Description |
This two-week course will provide an introduction to basic techniques in Machine Learning (ML). The programme is aimed at advanced undergraduate STEM students. We will follow a “learn by doing” philosophy with plenty of exercises for the participants to solve. The course will end with a challenge where teams of students will use their acquired knowledge and compete to identify rare decays in real Large Hadron Collider (LHC) data. More about our PWF projects in Guatemala. Course contents:
Location: Universidad del Valle de Guatemala Dates: November 25-December 6, 2019 Lecturers: Kurt Rinnert (U. Liverpool and CERN) and Giovanni Ramirez (USAC Guatemala) Scientific committee: Juan Diego Chang, Kate Shaw, Álvaro Véliz Osorio Course contents:
|
PWF Guatemala: Machine Learning for Scientists
Go to day