Introducing anomaly detection in Datadog
Anomaly detection has been added to Datadog to provide deeper context for dynamic metrics like application throughput, web requests, and user logins. The feature analyzes a metric's historical behavior to distinguish between normal and abnormal trends. It accounts for seasonality and can separate the trend component from the seasonal component of a timeseries. Anomaly detection is available in Datadog and complements outlier detection, which identifies unexpected differences in behavior among multiple entities reporting the same metric.
Company
Datadog
Date published
Oct. 27, 2016
Author(s)
John Matson
Word count
876
Language
English
Hacker News points
None found.