Difference between revisions of "IU:TestPage"

From IU
Jump to navigation Jump to search
Line 35: Line 35:
 
* Fast Fourier Transform
 
* Fast Fourier Transform
 
* To find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition
 
* To find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition
  +
=== Course evaluation ===
  +
{| class="wikitable"
  +
|+ Course grade breakdown
  +
|-
  +
! type !! points
  +
|-
  +
| Labs/seminar classes || 20
  +
|-
  +
| Interim performance assessment || 30
  +
|-
  +
| Exams || 50
  +
|}
  +
  +
=== Grades range ===
  +
{| class="wikitable"
  +
|+ Course grading range
  +
|-
  +
! grade !! low !! high
  +
|-
  +
| A || 85 || 100
  +
|-
  +
| B || 65 || 84
  +
|-
  +
| C || 50 || 64
  +
|-
  +
| D || 0 || 49
  +
|}

Revision as of 16:20, 9 March 2022

Analytical Geometry \& Linear Algebra -- II

  • Course name: Analytical Geometry \& Linear Algebra -- II
  • Course number: XYZ

Course Characteristics

Key concepts of the class

  • fundamental principles of linear algebra,
  • concepts of linear algebra objects and their representation in vector-matrix form

What is the purpose of this course?

Course objectives based on Bloom’s taxonomy

- What should a student remember at the end of the course?

By the end of the course, the students should be able to

  • List basic notions of linear algebra
  • Understand key principles involved in solution of linear equation systems and the properties of matrices
  • Linear regression analysis
  • Fast Fourier Transform
  • How to find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition

- What should a student be able to understand at the end of the course?

By the end of the course, the students should be able to

  • Key principles involved in solution of linear equation systems and the properties of matrices
  • Become familiar with the four fundamental subspaces
  • Linear regression analysis
  • Fast Fourier Transform
  • How to find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition

- What should a student be able to apply at the end of the course?

By the end of the course, the students should be able to

  • Linear equation system solving by using the vector-matrix approach
  • Make linear regression analysis
  • Fast Fourier Transform
  • To find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition

Course evaluation

Course grade breakdown
type points
Labs/seminar classes 20
Interim performance assessment 30
Exams 50

Grades range

Course grading range
grade low high
A 85 100
B 65 84
C 50 64
D 0 49