169 computational-physics "https:" "https:" "https:" "https:" Fellowship positions in Norway
Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- University of Oslo
- UiT The Arctic University of Norway
- University of Bergen
- University of Stavanger
- NTNU Norwegian University of Science and Technology
- OsloMet – Oslo Metropolitan University
- University of Inland Norway
- Integreat -Norwegian Centre for Knowledge-driven Machine Learning
- NORCE Norwegian Research Centre
- NTNU - Norwegian University of Science and Technology
- Nord University
- OsloMet - storbyuniversitetet
- Simula Research Laboratory
- Simula UiB
- University of Agder
- University of Agder (UiA)
- University of Oslo;
- 7 more »
- « less
-
Field
-
et program som kan inneholde skadelige programmer eller virus. Hvordan nettsiden bruker cookies Cookies er nødvendig for å få nettsiden til å fungere. Cookies hjelper oss å få en oversikt over besøkene
-
' PhD programme at the University of Oslo (UiO). The fellows will be supervised by professors at the Departments of Social Anthropology and of Health and Society. The two dual degree candidates will also
-
inhibitors with improved efficacy The project offers a highly interdisciplinary research environment spanning computational chemistry, cell biology, physics, and materials science. The work will leverage GPU
-
-erklæringen var sist oppdatert 23.02.2026 Hva er en cookie? En cookie er en liten datafil som lagres på datamaskinen, nettbrettet eller mobiltelefonen din. En cookie er ikke et program som kan inneholde
-
UiO/Anders Lien 1st March 2026 Languages English English English PhD Research Fellow in Materials Physics and Chemistry for Energy-Efficient Solid-State Cooling Apply for this job See advertisement
-
-erklæringen var sist oppdatert 23.02.2026 Hva er en cookie? En cookie er en liten datafil som lagres på datamaskinen, nettbrettet eller mobiltelefonen din. En cookie er ikke et program som kan inneholde
-
Enhancement of AI/ML with in-network computing & processing Adaptation & optimization of AI/ML software libraries for non-conventional hardware architectures Physics-informed ML surrogates for efficient
-
to academic credentials. Required qualifications: Master's degree or equivalent in computer science, physics, applied mathematics, electrical engineering, cybernetics, data science, computational science
-
to the successful completion of a PhD degree. For more information see: http://www.mn.uio.no/english/research/phd/ Integreat provides a researcher training programme, INTREF — the Integreat Young Researchers’ Forum
-
for simulation and modeling of wave dynamics, and for uncertainty quantification of extreme events. The project will combine stochastic mathematical models of wave physics with advanced computational methods