icon forward
This is our 2020 curriculum. For the new structure, valid as of the 2021 intake, click here

Fundamentals of Machine Learning & Computational Optimal Transport

Additional Info

  • ECTS credits: 6
  • University: University of Nice - Sophia Antipolis
  • Semester: 3
  • Topics:

     

    Fundamentals of Machine Learning by Prof. Yassine Laguel

    This course offers an in-depth look at some fundamental mathematical concepts driving recent advances in machine learning. Core topics encompass the theory of deep learning, large-scale and distributed optimization, causal inference, fairness, and safety in AI. Each topic will be explored through rigorous mathematical development complemented bypractical Python-based experiments. For the final assessment, students must present a topic of their choice from a provided list and resources, following the same format of rigorous mathematical exploration and Python experimentation.

     

    Computational optimal transport by Prof. Samuel Vaiter

    This course reviews methods for machine learning based on the theory of optimal transportation. Two main algorithms will be studied: linear programming and Sinkhorn algorithm.

Read 132 times Last modified on Monday, 21 October 2024 13:34
Home Structure for 2020 intake Course units Fundamentals of Machine Learning & Computational Optimal Transport