CPSCI-366 Deep Learning

This course covers deep learning fundamentals, from core machine learning concepts (e.g.: loss functions, bias-variance, and optimization) to advanced models like Multilayer Perceptrons, Convolutional Neural Networks, Recurrent Neural Networks, and Transformers. Students will gain hands-on experience by applying these techniques to real-world datasets using various deep learning frameworks.

Maximum Enrollment

Other

Credits

1

Prerequisite

CPSCI-220 or CPSCI-230 or CPSCI-240; and MATH-216; and MATH-254; or instructor consent