Lecture, four hours; discussion, two hours; outside study, six hours. Requisites: courses 131A, 133A or 205A, and M146, or equivalent. Review of machine learning concepts; maximum likelihood; supervised classification; neural network architectures; backpropagation; regularization for training neural networks; optimization for training neural networks; convolutional neural networks; practical CNN architectures; deep learning libraries in Python; recurrent neural networks, backpropagation through time, long short-term memory and gated recurrent units; variational autoencoders; generative adversarial networks; adversarial examples and training. Concurrently scheduled with course C147. Letter grading.

Review Summary

Clarity
10.0 / 10
Organization
10.0 / 10
Time
20+ hrs/week
Overall
10.0 / 10

Reviews

    Quarter Taken: Winter 2022 Online
    Grade: A+

    Probably my favourite class and lecturer at UCLA. A strong introduction to neural networks

Course

Instructor
Kao, J.C. et al.
Previously taught
22W

Grading Information

  • Has a group project

  • Attendance not required

  • 1 midterm

  • No final

  • 0% recommend the textbook

Previous Grades

Grade distributions not available.