Automatic Anomaly Detection in the Cloud Via Statistical Learning
Jordan Hochenbaum, Owen S. Vallis, Arun Kejariwal

TL;DR
This paper introduces two novel statistical learning techniques for automatic anomaly detection in cloud infrastructure data, effectively handling seasonal and trend components in time series for improved high availability and performance.
Contribution
The paper presents new statistical methods employing seasonal decomposition and robust metrics for anomaly detection in cloud service metrics, addressing challenges in social network data.
Findings
Effective detection of anomalies in production cloud data
High precision and recall in capacity planning scenarios
Robust performance in user behavior analysis
Abstract
Performance and high availability have become increasingly important drivers, amongst other drivers, for user retention in the context of web services such as social networks, and web search. Exogenic and/or endogenic factors often give rise to anomalies, making it very challenging to maintain high availability, while also delivering high performance. Given that service-oriented architectures (SOA) typically have a large number of services, with each service having a large set of metrics, automatic detection of anomalies is non-trivial. Although there exists a large body of prior research in anomaly detection, existing techniques are not applicable in the context of social network data, owing to the inherent seasonal and trend components in the time series data. To this end, we developed two novel statistical techniques for automatically detecting anomalies in cloud infrastructure…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Network Security and Intrusion Detection · Time Series Analysis and Forecasting
