CS 307
spring 2022
All Classes
Modeling and Learning in Data Science
Credit: 4 hours.
Introduction to the use of classical approaches in data modeling and machine learning in the context of solving data-centric problems. A broad coverage of fundamental models is presented, including linear models, unsupervised learning, supervised learning, and deep learning. A significant emphasis is placed on the application of the models in Python and the interpretability of the results.
Prerequisite: STAT 207; one of MATH 225, MATH 257, MATH 415, MATH 416, ASRM 406.

- Section Status Closed

- Section Status Open

- Section Status Pending

- Section Status Open (Restricted)

- Section Status Unknown
Section Status updates every 10 minutes.
| Detail | Status | CRN | Type | Section | Time | Day | Location | Instructor |
|---|