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Course Information

CPSC 6430 - Machine Learning: Impl & Eval

Institution:
Clemson University
Subject:
Computer Science
Description:
Students learn to code machine learning algorithms from basic principles, without machine learning libraries. Topics include supervised learning such as regression and classification; unsupervised learning, such as clustering; and measures of performance such as bias/variance theory, measures, and error metrics. Students must be familiar with principles of probability and statistics and must have programming experience when enrolling in this course.
Credits:
3.00
Credit Hours:
Prerequisites:
Corequisites:
Exclusions:
Level:
Instructional Type:
Lecture
Notes:
Additional Information:
Historical Version(s):
Institution Website:
Phone Number:
(864) 656-4636
Regional Accreditation:
Southern Association of Colleges and Schools
Calendar System:
Semester

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