使用基于模式的预测来处理突发数据流的资源管理

Ioannis Boutsis, V. Kalogeraki
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引用次数: 1

摘要

近年来,我们目睹了分布式流处理系统的激增,这些系统需要高效地运行,即使在数据爆发时也是如此。例子包括道路交通网络、金融信息处理、网络监控和实时传感器数据分析系统。管理这些系统的一个重要挑战是有效的资源管理和满足流处理应用程序在不同工作负载条件下(甚至在突发情况下)的QoS需求。在本文中,我们提出了我们的方法,旨在通过考虑突发的影响和流处理系统的典型工作负载来预测分布式流处理应用程序的执行时间。我们的方法在运行时构建应用程序数据速率模式,并预测突发对应用程序性能的影响,以确定是否需要在突发发生时做出反应。我们在Synergy中间件上的详细实验结果表明,我们的方法是实用的,具有良好的性能和较低的资源开销。
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Resource management using pattern-based prediction to address bursty data streams
In the recent years we have witnessed a proliferation of distributed stream processing systems that need to operate efficiently, even when data bursts occur. Examples include road traffic networks, processing of financial feeds, network monitoring and real-time sensor data analysis systems. An important challenge in managing these systems is effective resource management and meeting the QoS demands of the stream processing applications under different workload conditions, even under bursts. In this paper we present our approach that aims to predict the execution times of the distributed stream processing applications by taking into account the effects of the bursts and what is the typical workload of the stream processing system. Our approach builds application data rate patterns at run-time and predicts the effect of the burst on the performance of the applications, to identify whether there is a need to react on the onset of a burst. Our detailed experimental results over our Synergy middleware illustrate that our approach is practical, depicts good performance and has low resource overhead.
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