Reflections on Designing and Running Visualization Design and Programming Activities in Courses with Many Students
August 17, 2023 Β· Declared Dead Β· π 2023 IEEE VIS Workshop on Visualization Education, Literacy, and Activities (EduVis)
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Authors
SΓΈren Knudsen, Mathilde Bech Bennetsen, Terese Kimmie HΓΈj, Camilla Jensen, Rebecca Louise NΓΈrskov JΓΈrgensen, Christian SΓΈe Loft
arXiv ID
2308.08939
Category
cs.HC: Human-Computer Interaction
Citations
2
Venue
2023 IEEE VIS Workshop on Visualization Education, Literacy, and Activities (EduVis)
Last Checked
4 months ago
Abstract
In this paper, we reflect on the educational challenges and research opportunities in running data visualization design activities in the context of large courses. With the increasing number and sizes of data visualization course, we need to better understand approaches to scaling our teaching efforts. We draw on experiences organizing and facilitating activities primarily based on one instance of a master's course given to about 130 students. We provide a detailed account of the course with particular focus on the purpose, structure, and outcome of six two-hour design activities. Based on this, we reflect on three aspects of the course: First, how the course scale led us to thoroughly plan, evaluate, and revise communication between students, teaching assistants, and lecturers. Second, how we designed learning scaffolds through the design activities, and the reflections we received from students on this matter. Finally, we reflect on the diversity of the students that followed the course, the visualization exercises we used, the projects they worked on, and when to key in on simple boring problems and data sets. Thus, our paper contributes with discussions about balancing topical diversity, scaling courses to many students, and problem-based learning.
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