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Compressive Sensing based Predictive Online Scheduling with Task Colocation in Cloud Data Center

机译:基于云数据中心任务枢头的基于压缩感测的预测网上调度

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With the growing size of the cloud data center, the high scheduling efficiency over massive-scale cloud servers is hard to achieve, particularly when the scheduler requires the full real-time cloud resource information for decision making. Moreover, most data centers only run latency-critical online services, resulting in low resource utilization. To solve these problems, we propose a Compressive Sensing based Predictive Online Scheduling (CSPOS) algorithm. To mitigate the bottleneck of transferring massive resource information of all cloud servers to the scheduler, we propose to transfer sampled data from a small subset of servers to the scheduler and recover the full cloud resource information by compressive sensing. We then propose a predictive online learning algorithm that efficiently colocates the online services and batch jobs, in order to boost the resource utilization of the data center. Our experiments show that the CSPOS model achieves outstanding scheduling efficiency under various settings and is able to greatly increase the resource usage of a data center. We also illustrate that the running time of the CSPOS model is very small and has negligible effects on the scheduling system.
机译:随着云数据中心的规模不断壮大,在巨大的规模云服务器的调度效率高是很难实现的,特别是当调度需要决策的全实时云资源的信息。此外,大多数的数据中心只运行延迟关键的在线服务,造成资源利用率低。为了解决这些问题,我们提出了一个基于压缩感知预测在线调度(CSPOS)算法。为了减轻所有的云服务器的海量资源信息传送到调度的瓶颈,我们建议通过压缩感知,从服务器的一小部分传输采样数据进行调度,并收回全部的云资源的信息。然后,我们提出了一个预测在线学习算法,有效地colocates在线服务和批处理作业,以提高数据中心的资源利用率。我们的实验表明,CSPOS模式下的各种设置,实现了卓越的调度效率,并能大大提高数据中心的资源使用情况。我们还表明,该CSPO​​S模型的运行时间是非常小的,具有调度系统的影响可以忽略。

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