Modeling Job Arrival Process with Long Range Dependence and Burstiness Characteristics

T. Minh, L. Wolters
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引用次数: 13

Abstract

Workload modeling plays a significant role in performance evaluation of large-scale parallel systems such as clusters and grids. It helps to generate synthetic workloads which capture some dominant characteristics of traces (real workloads). Modeling job arrival process is an essential part of workload modeling. Although a job arrival process has many important characteristics such as long range dependence (LRD) and burstiness, most researchers, for simplicity, assume it as a poisson process in their evaluation work. Furthermore, there is currently almost no research focusing on both LRD and burstiness at the same time according to our investigation. With respect to this research trend, the multifractal wavelet model (MWM) recently has been introduced as a good choice to yield LRD for a job arrival process. Though LRD is well controlled, we observe that a job arrival process produced by MWM does not keep burstiness. In this paper, we present our study on modifying MWM so that not only LRD but also burstiness are kept in the job arrival process. In addition, our modification also fits the marginal distribution better than MWM.
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具有长距离依赖性和突发性特征的工作到达过程建模
负载建模在集群和网格等大规模并行系统的性能评估中起着重要的作用。它有助于生成合成的工作负载,这些工作负载捕获轨迹的一些主要特征(实际工作负载)。作业到达过程建模是工作量建模的重要组成部分。虽然工作到达过程具有长距离依赖性和突发性等重要特征,但为了简单起见,大多数研究者在评价工作中都将其假设为泊松过程。此外,根据我们的调查,目前几乎没有同时关注LRD和爆发的研究。针对这一研究趋势,最近引入了多重分形小波模型(MWM)作为作业到达过程产生LRD的良好选择。虽然LRD得到了很好的控制,但我们观察到MWM产生的作业到达过程并不保持突发性。在本文中,我们研究了如何修改MWM,使其在作业到达过程中既保持LRD,又保持突发性。此外,我们的修正也比MWM更适合边际分布。
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