ChE-606 / 1 crédit

Enseignant(s): Schwaller Philippe, Vacat .

Langue: Anglais

Remark: From fall 2023 to spring 2024


Frequency

Every 3 years

Summary

Should have expertise in chemistry, physics or lite and material sciences. Although a very good knowledge in Al-based algorithms is required to fully understand the technical details, a basic knowledge is sufficient to understand the potential of these methods and their applications.

Content

Keywords

Artificial lntelligence-based algorithms, Artificial Intelligence applications in chemistry, physics , life and material, Seminar series

Learning Prerequisites

Required courses

1) Machine Learning, CS-433, 2) Deep Learning EE-559, 3) Artificial Neural Networks, CS-456

Assessment methods

Term paper: At the end of the semester, the students are required to deliver a report summarizing the main tapies addressed in the seminars with a special emphasize on one particular seminar, and a critical assessment of what they learned.

Dans les plans d'études

  • Forme de l'examen: Mémoire (session libre)
  • Matière examinée: AI in chemistry and beyond: Trends in the field
  • Cours: 10 Heure(s)
  • Exercices: 8 Heure(s)
  • Projet: 14 Heure(s)

Semaine de référence

Cours connexes

Résultats de graphsearch.epfl.ch.