DATA 201 Classification Analytics
	Accessible introduction to data scientific classification. Topics include cross-validation, data partitioning, model building and evaluation, and making predictions. Basic introduction to classification algorithms, and decision trees. Deeper familiarity with a popular data science software platform.
 Credits
3
	
		Prerequisite
	
DATA 101 and 
STAT 201 (C- or better),  or permission of department chair.