Programplaner og emneplaner - Student
MAPD5300 Aesthetics of Materiality Course description
- Course name in Norwegian
- Aesthetics of Materiality
- Study programme
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Master's Degree Programme in Product Design – Design in Complexity
- Weight
- 10.0 ECTS
- Year of study
- 2025/2026
- Curriculum
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FALL 2025
- Schedule
- Programme description
- Course history
-
Introduction
With the development of sensing technologies, transport digitalization generates and provides numerous data from different resources. This course will introduce models and applications of transport systems analysis in the context of transport studies and gain deeper insight into how these models help with the decision‐making process. Topics to be covered include data preprocessing, travel studies and analysis of data; machine learning methods; transportation systems forecast and analyses. Moreover, the course will provide a brief introduction to future sensing technologies and deep learning methods. The methods cover by this course will closely link to real world transport problem, such as travel demand modelling, accessibility, last-mile problem and other related issues.
Required preliminary courses
No formal requirements over and above the admission requirements.
Learning outcomes
After completing the course, the student is expected to have achieved the following learning outcomes defined in terms of knowledge, skills, and general competence:
Knowledge:
Upon successful completion of the course, the student will achieve knowledge about:
- terminology and models for transport studies
- statistical and machine learning methods
- advanced sensing technologies
- future development in the transport data analytics
Skills:
Upon successful completion of the course, the student is capable of:
- understanding and applying the proper knowledge and method to collect, process, and analyze transport data
- applying statistical and machine learning methods with a proper interpretation of the methods used in transport modelling
- making use of approved terminology and standardization in the field of transport analytics
- optimum use of data analysis software (Python)
- using the modelling methods to support intelligent transport system management and policy development
General competence:
Upon successful completion of the course, the student:
- has deep insight into the transport data collection and data analysis methods
- is able to apply proper methods to solve practical problems in different real-world conditions
- is able to understand and explain the results of transport models
- is able to present academic results and evaluations, both to specialists and to the general public
Content
Graded scale A-F.
Teaching and learning methods
The most important teaching and learning methods for this course are discussions, group work, lectures, studio courses and tutoring.
Course requirements
The following required coursework must be approved before the student can take the exam:
- One oral-presentation of theoretical approach.
- One oral-presentation of end-product.
Assessment
Two individual assignments must be approved. Students who fail to meet the coursework requirements can be given up to one re-submission opportunity.
Permitted exam materials and equipment
No restrictions.
Grading scale
1) Project report prepared in groups, (max size 6 students) approx. 15 - 25 pages (excl. appendices), weighted 70%.
2) Oral presentation in the same groups and examination of the project report, weighted 30%.
Grading is individual, which means that grades may differ within each group. Both oral and written examinations can be presented/written in teams. To ensure that individual grading should be possible, each group of students will provide a written and signed statement in where each individual's contribution is clearly stated and explained.
All assessment parts must be awarded a pass grade (E or better) to pass the course.
Assessment parts: 1) can be appealed, 2) cannot be appealed
Examiners
1) All aids are permitted, as long as the rules for source referencing are complied with.
2) None