ACADEMICS
Course Details

ELE604 - Optimization

2024-2025 Fall term information
The course is not open this term
ELE604 - Optimization
Program Theoretıcal hours Practical hours Local credit ECTS credit
MS 3 0 3 8
Obligation : Elective
Prerequisite courses : -
Concurrent courses : -
Delivery modes : Face-to-Face
Learning and teaching strategies : Lecture, Question and Answer, Problem Solving
Course objective : It is aimed to give the following topics to the students; a) Recognising and classifying an optimisation problem, b) Tools for learning and analysing convex sets and functions, c) Basic algorithms used in solving convex optimisation problems, d) Duality concept in constrained problems and the techniques being used to apply them, mainly staying in the context of convex optimisation, so that they can solve problems which they may encounter with in their studies/projects.
Learning outcomes : Recognise and classify optimisation problems Model the problem s/he encounters with as an optimisation problem Know which algorithms can s/he use to solve the problem s/he established, know the advantages and disadvantages of these algorithms Apply the techniques and algorithms s/he learnt in the class to her/his thesis studies and also real-life applications Have the adequate knowledge to follow and understand advanced up-to-date optimisation algorithms
Course content : Brief reminder of linear algebra topics, Convexity, convex sets and functions, Gradiant Descent, Steepest Descent, Newton Algorithms and their variations for unconstrained problems, Constrained problems and Karush-Kuhn-Tucker Conditions, Modification of the above algorithms for unconstrained problems to constrained problems, İnterior Point Algorithms (Penalty ve Barrier Methods)
References : 1. Luenberger, Linear and Nonlinear Programming, Kluwer, 2002.; 2. Boyd and Vandenberghe, Convex Optimization, Cambridge, 2004.; 3. Baldick, Applied Optimization, Cambridge, 2006.; 4. Freund, Lecture Notes, MIT.; 5. Bertsekas, Lecture Notes, MIT.; 6. Bertsekas, Nonlinear Programming, Athena Scientific, 1999
Course Outline Weekly
Weeks Topics
1 Brief reminder of linear algebra topics
2 Brief reminder of linear algebra topics
3 Optimality conditions for unconstrained problems Convex Sets
4 Convex and concave functions Conditions for convexity Operations that preserve convexity
5 Quadratic functions, forms and optimization Optimality conditions Unconstrained minimization
6 Descent Methods Convergence
7 Algorithms: Gradient Descent Algorithm
8 Algorithms: Steepest Descent Algorithm
9 Algorithms: Newton?s Algorithm
10 Midterm Exam
11 Constrained optimization Duality
12 Optimality conditions, KKT Conditions Algorithms: Feasible Direction Method, Active Set Method
13 Algorithms: Gradient Projection Method, Newton?s Algorithm with Equality Constraints
14 Algorithms: Penalty and Barrier Methods
15 Study week
16 Final Exam
Assessment Methods
Course activities Number Percentage
Attendance 0 0
Laboratory 0 0
Application 0 0
Field activities 0 0
Specific practical training 0 0
Assignments 13 30
Presentation 0 0
Project 0 0
Seminar 0 0
Quiz 0 0
Midterms 1 30
Final exam 1 40
Total 100
Percentage of semester activities contributing grade success 60
Percentage of final exam contributing grade success 40
Total 100
Workload and ECTS Calculation
Course activities Number Duration (hours) Total workload
Course Duration 14 3 42
Laboratory 0 0 0
Application 0 0 0
Specific practical training 0 0 0
Field activities 0 0 0
Study Hours Out of Class (Preliminary work, reinforcement, etc.) 14 5 70
Presentation / Seminar Preparation 0 0 0
Project 0 0 0
Homework assignment 13 5 65
Quiz 0 0 0
Midterms (Study duration) 1 29 29
Final Exam (Study duration) 1 34 34
Total workload 43 76 240
Matrix Of The Course Learning Outcomes Versus Program Outcomes
Key learning outcomes Contribution level
1 2 3 4 5
1. Has general and detailed knowledge in certain areas of Electrical and Electronics Engineering in addition to the required fundamental knowledge.
2. Solves complex engineering problems which require high level of analysis and synthesis skills using theoretical and experimental knowledge in mathematics, sciences and Electrical and Electronics Engineering.
3. Follows and interprets scientific literature and uses them efficiently for the solution of engineering problems.
4. Designs and runs research projects, analyzes and interprets the results.
5. Designs, plans, and manages high level research projects; leads multidiciplinary projects.
6. Produces novel solutions for problems.
7. Can analyze and interpret complex or missing data and use this skill in multidiciplinary projects.
8. Follows technological developments, improves him/herself , easily adapts to new conditions.
9. Is aware of ethical, social and environmental impacts of his/her work.
10. Can present his/her ideas and works in written and oral form effectively; uses English effectively.
1: Lowest, 2: Low, 3: Average, 4: High, 5: Highest