Introduction to Machine Learning (Practical)

This course presents the fundamentals of statistical learning theory, from fundamental limits, to algorithms, their analysis and practical implementation. Important concepts such as Vapnik-Chervonenkis theory, Empirical Risk Minimization, Stochastic Gradient Descent algorithms and Kernel methods will be presented in details. A lab session will enable students to apply the theoretical contents to data.

Class Timetable

  Start Time End Time Professor

Class Information

 Open: July 2, 2024

Class Trainer