Fabric RTI 101: Anomalies
Thresholds are great for simple conditions — but they fall short when what’s normal changes throughout the day, week, or season. That’s where anomaly detection comes in.
Instead of relying on fixed limits, anomaly detection uses statistical and machine learning techniques to model what’s normal for a given signal, then flag data points that deviate from that pattern.

For example, network traffic might be high during business hours but low overnight — a single static threshold would either miss issues or trigger constant false alarms. Anomaly detection adjusts dynamically, recognizing these natural variations in the data.
2026-07-08



