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Modeling Job Arrivals in a Data-Intensive Grid

机译:在数据密集型网格中为作业到达建模

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In this paper we present an initial analysis of job arrivals in a production data-intensive Grid and investigate several traffic models to characterize the interarrival time processes. Our analysis focuses on the heavy-tail behavior and autocorrelation structures, and the modeling is carried out at three different levels: Grid, Virtual Organization (VO), and region. A set of m-state Markov modulated Poisson processes (MMPP) is investigated, while Poisson processes and hyperex-ponential renewal processes are evaluated for comparison studies. We apply the transportation distance metric from dynamical systems theory to further characterize the differences between the data trace and the simulated time series, and estimate errors by bootstrapping. The experimental results show that MMPPs with a certain number of states are successful to a certain extent in simulating the job traffic at different levels, fitting both the interarrival time distribution and the autocorrelation function. However, MMPPs are not able to match the autocorrelations for certain Vos, in which strong deterministic semi-periodic patterns are observed. These patterns are further characterized using different representations. Future work is needed to model both deterministic and stochastic components in order to better capture the correlation structure in the series.
机译:在本文中,我们对生产数据密集型网格中的工作到达进行了初步分析,并研究了几种交通模型来描述到达时间过程。我们的分析着重于重尾行为和自相关结构,并且在三个不同级别上进行建模:网格,虚拟组织(VO)和区域。研究了一组m状态马氏调制泊松过程(MMPP),同时评估了泊松过程和超指数更新过程以进行比较研究。我们应用动力学系统理论中的运输距离度量来进一步表征数据跟踪和模拟时间序列之间的差异,并通过自举估计误差。实验结果表明,具有一定数量状态的MMPPs在一定程度上成功地模拟了不同级别的工作量,同时满足了到达间隔时间分布和自相关函数。但是,MMPP不能匹配某些Vos的自相关,在其中观察到强确定性半周期模式。使用不同的表示进一步表征这些模式。为了更好地捕获序列中的相关结构,需要进一步的工作来对确定性和随机成分进行建模。

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