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Course Detail

Course Description

CourseCodeSemesterT+P (Hour)CreditECTS
LINEAR ALGEBRA-Spring Semester3+036
Course Program
Prerequisites Courses
Recommended Elective Courses
Language of CourseEnglish
Course LevelFirst Cycle (Bachelor's Degree)
Course TypeRequired
Course CoordinatorAssist.Prof. Cihan Bilge KAYASANDIK
Name of Lecturer(s)Assist.Prof. Cihan Bilge KAYASANDIK, Lect. Seçil TUNALI ÇIRAK
Assistant(s)Teaching assistant
Aim1. To provide the methods of solution of systems of linear equations and the applications of matrix and determinant. 2. To introduce the basic concepts of vector space, basis, dimension, linear dependency required to understand, construct, solve and interpret data spaces. 3. To give an ability to apply knowledge of mathematics on engineering problems
Course ContentThis course contains; Preliminaries: Matrices and Systems of Linear Algebraic Equations: Definitions and Notation,Matrix Algebra and Terminology and Notation for Systems of Linear Equations ,Elementary Row Operations, Row Echelon Matrices, Reduced Row Echelon Matrices and Solving Systems of Linear Algebraic Equations,Gaussian Elimination and Gauss Jordan Elimination Methods, and The Inverse of a Square Matrix ,Gauss Jordan Method, Determinants and Adjoint Method ,Elementary Matrices, LU Factorization, Cramer Rule ,Vector Spaces: Definition of a Vector Space, Subspaces and Spanning Sets ,Linear Dependency and Independency, Bases and Dimension ,Row and Column Spaces and The Rank-Nullity Theorem ,Inner Product Spaces and Orthogonality ,Eigenvalue/Eigenvector Problem: Eigenvalues and Eigenvectors and Eigenspaces ,Application of Eigenvalues and Eigenvectors Factorization ,Diagonalization and Singular Value Decomposition, Pseudo-inverse Calculation ,Linear Transformations, The Kernel and Range of a Linear Transformation and Further Properties of Linear Transformations .
Dersin Öğrenme KazanımlarıTeaching MethodsAssessment Methods
1. Recognize arithmetic operations with matrices, properties of matrices, elementary row operations on matrices and determine row echelon form (REF) and reduced row echelon form (RREF) for matrices and rank of a matrix. 12, 14, 9A, E
2. Calculate the solutions to the systems of linear equations from: Gaussian and Gauss-Jordan elimination method, the inverse of a matrix, Gauss-Jordan method, and find the value of determinant of a matrix. 12, 14, 9A, E
4. Recognize the importance of the concepts of a vector space such as subspace, spanning set, linear dependency and independency, basis and dimension, row and column spaces, the Rank-Nullity theorem, inner product spaces and orthogonality. 12, 14, 9A, E
5. Analyze eigenvalues and the corresponding eigenvectors and eigenspaces of the matrix, diagonalization and singular value decomposition, and pseudo-inverse of a matrix, and linear transformations and apply on engineering problems.12, 14, 9A, E
3. Analyze Adjoint Method to find the inverse matrix, elementary matrices, LU factorization and Cramer rule.12, 14, 9A, E
Teaching Methods:12: Problem Solving Method, 14: Self Study Method, 9: Lecture Method
Assessment Methods:A: Traditional Written Exam, E: Homework

Course Outline

OrderSubjectsPreliminary Work
1Preliminaries: Matrices and Systems of Linear Algebraic Equations: Definitions and NotationBook Chapter 3.1
2Matrix Algebra and Terminology and Notation for Systems of Linear Equations Book Chapters 3.2, 3.3
3Elementary Row Operations, Row Echelon Matrices, Reduced Row Echelon Matrices and Solving Systems of Linear Algebraic EquationsBook Chapter 3.4
4Gaussian Elimination and Gauss Jordan Elimination Methods, and The Inverse of a Square Matrix Book Chapters 3.5, 3.6
5Gauss Jordan Method, Determinants and Adjoint Method Book Chapters 3.6, 4
6Elementary Matrices, LU Factorization, Cramer Rule Book Chapters 3.7, 4.3
7Vector Spaces: Definition of a Vector Space, Subspaces and Spanning Sets Book Chapters 5.1, 5.2, 5.3, 5.4
8Linear Dependency and Independency, Bases and Dimension Book Chapters 5.5, 5.6
9Row and Column Spaces and The Rank-Nullity Theorem Book Chapters 5.7, 5.8
10Inner Product Spaces and Orthogonality Book Chapters 5.9, 5.10
11Eigenvalue/Eigenvector Problem: Eigenvalues and Eigenvectors and Eigenspaces Book Chapters 6.5, 6.6
12Application of Eigenvalues and Eigenvectors Factorization Book Chapters 6.7, other sources
13Diagonalization and Singular Value Decomposition, Pseudo-inverse Calculation Book Chapters 6.7, other sources
14Linear Transformations, The Kernel and Range of a Linear Transformation and Further Properties of Linear Transformations Book Chapters 6.1, 6.2, 6.3, 6.4
Resources
Differential Equations & Linear Algebra Second Edition, Stephen W. Goode. Prentice-Hall, Inc. 2000,1991.

Course Contribution to Program Qualifications

Course Contribution to Program Qualifications
NoProgram QualificationContribution Level
12345
1
1. An ability to apply knowledge of mathematics, science, and engineering
X
2
2. An ability to identify, formulate, and solve engineering problems
X
3
3. An ability to design a system, component, or process to meet desired needs within realistic constraints such as economic, environmental, social, political, ethical, health and safety, manufacturability, and sustainability
4
4. An ability to use the techniques, skills, and modern engineering tools necessary for engineering practice
5
5. An ability to design and conduct experiments, as well as to analyze and interpret data
6
6. An ability to function on multidisciplinary teams
X
7
7. An ability to communicate effectively
X
8
8. A recognition of the need for, and an ability to engage in life-long learning
9
9. An understanding of professional and ethical responsibility
10
10. A knowledge of contemporary issues
11
11. The broad education necessary to understand the impact of engineering solutions in a global, economic, environmental, and societal context

Assessment Methods

Contribution LevelAbsolute Evaluation
Rate of Midterm Exam to Success 30
Rate of Final Exam to Success 70
Total 100
ECTS / Workload Table
ActivitiesNumber ofDuration(Hour)Total Workload(Hour)
Course Hours13339
Guided Problem Solving000
Resolution of Homework Problems and Submission as a Report14684
Term Project000
Presentation of Project / Seminar000
Quiz000
Midterm Exam12222
General Exam12222
Performance Task, Maintenance Plan000
Total Workload(Hour)167
Dersin AKTS Kredisi = Toplam İş Yükü (Saat)/30*=(167/30)6
ECTS of the course: 30 hours of work is counted as 1 ECTS credit.

Detail Informations of the Course

Course Description

CourseCodeSemesterT+P (Hour)CreditECTS
LINEAR ALGEBRA-Spring Semester3+036
Course Program
Prerequisites Courses
Recommended Elective Courses
Language of CourseEnglish
Course LevelFirst Cycle (Bachelor's Degree)
Course TypeRequired
Course CoordinatorAssist.Prof. Cihan Bilge KAYASANDIK
Name of Lecturer(s)Assist.Prof. Cihan Bilge KAYASANDIK, Lect. Seçil TUNALI ÇIRAK
Assistant(s)Teaching assistant
Aim1. To provide the methods of solution of systems of linear equations and the applications of matrix and determinant. 2. To introduce the basic concepts of vector space, basis, dimension, linear dependency required to understand, construct, solve and interpret data spaces. 3. To give an ability to apply knowledge of mathematics on engineering problems
Course ContentThis course contains; Preliminaries: Matrices and Systems of Linear Algebraic Equations: Definitions and Notation,Matrix Algebra and Terminology and Notation for Systems of Linear Equations ,Elementary Row Operations, Row Echelon Matrices, Reduced Row Echelon Matrices and Solving Systems of Linear Algebraic Equations,Gaussian Elimination and Gauss Jordan Elimination Methods, and The Inverse of a Square Matrix ,Gauss Jordan Method, Determinants and Adjoint Method ,Elementary Matrices, LU Factorization, Cramer Rule ,Vector Spaces: Definition of a Vector Space, Subspaces and Spanning Sets ,Linear Dependency and Independency, Bases and Dimension ,Row and Column Spaces and The Rank-Nullity Theorem ,Inner Product Spaces and Orthogonality ,Eigenvalue/Eigenvector Problem: Eigenvalues and Eigenvectors and Eigenspaces ,Application of Eigenvalues and Eigenvectors Factorization ,Diagonalization and Singular Value Decomposition, Pseudo-inverse Calculation ,Linear Transformations, The Kernel and Range of a Linear Transformation and Further Properties of Linear Transformations .
Dersin Öğrenme KazanımlarıTeaching MethodsAssessment Methods
1. Recognize arithmetic operations with matrices, properties of matrices, elementary row operations on matrices and determine row echelon form (REF) and reduced row echelon form (RREF) for matrices and rank of a matrix. 12, 14, 9A, E
2. Calculate the solutions to the systems of linear equations from: Gaussian and Gauss-Jordan elimination method, the inverse of a matrix, Gauss-Jordan method, and find the value of determinant of a matrix. 12, 14, 9A, E
4. Recognize the importance of the concepts of a vector space such as subspace, spanning set, linear dependency and independency, basis and dimension, row and column spaces, the Rank-Nullity theorem, inner product spaces and orthogonality. 12, 14, 9A, E
5. Analyze eigenvalues and the corresponding eigenvectors and eigenspaces of the matrix, diagonalization and singular value decomposition, and pseudo-inverse of a matrix, and linear transformations and apply on engineering problems.12, 14, 9A, E
3. Analyze Adjoint Method to find the inverse matrix, elementary matrices, LU factorization and Cramer rule.12, 14, 9A, E
Teaching Methods:12: Problem Solving Method, 14: Self Study Method, 9: Lecture Method
Assessment Methods:A: Traditional Written Exam, E: Homework

Course Outline

OrderSubjectsPreliminary Work
1Preliminaries: Matrices and Systems of Linear Algebraic Equations: Definitions and NotationBook Chapter 3.1
2Matrix Algebra and Terminology and Notation for Systems of Linear Equations Book Chapters 3.2, 3.3
3Elementary Row Operations, Row Echelon Matrices, Reduced Row Echelon Matrices and Solving Systems of Linear Algebraic EquationsBook Chapter 3.4
4Gaussian Elimination and Gauss Jordan Elimination Methods, and The Inverse of a Square Matrix Book Chapters 3.5, 3.6
5Gauss Jordan Method, Determinants and Adjoint Method Book Chapters 3.6, 4
6Elementary Matrices, LU Factorization, Cramer Rule Book Chapters 3.7, 4.3
7Vector Spaces: Definition of a Vector Space, Subspaces and Spanning Sets Book Chapters 5.1, 5.2, 5.3, 5.4
8Linear Dependency and Independency, Bases and Dimension Book Chapters 5.5, 5.6
9Row and Column Spaces and The Rank-Nullity Theorem Book Chapters 5.7, 5.8
10Inner Product Spaces and Orthogonality Book Chapters 5.9, 5.10
11Eigenvalue/Eigenvector Problem: Eigenvalues and Eigenvectors and Eigenspaces Book Chapters 6.5, 6.6
12Application of Eigenvalues and Eigenvectors Factorization Book Chapters 6.7, other sources
13Diagonalization and Singular Value Decomposition, Pseudo-inverse Calculation Book Chapters 6.7, other sources
14Linear Transformations, The Kernel and Range of a Linear Transformation and Further Properties of Linear Transformations Book Chapters 6.1, 6.2, 6.3, 6.4
Resources
Differential Equations & Linear Algebra Second Edition, Stephen W. Goode. Prentice-Hall, Inc. 2000,1991.

Course Contribution to Program Qualifications

Course Contribution to Program Qualifications
NoProgram QualificationContribution Level
12345
1
1. An ability to apply knowledge of mathematics, science, and engineering
X
2
2. An ability to identify, formulate, and solve engineering problems
X
3
3. An ability to design a system, component, or process to meet desired needs within realistic constraints such as economic, environmental, social, political, ethical, health and safety, manufacturability, and sustainability
4
4. An ability to use the techniques, skills, and modern engineering tools necessary for engineering practice
5
5. An ability to design and conduct experiments, as well as to analyze and interpret data
6
6. An ability to function on multidisciplinary teams
X
7
7. An ability to communicate effectively
X
8
8. A recognition of the need for, and an ability to engage in life-long learning
9
9. An understanding of professional and ethical responsibility
10
10. A knowledge of contemporary issues
11
11. The broad education necessary to understand the impact of engineering solutions in a global, economic, environmental, and societal context

Assessment Methods

Contribution LevelAbsolute Evaluation
Rate of Midterm Exam to Success 30
Rate of Final Exam to Success 70
Total 100

Numerical Data

Student Success

Ekleme Tarihi: 09/10/2023 - 10:50Son Güncelleme Tarihi: 09/10/2023 - 10:51