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Vis Inf  2021, Vol. 5 Issue (1): 76-84    DOI: 10.1016/j.visinf.2021.02.003
论文     
VisLab| 维也纳技术大学的可视化实验室
Hsiang-Yun Wu, Aleksandr Amirkhanov, Nicolas Grossmann, Tobias Klein,David Kouřil, Haichao Miao, Laura R.Luidolt, Peter Mindek, Renata G.Raidou, Ivan Viola, Manuela Waldner, M. Eduard Gröller
TU Wien, Austria
Visualization Working Group at TU Wien: Visible Facimus Quod Ceteri Non Possunt
TU Wien, Austria
 全文: PDF 
摘要: 维也纳技术大学的可视化实验室创建于1994年,已在国际上活跃了27年。本文介绍了该实验室的主要研究方向,包括其在生物医学可视化、数学可视化、分子可视化、网络可视化、可视化感知等方面的成就。在接下来的几年中,实验室研究将重点研究动态系统和数据流的可视化。最后,将概述实验室感兴趣的研究领域,与实验室文化。
关键词: 可视化组可视化可视分析视觉模型视觉数据科学    
Abstract: Building-up and running a university-based research group is a multi-faceted undertaking. The visualization working group at TU Wien (vis-group) has been internationally active over more than 25 years. The group has been acting in a competitive scientific setting where sometimes contradicting multiple objectives require trade-offs and optimizations. Research-wise the group has been performing basic and applied research in visualization and visual computing. Teaching-wise the group has been involved in undergraduate and graduate lecturing in (medical) visualization and computer graphics. To be scientifically competitive requires to constantly expose the group and its members to a strong international competition at the highest level. This necessitates to shield the members against the ensuing pressures and demands and provide (emotional) support and encouragement. Internally, the vis-group has developed a unique professional and social interaction culture: work and celebrate, hard and together. This has crystallized into a nested, recursive, and triangular organization model, which concretizes what it takes to make a research group successful. The key elements are the creative and competent vis-group members who collaboratively strive for (scientific) excellence in a socially enjoyable environment.
Key words: Vis-group    Visualization    Visual analytics    Visual modelitics    Visual data science
出版日期: 2021-04-08
通讯作者: Hsiang-Yun Wu     E-mail: hsiang.yun.wu@acm.org
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Hsiang-Yun Wu
Aleksandr Amirkhanov
Nicolas Grossmann
Tobias Klein
David Kou?il
Haichao Miao
Laura R.Luidolt
Peter Mindek
Renata G.Raidou
Ivan Viola
Manuela Waldner
M. Eduard Gr?ller

引用本文:

Hsiang-Yun Wu, Aleksandr Amirkhanov, Nicolas Grossmann, Tobias Klein, David Kouřil, Haichao Miao, Laura R.Luidolt, Peter Mindek, Renata G.Raidou, Ivan Viola, Manuela Waldner, M. Eduard Gröller. Visualization Working Group at TU Wien: Visible Facimus Quod Ceteri Non Possunt. Vis Inf, 2021, 5(1): 76-84.

链接本文:

http://www.zjujournals.com/vi/CN/10.1016/j.visinf.2021.02.003        http://www.zjujournals.com/vi/CN/Y2021/V5/I1/76

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