Sort by
Refine Your Search
-
Listed
-
Employer
- Nature Careers
- Aarhus University
- University of Southern Denmark
- Aalborg University
- Technical University of Denmark
- University of Copenhagen
- Copenhagen Business School
- Roskilde University
- Aalborg Universitet
- Aarhus University;
- Queen's University Belfast
- Technical University Of Denmark
- 2 more »
- « less
-
Field
-
. During employment, the assistant professor will complete the Lecturer Training Programme . Employment will be in accordance with the collective agreement between the Ministry of Finance and the Danish
-
of computer science in proof assistants. Fluency in English is required. Questions? Curious to learn more about the position and environment? Please feel free to reach out to Professor and FORM Director Fabrizio
-
work is Universitetsbyen 81, 8000 Aarhus C, and the area of employment is Aarhus University with related departments. Contact information For further information, please contact: Assistant Professor, Thi
-
and Production Engineering, Faculty of Technical Sciences, Katrinebjergvej 89, 8200 Aarhus N. Contact information For further information please contact: Associate Professor Mahdi Abkar: abkar@mpe.au.dk
-
management, biodiversity protection, and climate change. The department also provides expert advisory services to ministries and authorities. While we do not run a master’s program in environmental science
-
have any questions? If you have any questions about the position, you are more than welcome to contact Professor Jesper de Claville Christiansen, jc@mp.aau.dk Further information Read more about our
-
aim to advance your career in experimental quantum optics and help shape the future of secure quantum communication, we encourage you to apply. Responsibilities and qualifications As a postdoctoral
-
Postdoctoral Position in Probabilistic Machine Learning for Spatio-Temporal Data Modelling A postdoctoral position is available at the Department of Computer Science, Aalborg University Copenhagen
-
biology, epidimological data and AI-driven systems modeling. The successful candidate will develop and apply computational and machine learning approaches to decode the molecular and epigenetic mechanisms