Fabric RTI 101: Anomaly Detection in KQL
Anomaly detection is a key use case for real-time analytics — it’s about automatically identifying when something unusual or unexpected happens in your data.

In most systems, normal behavior forms a fairly predictable pattern. For example, transactions follow a steady daily rhythm, CPU usage fluctuates within a typical range, and sensor readings stay within expected bounds.
Anomalies are the data points that break from those patterns — a sudden spike in temperature, a large payment outside normal limits, or a sudden burst of failed login attempts.
2026-06-24

