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Spatio-temporal Patterns in Network Events

机译:网络事件中的时空模式

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摘要

Operational networks typically generate massive monitoring data that consist of local (in both space and time) observations of the status of the networks. It is often hypothesized that such data exhibit both spatial and temporal correlation based on the underlying network topology and time of occurrence; identifying such correlation patterns offers valuable insights into global network phenomena (e.g., fault cascading in communication networks). In this paper we introduce a new class of models suitable for learning, indexing, and identifying spatio-temporal patterns in network monitoring data. We exemplify our techniques with the application of fault diagnosis in enterprise networks. We show how it can help network management systems (NMSes) to eff ciently detect and localize potential faults (e.g., failure of routing protocols or network equipments) by analyzing massive operational event streams (e.g., alerts, alarms, and metrics). We provide results from extensive experimental studies over real network event and topology datasets to explore the eff cacy of our solution.
机译:运营网络通常会生成大量的监视数据,其中包括对网络状态的本地(在时间和空间上)观察。经常假设这样的数据基于潜在的网络拓扑和出现时间同时显示出空间和时间相关性。识别这种相关模式可提供对全球网络现象的宝贵见解(例如,通信网络中的故障级联)。在本文中,我们介绍了适用于学习,索引和识别网络监控数据中时空模式的一类新模型。我们以故障诊断在企业网络中的应用为例来说明我们的技术。我们将展示它如何通过分析大量的操作事件流(例如警报,警报和指标)来帮助网络管理系统(NMSes)有效地检测和定位潜在故障(例如路由协议或网络设备的故障)。我们提供了有关真实网络事件和拓扑数据集的广泛实验研究的结果,以探索我们解决方案的有效性。

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