Enrolment options
Contents
Supervised
and unsupervised learning, regression, classification, clustering,
dimensionality reduction, maximum likelihood estimation, Bayesian
inference, support vector machines, decision trees and random forests,
k-means algorithm, Gaussian mixture models, expectation maximization
algorithm, principal component analysis, probabilistic graphical models,
deep neural networks, optimization, backpropagation.
Requirements
Bachelor
students must have 25 CP from basis modules, otherwise there are no
formal requirements. However, it is strongly recommended that at least
the basis modules covering analysis, linear algebra, probability theory
and statistics, graph theory, and programming with Python have been
completed.
- Trainer/in: Muhammad Ahsan
- Trainer/in: Matthias Fulde
- Trainer/in: Matthias Kaschube
- Trainer/in: Maurycy Miękus
- Trainer/in: Gemma Roig