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Jul 01, 2025
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Fall 2025 Graduate Catalog
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AMS 525 - Geometric Deep Learning In the first part of the course, we will cover programming in Python, from its basic libraries up to the implementation of advanced deep learning models such as CNNs, RNNs, GNNs, and Transformer networks. The practical success of many of these models in high-dimensional problems such as image processing, playing GO, or protein folding comes from the predefined regularities in the underlying low-dimensional geometric structure of the data. Therefore in the second part of the course, we will extend the aforementioned deep learning models and their implementations to graphs and manifolds in spatial and spectral domains. The focus will be on the implementation of the models in Python and their practical applications.
3 credits
Grading Letter graded (A, A-, B+, etc.)
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