COURSE SYLLABUS

State-of-the-Art in AI Research, 7.5 credits

Spetsforskning inom AI teknik, 7.5 högskolepoäng

Course Code: TSFS22
Confirmed: Nov 28, 2024
Valid From: Aug 31, 2026
Education Cycle: Second-cycle level
Disciplinary domain: Technology
Subject group: Computer Technology
Specialised in: A1F Second cycle, has second-cycle course/s as entry requirements
Main field of study: Computer Science

Intended Learning Outcomes (ILO)

On completion of the course the student shall:

Knowledge and understanding

Skills and abilities

Judgement and approach

Content

The course goes into depth in terms of selected topics and methods within AI, machine learning and their applications. Examples may include areas, such as computational intelligence algorithms in search, optimization and classification, natural language processing and FAT (fairness, accountability, transparency) aspects. Examples of relevant applications could include robotics, music, health and medicine.

The course is an advanced course in state-of-the-art research in the field of AI engineering. The course covers advanced research and recent trends in the field, alternating theory with practice. After completing the course, the student shall have acquired a broad knowledge of state-of-the-art research in the field of AI engineering. Specifically, the student should be familiar with state-of-the-art research and trends in the field, advantages and challenges of AI, areas in need of further research, and be able to evaluate and criticize a subset of the research topics covered.

The course includes the following elements:

Type of instruction

The teaching in the course consists mainly of lectures, discussion seminars and tutoring. The course content is based on contemporary developments in the AI field and presented by the course manager, members of the Jönköping AI Laboratory research group, invited guest speakers or the participants.

Language of instruction is English.

Entry requirements

Passed courses at least 90 credits within the major subject Computer Engineering, Computer Science, Electrical Engineering (with relevant courses in Computer Engineering), or equivalent, or passed courses at least 150 credits from the programme Computer Science and Engineering, and completed course Data Science Programming, 7,5 credits or equivalent. Proof of English proficiency is required.

Examination and grades

The course is graded 5, 4, 3 or U.

The examination consists of active participation in the discussion seminars, a presentation by the participants on a relevant state-of-the-art topic within the AI and machine learning domain, and a research project including the preparation of a draft paper. In order to pass the course and receive a final grade, a passing grade (pass or at least 3) is required for all examination components. The final grade is based on the research project with the associated draft paper.


Registration of examination:
Name of the Test Value Grading
Project 1 2.5 credits 5/4/3/U
Discussion Seminars 2.5 credits G/U
Final Seminar 2.5 credits G/U
1Determines the final grade of the course, which is issued only when all course units have been passed.

Course literature

Please note that changes may be made to the reading list up until eight weeks before the start of the course.

Compulsory readings may include books, book chapters or journal/magazine/conference articles.