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首页> 外文期刊>SIGKDD explorations >RainMon: An Integrated Approach to Mining Bursty Timeseries Monitoring Data
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RainMon: An Integrated Approach to Mining Bursty Timeseries Monitoring Data

机译:RainMon:一种用于采集突发时间序列监视数据的集成方法

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摘要

Metrics like disk activity and network traffic are widespread sources of diagnosis and monitoring information in datacenters and networks. However, as the scale of these systems increases, examining the raw data yields diminishing insight. We present RainMon, a novel end-to-end approach for mining Time-series monitoring data designed to handle its size and unique characteristics. Our system is able to (a) mine large, bursty, real-world monitoring data, (b) find significant trends and anomalies in the data, (c) compress the raw data effectively, and (d) estimate trends to make forecasts. Furthermore, RainMon integrates the full analysis process from data storage to the user interface to provide accessible long-term diagnosis. We apply RainMon to three real-world datasets from production systems and show its utility in discovering anomalous machines and time periods.
机译:磁盘活动和网络流量等指标是数据中心和网络中诊断和监视信息的广泛来源。但是,随着这些系统规模的扩大,检查原始数据会减少洞察力。我们展示RainMon,这是一种新颖的端到端方法,用于挖掘时间序列监视数据,旨在处理其大小和独特特征。我们的系统能够(a)挖掘大型的,突发的,真实的监视数据,(b)在数据中发现明显的趋势和异常,(c)有效地压缩原始数据,以及(d)估算趋势以进行预测。此外,RainMon集成了从数据存储到用户界面的完整分析过程,以提供可访问的长期诊断。我们将RainMon应用于生产系统中的三个真实世界的数据集,并展示了其在发现异常机器和时间段方面的效用。

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