Filters

Longxiu Huang (Instructor) - Grade Details

(with breakdown by course)


Longxiu Huang - All Courses

Average Grade - 3.225
Median Grade - 3.5
902 total students

Latest grades from Fall 2025

Longxiu Huang - Overview

Course Number Grade Info Latest Grade Data
CMSE 823 Average Grade - 3.763
Median Grade - 4.0
Fall 2025
CMSE 831 Average Grade - 3.762
Median Grade - 4.0
Fall 2023
CMSE 890 Average Grade - 3.904
Median Grade - 4.0
Fall 2023
MTH 314 Average Grade - 2.957
Median Grade - 3.5
Spring 2025
MTH 451 Average Grade - 3.500
Median Grade - 4.0
Fall 2025

Back to Overview for Longxiu Huang

CMSE 823 - Numerical Linear Algebra

Methods in modern numerical linear algebra for solving linear systems, least squares problems, and eigenvalue problems. Efficiency and stability of algorithms in numerical linear algebra.

Average Grade - 3.763
Median Grade - 4.0
19 total students

Latest grades from Fall 2025

See detailed grade info for this course

Back to Overview for Longxiu Huang

CMSE 831 - Computational Optimization

Applications and algorithms for finite-dimensional linear and non-linear optimization problems.

Average Grade - 3.762
Median Grade - 4.0
63 total students

Latest grades from Fall 2023

See detailed grade info for this course

Back to Overview for Longxiu Huang

CMSE 890 - Selected Topics in Computational Mathematics, Science, and Engineering

Topics selected to supplement and enrich existing courses.

Average Grade - 3.904
Median Grade - 4.0
159 total students

Latest grades from Fall 2023

See detailed grade info for this course

Back to Overview for Longxiu Huang

MTH 314 - Matrix Algebra with Computational Applications

Numerical methods in linear algebra with applications to systems of equations and eigenvalue problems, and geometry.

Average Grade - 2.957
Median Grade - 3.5
615 total students

Latest grades from Spring 2025

See detailed grade info for this course

Back to Overview for Longxiu Huang

MTH 451 - Numerical Analysis I

Numerical solution of linear and nonlinear algebraic equations and eigenvalue problems. Curve fitting. Interpolation theory. Numerical integration, differentiation, and solution of differential equations. Algorithms implementation with a programming language like Fortran, C/C++ or MATLAB.

Average Grade - 3.500
Median Grade - 4.0
46 total students

Latest grades from Fall 2025

See detailed grade info for this course


Advertisements