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Self-Correlating Predictive Information Tracking for Large-Scale Production Systems

机译:大型生产系统的自相关预测信息跟踪

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Automatic management of large-scale production systems requires a continuous monitoring service to keep track of the states of the managed system. However, it is challenging to achieve both scalability and high information precision while continuously monitoring a large amount of distributed and time-varying metrics in large-scale production systems. In this paper, we present a new self-correlating, predictive information tracking system called In-foTrack, which employs lightweight temporal and spatial correlation discovery methods to minimize continuous monitoring cost. InfoTrack combines both metric value prediction within individual nodes and adaptive clustering among distributed nodes to suppress remote information update in distributed system monitoring. We have implemented a prototype of the InfoTrack system and deployed the system on the PlanetLab. We evaluated the performance of the InfoTrack system using both real system traces and micro-benchmark prototype experiments. The experimental results show that InfoTrack can reduce the continuous monitoring cost by 50-90% while maintaining high information precision(i.e., within 0.01-0.05 error bound).
机译:大规模生产系统的自动管理需要连续监控服务以跟踪受管系统的状态。然而,实现可扩展性和高信息精度,同时在大规模生产系统中连续监测大量分布式和时变量的度量来挑战。在本文中,我们提出了一种新的自相关,预测信息跟踪系统,称为-FOTRACK,其采用轻量级的时间和空间相关发现方法来最小化连续监测成本。 InfoTrack在分布式节点中的各个节点和自适应群集中结合了度量值预测,以抑制分布式系统监视中的远程信息更新。我们已经实现了InfoTrack系统的原型,并在PlanetLab上部署了系统。我们使用真实系统迹线和微基准原型实验评估了InfoTrack系统的性能。实验结果表明,InfoTrack可以减少50-90%的连续监测成本,同时保持高信息精度(即,0.01-0.05内的错误绑定)。

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