Mechanistic interpretability for astronomical/cosmological image models

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Project Description: 

We propose a project focused on mechanistic interpretability for astronomical/cosmological image models. The project will involve training neural networks on an astronomical/cosmological imaging dataset and applying the ViT-Prisma framework to analyze the learned representations. The goal is to investigate how internal components of the model encode astrophysically/cosmologically meaningful features and to extract interpretable insights about what the network learns from astronomical/cosmological images. This project will introduce the student to modern deep learning techniques for astronomy/cosmological while exploring emerging approaches in mechanistic interpretability. Prior knowledge of machine learning is helpful but not required for highly motivated students.
Research Area: 
Astronomy
Project Level: 
Masters
This Project Is Offered At The Following Node(s): 
(UCT)

Supervisor

Dr
Sultan
Hassan
E-mail Address: 
Affiliation: 
University of Cape Town (UCT)

Co-Supervisor

Prof
Jonathan
Shock
E-mail Address: 
Affiliation: 
UCT