DS 7400

Machine Learning III: Deep Learning

Course Description

Covers advanced theoretical concepts for deep neural networks. Topics include convolutional neural networks and their design principles, encoder-decoder architectures, recurrent neural networks, transformers, bounding box detection, image segmentation, generative adversarial networks, diffusion models, etc. Using open-source Python libraries such as NumPy, TensorFlow, and Keras, to understand how theoretical concepts are implemented.


Looks like this course isn't being taught this semester.

Sort by "All" in the top right to see previous semesters.