ENEB346

Linear Algebra for Machine Learning Applications

Prerequisite: MATH140. Restriction: Must be in the Embedded Systems & Internet of Things program and must receive permission from the Embedded Systems & Internet of Things program. Foundations of linear algebra for machine learning and data science applications with emphasis on implementing machine learning data science algorithms in a computer programming environment with linear algebra software tools and libraries as this course aims to provide a hands-on experience and learning environment for students. Students will learn the fundamental concepts in linear algebra that are directly relevant to machine learning and big data modeling and computations. These include vector and matrix operations, determinants, factorization methods, principal component analysis, eigenvalues, and singular value decomposition.

Fall 2025

4 reviews
Average rating: 5.00

Past Semesters

4 reviews
Average rating: 5.00

4 reviews
Average rating: 5.00

0 reviews
Average rating: N/A

8 reviews
Average rating: 5.00

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Average rating: N/A

During the Spring 2020 and Spring 2021 semesters, students could choose to take some of their courses pass-fail mid-semester which skews grade data aggregated across multiple semesters.

Average GPA of 3.69 between 16 students*

ENEB346 Grade Distribution+-0510152025303540455055606570758085% of studentsABCDFWother
A: 81.25%
B-: 6.25%
C: 6.25%
C+: 6.25%
* "W"s are considered to be 0.0 quality points. "Other" grades are not factored into GPA calculation. Grade data not guaranteed to be correct.