic Gaussian Processes (HGP). HGP are suitable in particular for the presented scheduling problem because they not only provide an estimation of a task's mean runtime (as given by standard regression methods), but also the certainty of this estimation. We show that HGP provide an intuitive framework to model a variety of different distributions. The overall results are similar to optimization results with the unknown generating distribution.
机译:在混合云中,决定要外包哪些工作负载以及在什么时候进行外包并非易事。该决策的目的是最大程度地利用内部数据中心,并最大程度地减少外包。既不是所有任务的运行时,也不是它们的发布时间是事先知道的。但是,大多数任务总是在一天中自动发出,例如普通批处理作业。这项工作提出了针对混合云环境中成本最优动态调度的不同优化策略的实验结果。我们使用异方差高斯过程(HGP)从过去的观察中将任务执行时间估计为一天中的随机变量。 HGP特别适合于所提出的调度问题,因为它们不仅提供了任务平均运行时间的估计(如标准回归方法所给出的),而且还提供了这种估计的确定性。我们证明HGP提供了一个直观的框架来对各种不同的分布进行建模。总体结果类似于具有未知发电分布的优化结果。

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