CCA: An ML Pipeline for Cloud Anomaly Troubleshooting
Lili Georgieva, Ioana Giurgiu, Serge Monney, Haris Pozidis, Viviane Potocnik, Mitch Gusat
[AAAI-22] Demonstrations
Abstract:
Cloud Causality Analyzer (CCA) is an ML-based analytical pipeline to automate the tedious process of Root Cause Analysis (RCA) of Cloud IT events. The 3-stage pipeline is composed of 9 functional modules, including dimensionality reduction (feature engineering, selection and compression), embedded anomaly detection, and an ensemble of 3 custom explainability and causality models for Cloud Key Performance Indicators (KPI). Our challenge is: How to apply a reduced (sub)set of judiciously selected KPIs to detect Cloud performance anomalies, and their respective root causal culprits, all without compromising accuracy?
Sessions where this paper appears
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Poster Session 4
Fri, February 25 5:00 PM - 6:45 PM (+00:00)
Blue 1
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Poster Session 11
Mon, February 28 12:45 AM - 2:30 AM (+00:00)
Blue 1