BIOE 485

Fall 2021 Part of Term 1

Part of Term 1
Aug 23-Dec 8
Computational Mathematics for Machine Learning and Imaging

Credit: 4 hours.

Covers fundamental mathematical and computational methods needed to implement computational imaging and machine learning solutions. First, relevant aspects of probability theory, matrix decompositions, and vector calculus will be introduced. Subsequently, methods that underline approximate inference, such as stochastic sampling methods, are introduced. Finally, numerical optimization methods that represent core components of computed imaging and machine learning will be introduced. This will include numerical optimization-based formulations of inverse problems. An emphasis will be placed on first order deterministic and stochastic gradient-based methods. Second order optimization techniques including quasi-Newton and Hessian free methods will also be surveyed. The application of these methods to computed imaging and machine learning problems will be addressed in detail.

4 undergraduate hours. 4 graduate hours. Prerequisite: Restricted to senior undergraduate or graduate standing in an engineering degree program or consent of instructor.

BIOE 485 class schedule data for fall 2021
CRN Type Section Time Day Location Instructor Section Details
74518
Lecture
CM
2:00PM -3:20PM
TR
Engineering Hall
Varatharajah, Y
Wagh, N
Part of Term:
1
Date Range:
08/23/21-12/08/21
Section Title:
Computational Math
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