Biological data science II : machine learning
Summary
Students understand basic concepts and methods of machine learning. They can describe them in mathematical terms and can apply them to data using a high-level programming language (julia/python/R).
Content
- Basic concepts of machine learning
 - Cross-Validation and Model Selection
 - Hyper-Parameter Tuning
 - Feature Engineering
 - Gradient Descent
 - Artificial Neural Networks (Deep Learning)
 - Tree-Based Methods
 - Unsupervised Learning
 - Basics of Reinforcement Learning
 - Some state-of-the-art machine learning tools for life sciences
 - Data Analysis and Machine Learning with a high-level programming language (python/julia)
 
Learning Prerequisites
Required courses
Algèbre linéaire, Analyse, Analyse numérique, Probability and Statistics, Biological data science I: statistical learning
Learning Outcomes
By the end of the course, the student must be able to:
- Define basic concepts of machine learning.
 - Apply machine learning tools to real-world problems.
 - Propose machine learning approaches to analyse data sets in the life sciences.
 
Teaching methods
Lecture, programming labs and exercises.
Assessment methods
- Programming project during the semester
 - Written final exam
 
Resources
Bibliography
"An Introduction to Statistical Learning, with Applications in R" by
Gareth James, Daniela Witten, Trevor Hastie and Robert Tibshirani
online available at https://www.statlearning.com
Ressources en bibliothèque
Websites
Moodle Link
Dans les plans d'études
- Semestre: Automne
 - Forme de l'examen: Ecrit (session d'hiver)
 - Matière examinée: Biological data science II : machine learning
 - Cours: 2 Heure(s) hebdo x 14 semaines
 - Exercices: 2 Heure(s) hebdo x 14 semaines
 - Type: optionnel