Kaspersky Machine Learning for Anomaly Detection

About markups

Markup is the tool for selecting time intervals. Markups are used to generate learning indicators and

of the ML model. Markups that form part of learning indicators define the data time intervals from which the ML model takes data for training. Markups that form part of inference indicators define the time intervals during which the ML model performs the inference.

A markup may utilize two types of criteria: conditions on the behavior of specific tags (time intervals are selected where these conditions are met) and a time filter (time intervals are selected independently of tag behavior).

Markup is a functional element of the hierarchical structure. Markups can be created manually or imported into Kaspersky MLAD together with an ML model.