VMware, Inc.
Adaptive anomaly detection for computer systems

Last updated:

Abstract:

Feature vectors are abstracted from data describing application processes. The feature vectors are grouped to define non-anomalous clusters of feature vectors corresponding to normal application behavior. Subsequent feature vectors are considered anomalous if they do not fall within one of the non-anomalous clusters; alerts are issued for anomalous feature vectors. In addition, the subsequent feature vectors may be used to regroup feature vectors to adapt to changes in what constitutes normal application behavior.

Status:
Grant
Type:

Utility

Filling date:

14 Aug 2018

Issue date:

14 Sep 2021