LLM Assisted Anomaly Detection Service for Site Reliability Engineers: Enhancing Cloud Infrastructure Resilience
This paper introduces a scalable Anomaly Detection Service with a generalizable API tailored for industrial time-series data, designed to assist Site Reliability Engineers (SREs) in managing cloud infrastructure. The service enables efficient anomaly detection in complex data streams, supporting pro...
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Zusammenfassung: | This paper introduces a scalable Anomaly Detection Service with a
generalizable API tailored for industrial time-series data, designed to assist
Site Reliability Engineers (SREs) in managing cloud infrastructure. The service
enables efficient anomaly detection in complex data streams, supporting
proactive identification and resolution of issues. Furthermore, it presents an
innovative approach to anomaly modeling in cloud infrastructure by utilizing
Large Language Models (LLMs) to understand key components, their failure modes,
and behaviors. A suite of algorithms for detecting anomalies is offered in
univariate and multivariate time series data, including regression-based,
mixture-model-based, and semi-supervised approaches. We provide insights into
the usage patterns of the service, with over 500 users and 200,000 API calls in
a year. The service has been successfully applied in various industrial
settings, including IoT-based AI applications. We have also evaluated our
system on public anomaly benchmarks to show its effectiveness. By leveraging
it, SREs can proactively identify potential issues before they escalate,
reducing downtime and improving response times to incidents, ultimately
enhancing the overall customer experience. We plan to extend the system to
include time series foundation models, enabling zero-shot anomaly detection
capabilities. |
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DOI: | 10.48550/arxiv.2501.16744 |