Learning Vis Tools: Teaching Data Visualization Tutorials
Teaching and advocating data visualization are among the most important activities in the visualization community. With growing interest in data analysis from business and science professionals, data visualization courses attract students across different disciplines. However, comprehensive visualiz...
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Zusammenfassung: | Teaching and advocating data visualization are among the most important
activities in the visualization community. With growing interest in data
analysis from business and science professionals, data visualization courses
attract students across different disciplines. However, comprehensive
visualization training requires students to have a certain level of proficiency
in programming, a requirement that imposes challenges on both teachers and
students. With recent developments in visualization tools, we have managed to
overcome these obstacles by teaching a wide range of visualization and
supporting tools. Starting with GUI-based visualization tools and data analysis
with Python, students put visualization knowledge into practice with increasing
amounts of programming. At the end of the course, students can design and
implement visualizations with D3 and other programming-based visualization
tools. Throughout the course, we continuously collect student feedback and
refine the teaching materials. This paper documents our teaching methods and
considerations when designing the teaching materials. |
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DOI: | 10.48550/arxiv.1907.08796 |