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(motivation letter, extensive CV, list of publications, contact details of three potential referees; everything in a single pdf file) by October 15, 2025, to Prof. Dr. Gerhard Jäger, Keplerstr. 2, 72074
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for applications and questions about the online application portal can be directed to the Dean of the Faculty of Science, Prof. Dr. Thilo Stehle, University of Tübingen, Germany (careerspam prevention@mnf.uni
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04.06.2025 Application deadline: 01.07.2025 The chair in Law and Artificial Intelligence at the Faculty of Law at the University of Tübingen, held by Prof. Dr. Michèle Finck currently has one
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Building. You will join the Research Unit for Molecular Pharmacology, led by Prof. Timo Müller. The group's research is dedicated to the development of innovative pharmacotherapies aimed at safely and
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and up to 5 relevant papers) must be submitted exclusively via the university’s Appointment Portal by Sept. 17, 2025. Enquiries may be directed to the Dean of the Faculty of Humanities, Prof. Dr
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the German Research Foundation (DFG), at the University of Tübingen. The project is led by Principal Investigators Prof. Dr. Michael Franke, Dr. Marlen Fröhlich (both Tübingen) and Prof. Dr. Manuel Bohn
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of Tübingen. The project is led by Principal Investigators Dr. Marlen Fröhlich, Prof. Dr. Michael Franke (both Tübingen) and Prof. Dr. Manuel Bohn (Lüneburg). The successful candidate will support the project
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algorithms in extremely complex and enormously large spaces motivated by physics and chemistry Developing interpretable AI for scientific discovery in physics (example here ) Formal mathematics (using Lean’s
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opportunity, diversity, and inclusion. Candidates with disabilities will be given preference if equally qualified. Contact for more information: Prof. Dr. Sebastian Thies (convenor) sekretariat.iberospam
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Foundation (DFG), at the University of Tübingen. The project is led by Principal Investigators Prof. Dr. Michael Franke and Dr. Todd Snider. The project seeks to investigate cognitively plausible models