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College of Arts & Sciences

Credits 3. 3 Lecture Hours.

Theory and practice of deep learning, including topics concerning approximation, generalization and optimization; study of the theory of universal approximation, stochastic gradient-based optimizers and statistical learning bounds, but also computational aspects including backpropagation and batch normalization.

Prerequisites: MATH 304, MATH 251, MATH 411, and MATH 679 or equivalent; approval of instructor.