Ensemble Method refers to combining multiple machine learning models to improve predictive accuracy and robustness. NECLA leverages ensemble methods in fields such as biomedical AI, anomaly detection, and network optimization. By aggregating outputs from diverse models, ensembles reduce variance and error rates, producing more reliable results. This technique helps NECLA create resilient systems for high-stakes applications like cancer genomics, infrastructure sensing, and AI-enhanced networking.

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ICeTEA: Mixture of Detectors for Metric-Log Anomaly Detection

Anomaly detection is essential for identifying unusual system behaviors and has wide-ranging applications, from fraud detection to system monitoring. In web servers, anomalies are typically detected using two types of data: metrics (numerical indicators of performance) and logs (records of system events). While correlations between metrics and logs in real-world scenarios highlight the need for joint analysis, which is termed the “metric-log anomaly detection” problem, it has not been fully explored yet due to inherent differences between metrics and logs. In this paper, we propose ICeTEA, a novel system for metric-log anomaly detection that integrates three detectors: a metric-log detector based on a multimodal Variational Autoencoder (VAE), and two individual metric and log detectors. By leveraging the ensemble technique to combine outputs of these detectors, ICeTEA enhances the effectiveness and robustness of metric-log anomaly detection. Case studies demonstrate two key functionalities of ICeTEA: data visualization and rankings of contributions to anomaly scores. Experiments demonstrate that our proposed ICeTEA accurately detects true anomalies while significantly reducing false positives.