[Translate to Englisch:] MIDS Logo

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

Vorschaubild Youtube Tijana

Please note: By clicking on the image area, you give your consent for video content to be reloaded from YouTube, for YouTube/Google cookies to be stored on your IT system and for personal data such as your IP address to be passed on to Google. If you click on another video after having finished watching the video content, YouTube will open in a new tab of your browser and will collect more data from you. Further information is provided in our data protection notice and under Google Privacy .

Math News

Special collection on the topic atmosphere and ocean sciences

Prof. Tijana Janjic, Heisenberg Professorship for Data Assimilation is a lead editor for "Combined machine learning and data assimilation for the atmosphere and ocean sciences", a special collection of Quarterly Journal of the Royal Meteorological Society.

Prof. Janjic, who is also a member of MIDS, devotes her research to important areas of climate research. Some of her findings have now been published in a special issue:

"Atmosphere and ocean phenomena are governed by physical laws, span wide range of spatial and temporal scales, and are observed with a variety of instruments providing noisy, incomplete, and non-uniform in space and time data. Often of interest in environmental prediction are forecasts of rare and high impact events, while we strive in predicting the current state of the Earth system and its evolution."

Find the whole article here.

Mathematical Institute for Machine Learning and Data Science

[Translate to Englisch:] Logo MIDS

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