Loading…

Loading grant details…

Active HORIZON European Commission

Real-time inversion using self-explainable deep learning driven by expert knowledge


Funder European Commission
Recipient Organization Universidad Del Pais Vasco/ Euskal Herriko Unibertsitatea
Country Spain
Start Date Feb 01, 2024
End Date Jan 31, 2028
Duration 1,460 days
Number of Grantees 9
Roles Participant; Associated Partner; Coordinator
Data Source European Commission
Grant ID 101119556
Grant Description

IN-DEEP is a European Doctoral Network composed of nine doctoral candidates (DCs) and top scientists with complementary areas of expertise in applied mathematics, artificial intelligence, high-performance computing, and engineering applications.

Its main goal is to provide high-level training to the nine DCs in designing, implementing, and using explainable knowledge-driven Deep Learning (DL) algorithms for rapidly and accurately solving inverse problems governed by partial differential equations (PDEs).Inverse problems in which the unknown parameters are connected to experimental measurements through PDEs cover from medical applications - like cancer growth assessment - to the safety of civil infrastructures, and green geophysical applications such as geothermal energy production.

Their application value is measured in human lives and society's well-being, which goes beyond any quantifiable amount of money.

This is why equipping a new generation of specialists with highly-demanded skills for the upcoming transition toward safe and robust AI-based technologies is imperative.Despite the promising results in many applications, DL for PDEs has severe limitations.

The most troublesome is its lack of a solid theoretical background and explainability, which prevents potential users from integrating them into high-risk applications.IN-DEEP aims to remove these constraints to unleash the full potential of DL algorithms for PDEs.

We will achieve this by: (a) focusing on emerging applications of DL for PDEs with immense societal and/or industrial value, (b) designing mathematics-infused advanced solvers to address them efficiently, and (c) involving, from the beginning, industrial and technological agents which can monitor, upscale, and exploit this knowledge.

On the way, we shall establish the foundations of a better knowledge exchange ecosystem amongst the main academic and industrial actors within Europe, disseminating the results worldwide.

All Grantees

Ecole Nationale Superieure D'Arts Et Metiers; Akademia Gorniczo-Hutnicza Im. Stanislawa Staszica W Krakowie; Fundacion Tecnalia Research & Innovation; Bcam - Basque Center for Applied Mathematics; Siemens Industry Software Nv; Universita Degli Studi Di Pavia; Politecnico Di Torino; The University of Nottingham; Universidad Del Pais Vasco/ Euskal Herriko Unibertsitatea

Advertisement
Apply for grants with GrantFunds
Advertisement
Browse Grants on GrantFunds
Interested in applying for this grant?

Complete our application form to express your interest and we'll guide you through the process.

Apply for This Grant