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首页> 外文期刊>IEEE Transactions on Software Engineering >Optimizing Ordered Throughput Using Autonomic Cloud Bursting Schedulers
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Optimizing Ordered Throughput Using Autonomic Cloud Bursting Schedulers

机译:使用自主云突发调度程序优化有序吞吐量

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摘要

Optimizing ordered throughput not only improves the system efficiency but also makes cloud bursting transparent to the user. This is critical from the perspective of user fairness in customer-facing systems, correctness in stream processing systems, and so on. In this paper, we consider optimizing ordered throughput for near real-time, data-intensive, independent computations using cloud bursting. Intercloud computation of data-intensive applications is a challenge due to large data transfer requirements, low intercloud bandwidth, and best-effort traffic on the Internet. The system model we consider is comprised of two processing stages. The first stage uses cloud bursting opportunistically for parallel processing, while the second stage (sequential) expects the output of the first stage to be in the same order as the arrival sequence. We propose three scheduling heuristics as part of an autonomic cloud bursting approach that adapt to changing workload characteristics, variation in bandwidth, and available resources to optimize ordered throughput. We also characterize the operational regimes for cloud bursting as stabilization mode versus acceleration mode, depending on the workload characteristics like the size of data to be transferred for a given compute load. The operational regime characterization helps in deciding how many instances can be optimally utilized in the external cloud.
机译:优化有序吞吐量不仅可以提高系统效率,还可以使云爆发对用户透明。从面向客户的系统中的用户公平性,流处理系统中的正确性等角度来看,这是至关重要的。在本文中,我们考虑使用云猝发为近实时,数据密集型,独立计算优化有序吞吐量。由于数据传输需求大,云间带宽低以及Internet上的尽力而为流量,数据密集型应用程序的跨云计算是一个挑战。我们考虑的系统模型包括两个处理阶段。第一级将机会使用云爆发进行并行处理,而第二级(顺序)则期望第一级的输出与到达序列的顺序相同。我们提出了三种调度试探法,作为自主云突发方法的一部分,以适应不断变化的工作负载特征,带宽变化和可用资源,以优化有序吞吐量。我们还将工作负载特征(如要为给定计算负载传输的数据大小)表征为云爆发的操作方式为稳定模式与加速模式。操作方案表征有助于确定可以在外部云中最佳利用多少实例。

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