Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
of continental lithosphere, (2) provide a definition to the ‘breakup’ stage in the Wilson Cycle together with a mapping toolbox, (3) characterize the initiation of an oceanic spreading centre. For this project
-
research fellowship (SKO 1017) in Innovation studies is available at TIK Centre for Technology, Innovation and Culture at the University of Oslo. The position forms a central part of the research project
-
indicators such as entanglement latency/throughput, multi-hop fidelity, and entanglement swapping success. A central focus is resilience and security, developing strategies and metrics to maintain dependable
-
international multi-centre studies. PRC is also in the leading role in several EU financed projects. For all areas, research-based strategies are being developed for implementing research findings into clinical
-
, routing, scheduling, and fault tolerance, assessed using relevant quantum performance indicators such as entanglement latency/throughput, multi-hop fidelity, and entanglement swapping success. A central
-
15 Feb 2026 Job Information Organisation/Company NORCE Norwegian Research Centre Department Energy and Technology Research Field Geosciences » Other Researcher Profile Recognised Researcher (R2
-
. The position is part of the project “Bergen Center for Ethics and Priority Setting (BCEPS)”, funded by the University of Bergen. We seek a motivated candidate who will be part of an interdisciplinary research
-
are few, tightly governed, and often one-way (e.g., via data diodes). At the same time, these infrastructures are typically multi-vendor: operations depend on equipment, software, and tooling from several
-
candidates within Modelling Strength and Failure in Recycled AluminiumAlloys funded through the Centre for Research-based Innovation SFI FAST – Future Aluminium Structures. The positions are linked
-
of Marine Technology , as part of the Norwegian Maritime AI Center (MAI) at NTNU . As a PhD candidate, you will conduct research to develop AI-driven methods for efficient methods for simulation-based testing