CS 545 Machine Learning

Provides a broad introduction to techniques for building computer systems that learn from experience; conceptual grounding and practical experience with several learning systems; and grounding for advanced study in statistical learning methods, and for work with adaptive technologies used in speech and image processing, robotic planning and control, diagnostic systems, complex system modeling, and iterative optimization. Students gain practical experience implementing and evaluating systems applied to pattern recognition, prediction, and optimization problems. Also offered for undergraduate-level credit as CS 445 and may be taken only once for credit.

Credits

3

Prerequisite

Prerequisites: Mth 343, Stat 451, and CS 202.