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Learning from Cloud latency measurements

机译:从云延迟测量学习

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摘要

Measuring, understanding, troubleshooting and optimizing various aspects of a Cloud Service hosted in remote data centers is a vital, but non-trivial task. Carefully arranged and analyzed periodic measurements of Cloud-Service latency can provide strong insights into the service performance. A Cloud Service may exhibit latency and jitter which may be a compound result of various components of the remote computation and intermediate communication. We present methods for automated detection and interpretation of suspicious events within the multi-dimensional latency time series obtained by CLAudit, the previously presented planetary-scale Cloud-Service evaluation tool. We validate these methods of unsupervised learning and analyze the most frequent Cloud-Service performance degradations.
机译:测量,理解,故障排除和优化远程数据中心托管的云服务的各个方面是一个重要但非琐碎的任务。仔细安排和分析的周期性测量云服务延迟可以为服务性能提供强烈的见解。云服务可以表现出延迟和抖动,其可以是远程计算和中间通信的各种组件的复合结果。我们提出了通过Claudit获得的多维延迟时间序列内的自动检测和解释可疑事件的方法,先前呈现了行星级云服务评估工具。我们验证了这些无监督学习的方法,并分析了最常见的云服务性能下降。

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