Microsoft Corporation
MULTI-FIDELITY SIMULATED DATA FOR MACHINE LEARNING

Last updated:

Abstract:

A method of training a machine learning system. The method comprises collecting a first simulation dataset derived from a computer simulating a hypothetical scenario with a first simulation configuration having a first degree of fidelity. The method further comprises collecting a second simulation dataset derived from a computer simulating the hypothetical scenario with a second simulation configuration having a second degree of fidelity different than the first degree of fidelity. The method further comprises building a multi-fidelity training dataset including training data from both the first simulation dataset and the second simulation dataset according to an interleaving protocol.

Status:
Application
Type:

Utility

Filling date:

15 May 2020

Issue date:

18 Nov 2021