User Tools

Site Tools


curriculum

This is an old revision of the document!


Detailed Curriculum

First year (M1)

  • Mandatory: Refresher in statistics (APM_51438_EP): Marine Le Morvan, Inria
  • Optional: Refresher in computer science (CSC_51440_EP): Amal Dev Parakkat, Télécom Paris

All subsequent M1 courses are 36h and will credit 4.5 ECTS.

Period 1

  • Mandatory: Machine Learning (MDC_51006_EP): Erwan Le Pennec and Jesse Reed, École polytechnique
  • Elective (at least 1 course):
    • :?: Deep Learning (CSC_51054_EP): Michalis Vazirgiannis and Johannes Lutzeyer, École polytechnique
    • Emerging subjects in machine learning and collaborative learning (APM_51178_EP, research-oriented): Aymeric Dieleveut and El Mahdi El Mhamdi, École polytechnique
    • Signal processing from Fourier to ML (APM_51055_EP): Rémi Flamary, École polytechnique
  • Optional:
    • :!: Statistical learning theory (APM_51059_EP): Karim Lounici, École polytechnique
    • :!: Probability theory for ML - Applications to Monte Carlo methods and generative models (APM_51056_EP): Alain Durmus, École polytechnique
    • Image analysis and computer vision (CSC_51073_EP): Mathieu Brédif, Université Gustave Eiffel
    • :!: Topological data analysis (CSC_51056_EP): Steve Oudot, INRIA
  • Mandatory non-scientific courses:
    • Introduction to Marketing and Strategy (IME_51456_EP): Philippe Ginier-Gillet, École polytechnique
    • Sport, Humanities, Foreign Language (these courses are similar to those every graduate from École polytechnique must follow)

:?: Students must take one deep learning course that they can choose between period 1 (CSC_51054_EP) or period 2 (APM_52183_EP)
:!: Strong mathematical background recommended

Period 2

  • Mandatory
    • Deep Learning (APM_52183_EP :?:): Kevin Scaman, INRIA
    • Reinforcement learning and autonomous agents (CSC_52081_EP): Jesse Read, École polytechnique
  • Elective (1 course):
    • Optimization for AI (APM_52067_EP): Luiz Chamon and Aymeric Dieuleveut, École polytechnique
    • Optimization and responsible AI for sustainability (CSC_52073_EP): Sonia Vanier, École polytechnique
  • Optional
    • Statistics in action (APM_52066_EP): Zacharie Naulet, INRAE
    • Advanced deep learning (CSC_52087_EP): Vicky Kalogeiton, Johannes Lutzeyer, Ye Zhu, and Xi Wang, École polytechnique
    • Introduction to text mining and NLP (CSC_52082_EP): Davide Buscaldi, Michalis Vazirgiannis
    • Multimodal generative AI (CSC_52002_EP): Vicky Kalogeiton
    • Graph machine and deep learning for generative AI (CSC_52072_EP): Johannes Lutzeyer and Michalis Vazirgiannis, École polytechnique
  • Mandatory non-scientific courses:
    • Entrepreneurship for sustainability (IME_52068_EP, Chloé Steux) OR Case studies on innovation (IME_52062_EP, Philippe Ginier-Gillet)
    • Sport, Humanities, Foreign Language (these courses are similar to those every graduate from École polytechnique must follow)

:?: Students must take one deep learning course that they can choose between period 1 (CSC_51054_EP) or period 2 (APM_52183_EP).

Period 3

Research-oriented internship (4 to 6 months) (INT_52406_EP, 20 ECTS)




Second year (M2)

Period 1

Period 2

Transverse courses and projects (spanning periods 1 and 2)

  • Transverse project (MDC_54430_EP, 8 ECTS): Students will work half a day per week on a project corresponding to a challenging question raised either by an industrial partner or by a researcher in the domain spanned by the program.
  • Seminar on ethical issues, law and novel applications of AI (IME_50430_EP, 6 ECTS): Véronique Steyer, École polytechnique

Mandatory non-scientific courses:

  • Sport
  • Humanities
  • Foreign Language

Period 3

  • Internship in an industrial or academic research lab (5 to 6 months) (INT_54490_EP, 24 ECTS)
curriculum.1761664794.txt.gz · Last modified: 2025/10/28 15:19 by director-trai

Donate Powered by PHP Valid HTML5 Valid CSS Driven by DokuWiki