course-details-portlet

TMA4180

Optimization 1

Credits 7.5
Level Second degree level
Course start Spring 2020
Duration 1 semester
Language of instruction English and norwegian
Location Trondheim
Examination arrangement Portfolio assessment

About

About the course

Course content

First and second order necessary and sufficient (Karush-Kuhn-Tucker) optimality conditions for unconstrained and constrained optimization problems in finite-dimensional vector spaces. Basics of convex analysis and Lagrangian duality theory and their application to optimization problems and algorithms. An overview of modern optimization techniques and algorithms for smooth problems (including line-search/trust-region, quasi-Newton, interior point and active set methods, SQP and augmented Lagrangian approaches). Basic derivative-free and non-smooth optimization methods.

Learning outcome

The student successfully meeting the learning objectives of the course will be able to:
(i) assess the existence and uniqueness of solutions to a given optimization problem;
(ii) validate convexity of functions, sets, and optimization problems;
(iii) derive necessary and sufficient optimality conditions for a given optimization problem;
(iv) solve small optimization problems analytically;
(v) explain the underlying principles and limitations of modern techniques and algorithms for optimization;
(vi) estimate the rate of convergence and complexity requirements of various optimization algorithms;
(vii) implement optimization algorithms on a computer;
(viii) apply optimization algorithms to model problems in engineering and natural sciences.

Learning methods and activities

Lectures, exercises and semester assignment. Portfolio assessment is the basis for the grade awarded in the course. This portfolio comprises a written final examination (70%) and the semester assignment (30%). The grade for the whole portfolio (course grade) is given by the letter grading system. Retake of examination may be given as an oral examination. Lectures will be given in English if international master or exchange students want to attend the course. If the course is taught in English, the exam will be given only in English. Students are free to choose Norwegian or English for written assessments.

Further on evaluation

In the case that the student receives an F/Fail as a final grade after both ordinary and re-sit exam, then the student must retake the course in its entirety. Submitted work that counts towards the final grade will also have to be retaken. For more information about grading and evaluation. see «Teaching methods and activities».

Course materials

Will be announced at the start of the course.

Credit reductions

Course code Reduction From
SIF5030 7.5 sp
This course has academic overlap with the course in the table above. If you take overlapping courses, you will receive a credit reduction in the course where you have the lowest grade. If the grades are the same, the reduction will be applied to the course completed most recently.

Subject areas

  • Mathematics
  • Technological subjects

Contact information

Course coordinator

Department with academic responsibility

Department of Mathematical Sciences

Examination

Examination

Examination arrangement: Portfolio assessment
Grade: Passed/Failed

Ordinary examination - Spring 2020

Arbeider
Weighting 30/100
Hjemmeeksamen
Weighting 70/100 Date Release 2020-05-25
Submission 2020-05-25
Time Release 09:00
Submission 13:00
Duration 4 hours Exam system Inspera Assessment