Fall 2017 Course Descriptions

COMP 135-01 Introduction to Machine Learning

R. Khardon
MW 4:30-5:45p, Robinson Hall 253
K+ Block

An overview of methods whereby computers can learn from data or experience and make decisions accordingly. Topics include supervised learning, unsupervised learning, reinforcement learning, and knowledge extraction from large databases with applications to science, engineering, and medicine.

Prerequisite: Comp 15 and COMP/MATH 22 or 61 or consent of instructor. (Comp 160 is highly recommended).


Back to Main Courses Page