The course objective is to cover key unsupervised learning techniques including association rules, principal components analysis, and clustering. Students will also review integration of supervised and unsupervised learning techniques. Participants will apply data mining algorithms to real data, and will interpret the results. A final project will integrate an unsupervised task with supervised methods covered in predictive Analytics 1 and 2. Students will use either R, Excel Solver or Python software.