This information is from the 2021-2022 Undergraduate Bulletin. Please note that registration restrictions are subject to change.

CSC 156   - Introduction to Machine Learning
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Description:

Periodically
The course introduces the mathematical, algorithmic and practical aspects of machine learning. Students will learn how to design applications that learn from data and past experience. Applications include classification, clustering, prediction, decision making. Among topics covered in the class are: regression, neural networks, decision trees, support vector machines, model and feature selection, ensemble methods, boosting, clustering, graphical models.

 
Semester Hours: 3 
Prerequisites:

CSC 017, 185; MATH 071; or permission of instructor. May not be taken on a Pass/D+/D/Fail basis.

 
a) See the Bulletin for a special note regarding course titles with the following symbols: *, !, or ?

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