Ricerca di contatti, progetti,
corsi e pubblicazioni

Artificial Intelligence

Persone

Gambardella L. M.

Docente titolare del corso

Adorni G.

Assistente

Mele U. J.

Assistente

Descrizione

The aim of the course is to present the most modern techniques for solving complex problems. We focus on state of the art meta-heuristic for continuous function and combinatorial optimization: among the methods we deepen simulated annealing, genetic algorithms, variable neighborhood search and ant colony optimization. Gaming with two players will be also discussed as the integration between meta-heuristics and machine learning. Students are asked to implement and test some of these techniques.

Obiettivi

Meta-Heuristics algorithms learning and testing

Modalità di insegnamento

In presenza

Impostazione pedagogico-didattica

Front lecture, text reading, code development For each topic you receive a paper to read and to support to your studies Simulated Annealing SA extension ILS: iterated local search Genetic Algorithms GA variant PBIL population-based incremental learning Ant Colony Optimization ACS for vehicle routing problems Tabu search

Modalità d’esame

Written test and code evaluation

Offerta formativa