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Welcome to the page of the Professorship for Data Assimilation

In order to be able to predict severe weather events or the melting of ice in the Arctic, information in the form of heterogeneous data must be linked with numerical models of dynamic systems. This is done through data assimilation, which makes it possible to better investigate processes and predict their further development.  In the field of data assimilation, the professorship is concerned with the further development of data science algorithms by incorporating physical conservation laws, and solving correspondingly large optimisation problems in the environmental sciences. Quantifying the uncertainties of predictions, numerical models and observations also plays a central role here.

About us

Prof. Janjic introduces herself and the chair

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Math News

(from left) Prof. Dr. Felix Voigtlaender, business consultant Prof. Dr. Georg Rosenfeld, MIDS spokesman Prof. Dr. Götz Pfander (participating online from the US), Vice President Prof. Dr. Jens Hogreve and Prof. Dr. Marcel Oliver at the press conference to introduce the new institute.

New Mathematical Institute for Machine Learning and Data Science launched at the KU

With its new Mathematical Institute for Machine Learning and Data Science (MIDS) the KU wants to contribute to academically mining the potential of…

Mathematical Institute for Machine Learning and Data Science

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The Heisenberg professorship is part of the Mathematical Institute for Machine Learning and Data Science, MIDS.
Learn more about MIDS here.