Swedish name: Examensarbete för magisterexamen i datavetenskap med inriktning artificiell intelligens
This syllabus is valid: 2021-09-06 valid to 2023-12-31 (newer version of the syllabus exists)
Syllabus for courses starting after 2024-01-01
Syllabus for courses starting before 2023-12-31
Course code: 5DV215
Credit points: 15
Education level: Second cycle
Main Field of Study and progress level:
Computing Science: Second cycle, contains degree project for Master of Arts/Master of Science (60 credits)
Grading scale: Pass with distinction, Pass, Fail
Responsible department: Department of Computing Science
Established by: Faculty Board of Science and Technology, 2021-10-25
The student practices their ability to specify, plan, perform, and present an independent work. Through their work, the student integrates previous knowledge and immerses themselves in at least one Computing Science topic in Artifical Intelligence. The result of the work is presented in English both orally and in writing.
The course is partitioned into two modules.
Module 1. Independent work (14 credits)
The student performs the degree project as an independent work, either within the scope of a research project at the university or a development project in industry. The work shall concern some form of problem solving and lead to the formation of new knowledge. Therefore, it must not only consist of routine programming. The work must lead to subject specialization in relation to some previously completed course on the advanced level and shall relate to current research. The specialization shall be within a Computing Science topic in Artificial Intelligence and be of relevance to the independent work.
Module 2. Presentation (1 credit)
The student presents their work in writing, in the form of a scientific report, and defends it orally, in the form of a
public seminar. The student will also dispute someone else's work.
Knowledge and understanding
After completing the course, the student should be able to:
Competence and skills
After completing the course, the student should be able to:
Judgement and approach
After completing the course, the student should be able to:
To be admitted you must have a Bachelor's Degree and courses at the advanced level corresponding to 30 ECTS-credits out of which at least 15hp must be in Computing Science and include the following five courses (or equivalent):
- Fundamentals of Artificial Intelligence (5DV124),
- Artificial Intelligence - Methods and Applications (5DV181),
- Machine learning (5DV194),
- Responsible Design of Interactive AI-Systems (5DV211),
- and either Fundations of Logic and Model Theory (5DV102), or Statistics for Engineers (5MS069).
Depending on the focus of the Degree Project some extra prerequisites might be needed. Proficiency in English equivalent to Swedish upper Secondary course English A. Where the language of instruction is Swedish, applicants must prove proficiency in Swedish to the level required for basic eligibility for higher studies.
The teaching consists of independent work with individual supervision by a supervisor appointed by the department. The student is responsible for maintaining regular contact with the supervisor and manage their resources. If the work is external, then the external party will also appoint a supervisor.
Examination of Module 1. Independent work
The module encompasses ELO 2, 3, 6. The module uses the grade scale Fail (U), Pass (G). The assessment is carried out through an ongoing examination consisting of a written project plan submitted in connection to the planning of the work and a written project diary created during the project. Through an ongoing assessment of these documents, the examiner decides if the student has reached the module's expected learning outcomes or not.
Examination of Module 2. Presentation
The module encompasses ELO 1, 4, 5, 7. The module uses the grade scale Fail (U), Pass (G), Pass with distinction (VG). The assessment is carried out through a combination of three tests:
Grade on the course
The course uses the grade scale Fail (U), Pass (G), Pass with distinction (VG). When both modules are passed, then the grade on the course is set to the same as the grade on Module 2. If some module remains uncompleted at the end of the course, then the grade on the course is set to U.
Support due to disability
Deviations from the syllabus' modes of assessment can be made for a student who has a decision on pedagogical support
due to a disability. Individual adaptation of modes of assessment must be considered based on the student's needs. The
mode of assessment is adapted within the framework of the syllabus' expected learning outcomes. At the request of the
student, the course coordinator, in consultation with the examiner, shall promptly decide on an adapted mode of
assessment. The decision must then be notified to the student.
Change of examiner
A student who, without receiving a passing grade, has participated in two tests for a course or part of a course, has the
right to have another examiner appointed, unless special reasons militate against it (Högskoleförordningen 6 kap. 22 §). A
request for a new examiner is made to the head of the Department of Computing Science.
A student may request (but not demand) extra supervision resources past the end of the course. The request should be sent to the study director at the Department of Computing Science.
This course may not be included in a degree, in whole or in part, at the same time as another course with similar content. In case of doubt, the student should consult the study counsellor at the Department of Computing Science and/or the programme coordinator for their degree programme.
If the syllabus has expired or the course has been discontinued, a student who at some point registered for the course is guaranteed at least three examinations (including the regular examination) according to this syllabus for a maximum period of two years from the syllabus expiring or the course being discontinued.
No predetermined literature.