大规模分布式隐蔽环境中的流监测

M. Lassnig, T. Fahringer, V. Garonne, A. Molfetas, M. Branco
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引用次数: 6

摘要

我们提出了一种概率跟踪方法,可以捕获大规模分布式应用程序的用户和系统行为。我们的方法扩展了数据流监控的概念,使其在我们定义的隐藏环境中工作。详细介绍了该方法的概念设计和实现。此外,我们还评估了跟踪方法在真实的pb级分布式数据管理系统中的可扩展性。最后,我们将在三种场景中演示所收集的跟踪数据的有用性。首先,我们使用收集的跟踪数据来检查用户事件的到达并找到自相似的过程。其次,我们研究了并发请求下网格中大容量存储系统的行为和性能。第三,我们开发了一个基于历史数据的用户事件到达预测模型。我们的结果表明,概率跟踪方法是可扩展的,可以直接与现有应用程序集成,并提供对非常大规模应用程序行为的有用见解。
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Stream Monitoring in Large-Scale Distributed Concealed Environments
We present a probabilistic tracing method that captures both user and system behaviour for large-scale distributed applications. Our method extends the notion of data stream monitoring to work within what we define as concealed environments. We detail the conceptual design and implementation of our method. Additionally, we evaluate the scalability of the tracing method in a real petabyte-scale distributed data management system. Finally, we demonstrate the usefulness of the collected trace data in three scenarios. First, we use collected trace data to examine the arrival of user events and find self-similar processes. Second, we examine the behaviour and performance of mass storage systems in a grid under concurrent requests. Third, we develop a model for prediction of user event arrivals based on historical data. Our results suggest that a probabilistic tracing method is scalable, straightforward to integrate with existing applications, and provides useful insight into the behaviour of very large-scale applications.
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