← Back to Grants

Universal uncertainty quantification using deep learning. This project aims to develop a new and universal approach to uncertainty quantification using deep learning. This project expects to use innov

Monash University — Discovery Early Career Researcher Award
Amount
Up to $524,291
Closes
Sunday 31 December 2028
Status
unknown
Type
open opportunity
Apply Now →

Description

Universal uncertainty quantification using deep learning. This project aims to develop a new and universal approach to uncertainty quantification using deep learning. This project expects to use innovative deep learning tools to develop the first simultaneously tractable and expressive models that can be used directly to quantify uncertainty, a significant unsolved problem. Expected outcomes of this project include a general framework for directly quantifying uncertainty, surpassing current methods which are unable to use big data or are indirect, slow, inexact or inexpressive. This should provide significant benefits for trusted uncertainty quantification using deep learning, with demonstrated downstream applications in manufacturing and coastal bathymetry.. Scheme: Discovery Early Career Researcher Award. Field: 4611 - Machine Learning. Lead: Dr Russell Tsuchida

Categories
education

Foundations Supporting This Area

Discovery method: arc-grants
Last verified: Monday 2 March 2026
Added: Saturday 28 February 2026