CSED 502: Computer Vision & Deep Learning

Class: Wednesdays 6:30-9:30pm (CSE2 G01)

Links:

Gradescope (Entry Code: YBR7Y6), Ed Board, Canvas, Exam Archive.



Teaser of Deep Learning

Course Description

This course is a deep dive into the details of deep learning algorithms, architectures, and tasks, with a focus on end-to-end models. We begin by grounding deep learning advancements particularly for the task of image classification; later, we generalize these ideas to many other tasks. During the 10-week course, students learn to implement and train their own neural networks and gain a detailed understanding of cutting-edge research in deep learning. Additionally, the final assignment provides the opportunity to train and apply multi-million parameter networks on student-chosen real-world vision problems. Through multiple hands-on assignments and the final course project, students acquire the toolset for setting up deep learning tasks and practical engineering tricks for training and fine-tuning deep neural networks.

Course Staff + Office Hours

Instructor
Teaching Assistant
Ranjay Krishna
Lindsey Li
Ranjay Krishna
Lindsey Li
Hours: Tue,
Hours: Wed,
TBD
4:30 - 6:00 PM
CSE2 304
Forstall & Bahn TA Office - Gates Center 151 or Zoom
ranjay@cs
.washington.edu
linjli@cs
.washington.edu

Prerequisites

Calculus (Math 126), Linear Algebra (Math 208), and Probability (CSE 312 or Math 394).

CSE 446 is NOT a prerequisite. The neccessary fundamentals of machine learning will be covered in this class.


Course Format

This class consists of lectures, 5 assignments, and 2 in-class exam.