Engineering Math: Data Science

BMED-6420

The course covers matrix algebra and decompositions, including eigenvalue and generalized eigenvalue problems, solving multivariate constraint and unconstraint optimization problems, gradient-based optimization for solving nonlinear optimization problems, and regression analysis. Concepts that are discussed include solving nonlinear optimization problems, first- and second-order gradient-based methods, estimating parameters for multiple linear regression and mechanistic first-principle models. The course also introduces important data science tasks: data analysis, regression, classification and presents application studies related to biomedical engineering.

3 credits
Prereqs:
none

Past Term Data

Offered
Not Offered
Offered as Cross-Listing Only
No Term Data
Spring Summer Fall
(Session 1) (Session 2)
2024
Engineering Math: Data Science (3c)
  • FNU Rahul
Seats Taken: 2/35
2023
2022
2021
2020
Clincal Orthopaedics And Research (4c)
  • Eric Howard Ledet
Seats Taken: 16/15
2019
Clincal Orthopaedics And Research (4c)
  • Eric Howard Ledet
Seats Taken: 16/10
2018
Clincal Orthopaedics And Research (4c)
  • Eric Howard Ledet
Seats Taken: 14/10
2017
Clincal Orthopaedics And Research (4c)
  • Eric Howard Ledet
Seats Taken: 19/39
2016
2015
Clincal Orthopaedics And Research (4c)
  • Eric Howard Ledet
Seats Taken: 7/45
2014
Clincal Orthopaedics And Research (4c)
  • Eric Howard Ledet
Seats Taken: 11/15
2013
Clincal Orthopaedics And Research (4c)
  • Eric Howard Ledet
Seats Taken: 13/10
2012
2011
2010
2009
2008
Biology And Engr Of Ecm (3c)
  • Jan Philip Stegemann
Seats Taken: 9/10
2007
2006
2005
2004
2003
2002
2001
2000
1999
1998