VMware, Inc.
Computationally efficient reinforcement-learning-based application manager

Last updated:

Abstract:

The current document is directed to automated reinforcement-learning-based application managers that obtain increased computational efficiency by reusing learned models and by using human-management experience to truncate state and observation vectors. Learned models of managed environments that receive component-associated inputs can be partially or completely reused for similar environments. Human managers and administrators generally use only a subset of the available metrics in managing an application, and that subset can be used as an initial subset of metrics for learning an optimal or near-optimal control policy by an automated reinforcement-learning-based application manager.

Status:
Grant
Type:

Utility

Filling date:

22 Jul 2019

Issue date:

16 Mar 2021