高聚类:通过分层聚类对云延迟测量的无监督分析

Pavol Mulinka, P. Casas, L. Kencl
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引用次数: 4

摘要

延迟是当今反映最终用户体验的最相关的网络和服务性能指标之一。随着对延迟敏感的应用在云中(如游戏、交互式视频会议、企业服务等)的广泛采用和部署,对云服务延迟的监控和分析对云服务提供商、租户甚至用户来说变得越来越重要。传统的基于时间序列分析和阈值的网络监测方法能够在异常事件发生时发出警报,但不适用于检测多个被监测维度之间的相关性,而这对于提供足够的异常解释是必要的。在本文中,我们提出了Hi-Clust,这是一种基于无监督的方法,通过应用分层聚类技术来分析和解释多维网络数据中的异常。虽然hi - cluster适用于分析不同类型的嵌套或分层结构数据,但我们特别关注云服务延迟的分析,使用从地理分布的有利位置收集的主动测量数据。在为期四周的真实多维云服务延迟测量中,我们为hi - cluster实现了多个基于密度的集群方法,并对其进行了基准测试。使用基准测试中最强大的底层聚类算法,我们展示了如何使用hi - cluster自动提取和解释异常云服务行为。此外,通过收集到的测量数据的实际示例,我们展示了hi - cluster在检测和解释异常行为方面优于传统的基于阈值的方法的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hi-Clust: Unsupervised Analysis of Cloud Latency Measurements Through Hierarchical Clustering
Latency is nowadays one of the most relevant network and service performance metrics reflecting end-user experience. With the wide adoption and deployment of delay-sensitive applications in the Cloud (e.g., gaming, interactive video conferencing, corporate services, etc.), monitoring and analysis of Cloud service latency is becoming increasingly relevant for Cloud service providers, tenants and even users. Traditional network monitoring approaches based on time-series analysis and thresholding are capable of raising alarms when anomalous events arise, but are not applicable to detect correlations among multiple monitored dimensions, necessary to provide an adequate interpretation of an anomaly. In this paper we present Hi-Clust, an unsupervised-based approach for analyzing and interpreting anomalies in multi-dimensional network data, through the application of hierarchical clustering techniques. While Hi-Clust is applicable to the analysis of different types of nested or hierarchically structured data, we particularly focus on the analysis of Cloud service latency, using active measurements collected from geographically distributed vantage points. We implement and benchmark multiple density-based clustering approaches for Hi-Clust over four weeks of real multidimensional Cloud service latency measurements. Using the most robust underlying clustering algorithm from the benchmark, we show how to automatically extract and interpret anomalous Cloud service behavior with Hi-Clust. In addition, we show the advantages of Hi-Clust over traditional threshold-based approaches for detecting and interpreting anomalous behavior, through practical examples over the collected measurements.
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