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PhD Position in Self-Supervised Representation Learning with Low-Rank Tensor Models

Fully funded PhD position at University of Lorraine on theoretical foundations of self-supervised learning with low-rank tensor models.

The SiMul team at the University of Lorraine is offering a fully funded PhD position on the theoretical foundations of self-supervised learning, focusing on representation stability, interpretability, and efficiency.

Despite their success, self-supervised approaches and foundation models still lack a thorough theoretical understanding. This project aims to bridge that gap by exploring connections between AI models and low-rank tensor decompositions, providing a rigorous mathematical framework to address key questions:

  • When are learned representations interpretable and stable?
  • How do models perform on heterogeneous data (e.g., federated or personalized learning)?
  • Can smaller, energy-efficient models achieve strong performance on specialized tasks?

Position Details

How to Apply

Interested candidates should send their application to David Brie, Ricardo Borsoi, and Konstantin Usevich (david.brie@univ-lorraine.fr, ricardo.borsoi@univ-lorraine.fr, konstantin.usevich@univ-lorraine.fr) with:

  • An academic CV
  • A short explanation of research interests and motivation for this position

Tags: PhD position, self-supervised learning, low-rank tensor models, representation stability, interpretability, efficiency, AI models, machine learning