CMSC828W

Advanced Topics in Information Processing; Foundations of Deep Learning

Restricted to Computer Science (Master's/Doctoral) students; or permission of instructor. In this course, we are going to explore empirically-relevant theoretical foundations of deep learning (DL). We will cover topics including DL optimization, DL generaliation, Neural Tangent Kernels, Deep Generative Models, DL Robustness, DL Interpretability, Domain Adaptation and Generalization, Self-Supervised Learning and Deep Reinforcement Learning.

Sister Courses: CMSC828A, CMSC828B, CMSC828C, CMSC828D, CMSC828E, CMSC828F, CMSC828G, CMSC828I, CMSC828J, CMSC828K, CMSC828L, CMSC828M, CMSC828N, CMSC828O, CMSC828P, CMSC828Q, CMSC828R, CMSC828T, CMSC828U, CMSC828V, CMSC828X, CMSC828Y, CMSC828Z

Past Semesters

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During the Spring 2020 and Spring 2021 semesters, students could choose to take some of their courses pass-fail mid-semester which skews grade data aggregated across multiple semesters.

Average GPA of 3.05 between 232 students*

CMSC828W Grade Distribution+-051015202530354045% of studentsABCDFWother
A-: 9.05%
A: 23.71%
A+: 11.64%
B-: 8.19%
B: 18.53%
B+: 7.76%
C: 3.02%
F: 0.43%
W: 10.78%
other: 6.9%
* "W"s are considered to be 0.0 quality points. "Other" grades are not factored into GPA calculation. Grade data not guaranteed to be correct.