CSED501: Modern Artificial Intelligence and Machine Learning

Catalog Description: Provides a broad introduction to modern methods and implementations in artificial intelligence and machine learning. Covers a range of problems and approaches such as regression, gradient descent, classification, ensemble methods, graphical models, reinforcement learning, and neural networks. Includes analysis of bias and fairness in artificial intelligence methods. Recommended: familiarity with a coding language such as Python; introductory statistics; introductory calculus; and linear algebra.

Prerequisities: (none listed)

Portions of the CSED501 web may be reprinted or adapted for academic nonprofit purposes, providing the source is accurately quoted and duly credited. The CSED501 Web: © 1993-2025, Department of Computer Science and Engineering, University of Washington. Administrative information on CSED501 (authentication required).