- Schedule of Classes - June 2, 2019 7:14PM EDT
- Course Catalog - June 2, 2019 7:15PM EDT
Course information provided by the Courses of Study 2018-2019.
This course covers the basic concepts, models and algorithms of Bayesian learning, classification, regression, dimension reduction, clustering, density estimation, artificial neural networks, deep learning, and reinforcement learning. Application and methodology topics include process monitoring, fault diagnosis, preventive maintenance, root cause analysis, soft sensing, quality control, machine learning for process optimization, data-driven decision making under uncertainty, missing data imputation, data de-noising, and anomaly/outlier detection.
When Offered Spring.
Permission Note Enrollment limited to: Systems Engineering distance learning (off campus) students only.
Prerequisites/Corequisites Prerequisites: Basic probability (CEE 3040/CHEME 5740/MATH 4710/ORIE 3500 or equivalent) and optimization (CHEME 6800/SYSEN 5800/SYSEN 6800, or ORIE 5380).
Comments Co-meets with CHEME 6880/SYSEN 6880.
Credits and Grading Basis
4 Credits GradeNoAud(Letter grades only (no audit))
Class Number & Section Details
- MWFrank H T Rhodes Hall 253
Instruction Mode: Distance Learning-Asynchronous
Enrollment limited to: Systems Engineering distance learning (off-campus) students only.
Disabled for this roster.