CS 307
CS 307 - Model & Learning in Data Sci
Spring 2022
Title | Rubric | Section | CRN | Type | Hours | Times | Days | Location | Instructor |
---|---|---|---|---|---|---|---|---|---|
Model & Learning in Data Sci | CS307 | AB1 | 73189 | LAB | 0 | 1400 - 1450 | T | 1105 Siebel Center for Comp Sci | Bo Li |
Model & Learning in Data Sci | CS307 | AL1 | 71618 | LCD | 4 | 1100 - 1215 | W F | 112 Transportation Building | Bo Li |
See full schedule from Course Explorer
Official Description
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. Course Information: Prerequisite: STAT 207; one of MATH 225, MATH 257, MATH 415, MATH 416, ASRM 406.