Optimization Methods
Persone
Descrizione
Optimisation algorithms are ubiquitous in all branches of science and technology, starting from shape optimisation in engineering to optimal control problems and data science / machine learning. This course provides an introduction to the most important concepts and methods in continuous optimisation. We will present, analyse, implement, and test some of the most fundamental algorithms. Particular emphasis will be put on the methodology and the underlying mathematical rationale (algorithmic complexity, convergence and convergence speed). We will notably cover optimality conditions, define notions such as convexity and smoothness and review different types of optimisation problems, including unconstrained, least-squares, and linear programming problems.
Obiettivi
This course introduces main concepts of optimisation and some of the most used algorithms in data science and machine learning. It covers topics in convex and non-convex optimisation, constrained and unconstrained optimisation, including gradient descent, Newton methods, backpropagation and the Simplex algorithm.
Modalità di insegnamento
In presenza
Impostazione pedagogico-didattica
Lectures, book chapter reading, self study of slides and lecture notes, exercises and problems solving with implementation in Python (bi-weekly assignments), weekly tutorials, office hours.
Modalità d’esame
Assignments (20%), midterm written exam (40%), final written exam (40%).
Programma
- Bachelor of Science in Informatics, Lezione, A scelta, 3° anno
- Dottorato in Scienze informatiche, Lezione, A scelta, 1° anno (4.0 ECTS)
Prerequisito
- Numerical Computing, Schenk O., Gaedke-Merzhäuser L., Pasadakis D., SA 2021-2022