MAT4XXX/5XXX
Revision as of 15:30, 9 March 2023 by Jose.iovino (talk | contribs) (Created page with "This course is intended to develop practical marketable skills in data analytics using rigorous mathematical methodologies via SQL, Python and Git. The mathematical topics cov...")
This course is intended to develop practical marketable skills in data analytics using rigorous mathematical methodologies via SQL, Python and Git. The mathematical topics covered involve: Singular value decomposition, single and multiple discriminant analysis, integral transforms with orthogonal & non-orthogonal functions/data and their connection with regression techniques, nonlinear discriminants through dimensionality augmentation (artificial neural networks). The course covers techniques to characterize the context of a data problem, and addresses issues related to reproducibility of computational results.