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Gustavo Rodrigues dos Reis

Lundi 30 Mars 2026

CIFRE Ph.D : Methodology for Reusing Deep Learning Models (Bootstrapping Deep Learning Journeys)

Abstract: 
Deep learning (DL) models are powerful tools for analyzing data, but with so many models available, it can be hard to know which one is best for a specific use case. This thesis work adapts processes from the Case-Based Reasoning (CBR) methodology, which seeks solutions to new problems by finding similar problems that have been solved in the past. In this thesis context, a DL model is seen as a solution to a specific problem. The designed approach then leverages metadata descriptions of DL models and datasets to help users identify pertinent deep learning models for their use case, amongst existing models. Given the rapidly evolving landscape, the proposed system design prioritized modularity and agile orchestration. Modularity is required to integrate new model structures, datasets, and comparison algorithms as they are developed, and agile orchestration when isolating software components, allowing models with different execution requirements to be exchanged more efficiently. Components of the approach were therefore prototyped within a hybrid no-code/low-code platform within the industrial collaboration with NAVER LABS Europe.

 

Keywords : 
Case-Based Reasoning, Deep Learning, Software Artifact Reuse, Pipeline Agility, Component Modularity, Curriculum Learning, Hyperparameter Optimization

Date and place

Monday, March 30th at 14:00
Maison du Doctorat Jean Kuntzmann
and  Zoom

Jury members

Thesis supervision :

  • Cyril Labbé
    Directeur de thèse, Professeur des Universités, Grenoble INP - Université Grenoble Alpes
  • Mario Cortes Cornax
    Co-encadrant de thèse,Maître de Conférences, Grenoble INP - Université Grenoble Alpes
  • Adrian Mos
     Co-encadrant en entreprise, Chercheur, NAVER LABS Europe 

Thesis committee :

  • Cyril Labbé
     Directeur de thèse, Professeur des Universités, Grenoble INP - Université Grenoble Alpes
  • Lylia Abrouk
    Rapportrice, Maîtresse de Conférences HDR, Université Bourgogne-Europe
  • Helga Duarte-Amaya
    Rapportrice, Full Professor, Universidad Nacional de Colombia
  • Gwen Salaün
    Examinateur, Professeur des Universités, Grenoble INP - Université Grenoble Alpes
  • Silverio Martínez-Fernández
     Examinateur, Associate Professor, UPC-BarcelonaTech
  • Mario Cortes-Cornax
     Co-encadrant de thèse, Maître de Conférences, Grenoble INP - Université Grenoble Alpes
  • Adrian Mos
    Co-encadrant en entreprise, Chercheur, NAVER LABS Europe

Submitted on March 26, 2026

Updated on March 26, 2026