Sort by
Refine Your Search
-
Listed
-
Employer
- Leibniz
- Nature Careers
- GFZ Helmholtz-Zentrum für Geoforschung
- University of Greifswald
- Cluster of Excellence ROOTS
- FBN Dummerstorf
- Helmholtz Zentrum München - Deutsches Forschungszentrum für Gesundheit und Umwelt
- Helmholtz-Zentrum Dresden-Rossendorf - HZDR - Helmholtz Association
- Senckenberg Gesellschaft fuer Naturforschung
- Technical University of Munich
-
Field
-
part of the application and selection process, please refer to the privacy policy on our homepage at https://www.senckenberg.de/en/imprint/ Please visit our website at www.senckenberg.de for further
-
and communication work at our exhibition venues Museum Koenig Bonn and Museum der Natur Hamburg, we want to spread enthusiasm for nature and contribute with our research topics to current socio
-
research. We advance the understanding of dynamic processes to address global challenges, from mitigating the impacts of natural hazards and sustaining our habitat amid global change to responsibly managing
-
of the lab (Karagiannis et al. Nature 2022, Theodorou et al. BioRxiv 2024, Wientjens et al. Immunity 2025, ) and is focused on studying how different diets (e.g. high-fat diet, ketogenic diets) but also
-
’ (https://www.uni-kiel.de/en/jma ). With its Early Career Programs, the JMA offers a unique research environment positioned at the interface of the humanities, the natural, and the social sciences
-
Fraunhofer IGD and the FBN team to safeguard an efficient collaboration and communication between behavioural biologists and computer scientists. The project is part of the KI-Tierwohl project (https://ki
-
, an extension is possible Remuneration: Collective agreement of the German Länder, TV-L E13 The Senckenberg Society for Nature Research is a member of the Leibniz Association and has been
-
Computer ScienceCountryGermanyCityGreifswaldPostal Code17489StreetWalther-Rathenau-Str. 47Geofield Contact City Greifswald Website http://www.uni-greifswald.de/?L=1 Street Domstraße 14 Postal Code 17489 E
-
practical experience in machine learning, especially deep learning and its practical application in the domain of language processing and sensor analysis Solid practical experience in the field of natural language
-
of the General Data Protection Regulation (GDPR) http://go.tum.de/554159 regarding the collection and processing of personal data in the context of your application. By submitting your application, you confirm