Allgemeine Informationen
| Veranstaltungsname | Vorlesung: 6171 V Data Visualization |
| Untertitel | |
| Veranstaltungsnummer | 6171 V |
| Semester | SoSe 26 |
| Aktuelle Anzahl der Teilnehmenden | 111 |
| erwartete Teilnehmendenanzahl | 35 |
| Heimat-Einrichtung | Juniorprofessur für Kognitive Sensorsysteme |
| Veranstaltungstyp | Vorlesung in der Kategorie Lehre (mit Prüfung) |
| Nächster Termin | Montag, 13.04.2026 12:00 - 14:00 Uhr, Ort: (ITZ) SR 002 |
| Art/Form | |
| Teilnehmende |
M.Sc. Artificial Intelligence Engineering, Modul Group “Artifical Intelligence Methods" M.Sc. Computer Science, Module Group “Intelligent Technical Systems“ |
| Voraussetzungen |
none |
| Lernorganisation |
60 h presence, 60 h exercises, 60 h revisiting lecture materials |
| Leistungsnachweis |
Portfolio The grade for Data Visualization will be based on the practical implementation work and the theoretical knowledge. The performance evaluation of the exercise course (6171 UE) focusses on the implemented programming tasks in terms of the selected visualization paper. For a positive assessment, the students must present the selected article and their implementation concepts. The implementation quality, functionality, and usability as well as the documentation of code and functionality will be evaluated. Finally, the students will present and demonstrate their final implementation. The score for the grading results is given as follows: • 1st presentation of the article incl. implementation concept (10 points) • Implementation of the article’s underlying technique (45 points) • Functionality and usability (15 points) • Documentation of code + functionality (10 points) • 2nd presentation and demonstration of the implementation (20 points) The lecture part (6171 V) will be evaluated in an oral exam (approx. 15 min) of the presented lecture content, in which the achievement of the teaching objectives will be checked. For a positive evaluation of Data Visualization, both exercise and lecture have to be completed positively. |
| SWS |
2V+2Ü |
| Literatur |
• Chen, Hauser, Rheingans, Scheuermann: Foundations of Data Visualization, 2019 • Telea: Data Visualization – Principles and Practice, Second Edition AK Peters Verlag, 2014. • Munzer: Visualization Analysis and Design, AK Peters Verlag, 2014. • Hansen, Johnson: The Visualization Handbook, 2005 • Hansen, Chen, Johnson, Kaufman, Hagen: Scientific Visualization - Uncertainty, Multifield, Biomedical, and Scalable Visualization, 2014 • Kim Marriott, Falk Schreiber, Tim Dwyer, Karsten Klein, Nathalie Henry Riche, Takayuki Itoh, Wolfgang Stuerzlinger, Bruce H. Thomas, Immersive Analytics, 2018 • Keim, Kohlhammer, Ellis, Mansmann: Mastering the Information Age - Solving Problems with Visual Analytics, 2010 • Ward, Grinstein, Keim: Interactive Data Visualization: Foundations, Techniques, and Applications, 2010. • Ware: Information Visualization, Second Edition: Perception for Design, 2004 • Aigner, Miksch, Schumann, Tominski: Visualization of Time‐Oriented Data, Springer Verlag, 2011. • Further materials in the lecture slides |
| Hinweise zur Anrechenbarkeit | |
| Turnus |
every summer semester |
| ECTS-Punkte |
6 |