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Courses - Fall 2024
ENMA
Engineering, Materials Department Site
Open Seats as of
11/30/2024 at 05:30 PM
ENMA637
(Perm Req)
Machine Learning for Materials Science
Credits: 3
Grad Meth: Reg, Aud
Prerequisite: MATH461.
Recommended: Python knowledge.
Restriction: Permission of ENGR-Materials Science & Engineering department.
Jointly offered with: ENMA437.
Credit only granted for: ENMA437, ENMA489L, or ENMA637.
Familiarizes students with basic as well as state of the art knowledge of machine learning and its applications to materials science and engineering. Covers the range of machine learning topics with applications including feature identification and extraction, determining predictive descriptors, uncertainty analysis, and identifying the most informative experiment to perform next. One focus of the class is to build the skills necessary for developing an autonomous materials research system, where machine learning controls experiment design, execution, and analysis in a closed-loop.