SRJC Course Outlines

11/21/2024 7:16:01 AMMATH 5 Course Outline as of Fall 2021

Changed Course
CATALOG INFORMATION

Discipline and Nbr:  MATH 5Title:  INTRO TO LINEAR ALGEBRA  
Full Title:  Introduction to Linear Algebra
Last Reviewed:2/8/2021

UnitsCourse Hours per Week Nbr of WeeksCourse Hours Total
Maximum4.00Lecture Scheduled4.0017.5 max.Lecture Scheduled70.00
Minimum4.00Lab Scheduled017.5 min.Lab Scheduled0
 Contact DHR0 Contact DHR0
 Contact Total4.00 Contact Total70.00
 
 Non-contact DHR0 Non-contact DHR Total0

 Total Out of Class Hours:  140.00Total Student Learning Hours: 210.00 

Title 5 Category:  AA Degree Applicable
Grading:  Grade Only
Repeatability:  00 - Two Repeats if Grade was D, F, NC, or NP
Also Listed As: 
Formerly: 

Catalog Description:
Untitled document
An introduction to linear algebra including the theory of matrices, determinants, vector spaces, linear transformations, eigenvectors, eigenvalues and applications.

Prerequisites/Corequisites:
Completion of MATH 1B or higher (MATH)


Recommended Preparation:
Concurrent enrollment in MATH 1C or MATH 2

Limits on Enrollment:

Schedule of Classes Information
Description: Untitled document
An introduction to linear algebra including the theory of matrices, determinants, vector spaces, linear transformations, eigenvectors, eigenvalues and applications.
(Grade Only)

Prerequisites:Completion of MATH 1B or higher (MATH)
Recommended:Concurrent enrollment in MATH 1C or MATH 2
Limits on Enrollment:
Transfer Credit:CSU;UC.
Repeatability:00 - Two Repeats if Grade was D, F, NC, or NP

ARTICULATION, MAJOR, and CERTIFICATION INFORMATION

Associate Degree:Effective:Inactive:
 Area:
 
CSU GE:Transfer Area Effective:Inactive:
 
IGETC:Transfer Area Effective:Inactive:
 
CSU Transfer:TransferableEffective:Spring 1989Inactive:
 
UC Transfer:TransferableEffective:Spring 1989Inactive:
 
C-ID:
 CID Descriptor: MATH 250 Introduction to Linear Algebra SRJC Equivalent Course(s): MATH5

Certificate/Major Applicable: Major Applicable Course



COURSE CONTENT

Student Learning Outcomes:
At the conclusion of this course, the student should be able to:
Untitled document
1.  Determine the dimensions of a variety of vector spaces.
2.  Find eigenvalues, eigenvectors and eigenspaces of matrices and linear transformations.
3.  Determine matrix representations of linear transformations and linear operators.
 

Objectives: Untitled document
At the conclusion of this course, the student should be able to:
1.   Solve systems of linear equations using Gauss-Jordan elimination, matrix inverses and
      Cramer's rule.
2.   Define matrix operations, invertibility, elementary matrices and orthogonal matrices.
3.   Use properties of determinants including row reduction to evaluate determinants.
4.   Invert matrices using adjoints and cofactors.
5.   Define vector spaces, subspaces, span, linear independence, bases, dimension, inner product
      spaces, and orthonormal bases.
6.   Determine the nullspace or kernel and range of a matrix and linear transformation.
7.   Determine the injectivity and surjectivity of linear transformations and linear operators.
8.   Define and determine dimension, rank and nullity of a matrix.
9.   Determine the matrix representation of a linear transformation using different bases and
      using change of basis.
10. Determine eigenvalues, eigenvectors and eigenspaces of matrices and linear transformations.
11. Apply proof writing techniques to prove basic results in linear algebra.
12. Utilize methods of linear algebra to solve application problems selected from science,
      engineering, and related fields.

Topics and Scope
Untitled document
I. Vectors
    A. Review of vectors in 2- and 3-dimensional real space
    B. Vectors in n-dimensional real space
    C. Properties of vectors in n-dimensional real space, including dot product, norm of a vector,
         angle between vectors, and vector orthogonality
II. Matrices
    A. Systems of linear equations
    B. Gauss-Jordan elimination
    C. Operations on matrices, including the transpose
    D. Invertibility
    E. Triangular matrices
    F. Elementary matrices
    G. Orthogonal matrices
III. Determinants
    A. Properties
    B. Evaluation by row reduction
    C. Cofactors and adjoints
    D. Formula for inverse of a matrix
    E. Cramer's rule
IV. Real Vector Spaces
    A. Defining properties
    B. Subspace
    C. Span
    D. Linear independence
    E. Basis
    F. Dimension
    G. Rank
    H. Solution space of a system of linear equations
    I. Inner product spaces
    J. Orthonormal bases
    K. Gram-Schmidt process
V. Linear Transformations
    A. Kernel
    B. Range
    C. Rank and nullity
     D. Matrix representation of linear transformation
    E. Similarity
    F. Change of basis
    G. One-to-one and onto
VI. Eigenvectors and Eigenvalues
    A. Characteristic equations
    B. Eigenspaces
         1. Diagonalization of matrices
         2. Orthogonal diagonalization of symmetric matrices
VII. Proofs applied to:
    A. Linear independence of vectors
    B. Properties of subspaces
    C. Linearity, injectivity and surjectivity of transformations
    D. Properties of eigenvectors and eigenvalues
    E. Vector spaces and subspaces
VIII. Applications including at least two of the following:
    A. Differential equations
    B. Fourier series
    C. Quadratic forms
    D. Gauss-Seidel method
    E. Partial pivoting
    F. Eigenvalues, eigenvalue approximations and eigenvectors
    G. Markov chains
    H. Computer graphics
    I.  Graph theory networks
    J. Dynamical systems
    K. Cryptography
    L. Least squares techniques
    M. Recurrence relations
    N. Balancing chemical equations
    O. Leontief input-output model
    P. QR decomposition
    Q. Rotated conic sections
IX. Technology - Computer Algebra Systems

Assignments:
Untitled document
1. Reading outside of class (5-50 pages per week)
2. Problem sets (15-30)
3. Midterm exams (2-5), quiz(zes) (0-20) and final exam
4. Project(s) (0-5), such as: computer labs, term projects, group projects

Methods of Evaluation/Basis of Grade.
Writing: Assessment tools that demonstrate writing skill and/or require students to select, organize and explain ideas in writing.Writing
0 - 0%
None
This is a degree applicable course but assessment tools based on writing are not included because problem solving assessments are more appropriate for this course.
Problem solving: Assessment tools, other than exams, that demonstrate competence in computational or non-computational problem solving skills.Problem Solving
5 - 20%
Problem sets
Skill Demonstrations: All skill-based and physical demonstrations used for assessment purposes including skill performance exams.Skill Demonstrations
0 - 0%
None
Exams: All forms of formal testing, other than skill performance exams.Exams
80 - 95%
Exams and quizzes
Other: Includes any assessment tools that do not logically fit into the above categories.Other Category
0 - 10%
Project(s)


Representative Textbooks and Materials:
Untitled document
Elementary Linear Algebra. 12th ed. Anton, Howard. Wiley. 2018
Linear Algebra and Its Applications. 5th ed. Lay, David C. Pearson. 2016 (classic)

Print PDF