Dec 10, 2025  
2025-2026 Graduate Catalog 
    
2025-2026 Graduate Catalog
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CMST 290 - Scientific Programming and Machine Learning

Credits 1

This course introduces students to the field of machine learning. Students learn the algorithms which underpin many popular machine learning techniques, as well as developing an understanding of the theoretical relationships between these algorithms. Topics include: supervised learning (regression [simple, multi, and logistic]), (classification [binary, multi, imbalanced]), and unsupervised learning (dimensionality reduction, principal components, cluster analysis).

Repeat for Credit
N

Requisites
Prerequisite: MATH 100, MLAS 100 or CYBR 103

Typically Offered
Spring



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