|
Jul 31, 2025
|
|
|
|
MTLE 4730 - Material Informatics and Data Science Introduction to data science and machine learning, with case studies in discovery of structure-property relationships and new materials from experimental and computational data. Brief review of required background in linear algebra and statistics with hands-on exercises in Python. Data science topics: model fitting, clustering, dimensionality reduction, ontologies, Bayesian inference, and design of experiments.
Prerequisite: ENGR 2600 , or equivalent.
When Offered: FALL TERM, EVEN YEARS
Cross Listed: CSCI 4730 , and CSCI 4730 . Students may not receive additional credit for any of these cross listed courses in addition.
Co-Listed: MTLE 6730
Graded: GRADED
Credit Hours: 3
Add to Portfolio (opens a new window)
|
|