PHYS786

Machine Learning for Physics

Survey relevant topics in contemporary machine learning (ML) to develop a conceptual understanding of important techniques and an ability to implement them in practice using python. Linear models: linear and logistic regression, support vector machines and kernel methods. Basic aspects of information theory and probability relevant for ML. Neural networks: architectures (FCN, CNN, RNN, attention and transformers) and initialization schemes (order-chaos transition, information propagation). Optimization algorithms. Neural tangent kernel, infinite limits of neural networks, neural scaling laws. Basic techniques in unsupervised learning including dimensionality reduction and generative models.

Fall 2024

2 reviews
Average rating: 2.50

Spring 2023

2 reviews
Average rating: 2.50

* "W"s are considered to be 0.0 quality points. "Other" grades are not factored into GPA calculation. Grade data not guaranteed to be correct.