For the hands-on tutorial sessions
Participants will bring their own laptop
Exercises for the hands-on session should be presented in terms of Python Jupyter notebooks. We will run in Google Collab (no need to lose time with local installations).
Jupyter notebooks:
Stochastic gradient descent: link
Regression in machine learning: link
Classification of four-top events at the LHC: link
Likelihood free inference for astroparticle physics: link
LHCb flavour physics tutorial on anomaly detection: collab link
Machine Learning for high-pt processes at the LHC: link
Deep learning for gravitational wave physics: link
For online remote connection (only morning lectures)
Zoom: https://vu-live.zoom.us/my/juanrojo?pwd=TWJ0YUpvVTFuN1M4TU9RQnRzTjlpdz09
Recordings of the morning lectures: