DATA 511 Introduction to Data Science
	Introduction to the analysis of data using a data scientific methodology.  Topics include data preparation, missing data, data cleaning, exploratory data analysis, statistical estimation and prediction, cross-validation, model evaluation techniques, misclassification costs, cost-benefit analysis, classification and regression trees and report writing. 
 Credits
4
	
		Prerequisite
	
B or better in a first semester statistics course, such as 
STAT 104 or 
STAT 200 or 
STAT 215 or permission of department chair.