International Business Machines Corporation
SUPERRESOLUTION AND CONSISTENCY CONSTRAINTS TO SCALE UP DEEP LEARNING MODELS

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Abstract:

Techniques of facilitating deep learning model rescaling by computing devices. In one example, a system can comprise a processor that executes computer executable components stored in memory. The computer executable components can comprise: a rescaling component; and a forecasting component. The rescaling component can determine a scaling ratio that maps low mesh resolution predictive data output by a partial differential equation (PDE)-based model for a sub-domain to high-resolution observational or ground-truth data for a domain comprising the sub-domain. The forecasting component can generate high mesh resolution predictive data for the domain with a machine-learning model using input data of the PDE-based model and the scaling ratio.

Status:
Application
Type:

Utility

Filling date:

15 Dec 2020

Issue date:

16 Jun 2022