Ullrich Koethe

Heidelberg University

Names

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Ullrich Koethe
,
Ullrich Köthe

Emails

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****@iwr.uni-heidelberg.de

Education & Career History

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Adjunct Professor
Heidelberg University (uni-heidelberg.de)
2018Present
 
Postdoc
Heidelberg University (uni-heidelberg.de)
20072018
 
Postdoc
Hamburg University (uni-hamburg.de)
20002007
 
PhD student
Fraunhofer Institute for Computer Graphics Research (igd.fraunhofer.de)
19921999
 
MS student
Rostock University (uni-rostock.de)
19861991
 

Advisors, Relations & Conflicts

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Coauthor
Rafaå‚ Tarnawski
****@gmail.com
20162016
 
Coauthor
Klaus Maier-hein
****@dkfz.de
20162016
 
Coauthor
Jens Kleesiek
****@uni-heidelberg.de
20162016
 
Coauthor
Joanna Polanska
****@polsl.pl
20162016
 
Coauthor
Bram Stieltjes
****@dkfz-heidelberg.de
20162016
 
Coauthor
Bram Stieltjes
****@usb.ch
20162016
 
Coauthor
Martin Schiegg
****@iwr.uni-heidelberg.de
20152015
 
Coauthor
Fred Hamprecht
****@iwr.uni-heidelberg.de
20152015
 
Coauthor
Anna Kreshuk
****@iwr.uni-heidelberg.de
20152015
 

Expertise

For each line, enter comma-separated keyphrases representing an intersection of your interests. Think of each line as a query for papers in which you would have expertise and interest. For example: deep learning, RNNs, dependency parsing

deep learning, normalizing flow, invertible neural networks, interpretable machine learning
2018Present