Hours:
16 hours (4 credits)
Room:
Aula Riunioni del Dipartimento di Ingegneria dell’Informazione, Via G. Caruso 16, Pisa - Ground Floor
To register to the course, click here
Aula Virtuale Teams:
Materiale Didattico:
http://www.banterle.com/francesco/courses/2023/mc/
Short Abstract:
This course introduces students to Monte Carlo methods and sampling techniques with a focus on visual computing. These are crucial to accelerating the computations of a variety of computational simulations where we need to draw high-quality samples or to integrate a complex multi-dimensional function such as physically-based rendering for computing the radiance of buildings, estimating the price of options, or how epidemics spread out. At the end of this course, students will have both theoretical and practical tools that they can apply to a variety of problems to achieve high-quality solutions. During the course, students will see and study successful examples of this beautiful theory to visual computing; e.g., visual processing, computer vision, finance, etc.
Course Contents in brief:
- Introduction.
- Monte-Carlo Estimation.
- Monte-Carlo Integration.
- Uniform Random Numbers.
- Non Uniform Random Numbers.
- Variance Reduction techniques.
- Quasi Monte-Carlo.
- Monte-Carlo Applications
Schedule:
- 23/05/2023: 9:00 - 13:00
- 30/05/2023: 9:00 - 13:00
- 01/06/2023: 9:00 - 13:00
- 06/06/2023: 9:00 - 13:00
- 13/06/2023: 9:00 - 13:00