Semester.ly

Johns Hopkins University | EN.535.742

Applied Machine Learning for Mechanical Engineers

3.0

credits

Average Course Rating

(-1)

This course covers machine learning fundamentals (e.g., optimization, perceptron, and universal approximation), some popular and advanced machine learning techniques (e.g., Supervised, Unsupervised, Probabilistic, Convolutional, and Generative Networks), and supercomputing techniques (with a focus on MARCC) to address mechanical engineering-related machine learning problems. The course requires Python 3+ programming skills; a free 3-hour Python 3+ tutorial will be provided to those who need to learn Python.

No Course Evaluations found

Lecture Sections

(81)

No location info
M. Rafiei
No class times info