Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- NTNU - Norwegian University of Science and Technology
- NTNU Norwegian University of Science and Technology
- University of Bergen
- University of Oslo
- Nord University
- Norwegian University of Life Sciences (NMBU)
- OsloMet
- BI Norwegian Business School
- Molde University College
- NHH Norwegian School of Economics
- NTNU
- Nature Careers
- Norwegian Institute of International Affairs
- Norwegian Meteorological Institute
- Oslo National Academy of the Arts
- SINTEF
- Simula Metropolitan Center for Digital Engineering
- UiT The Arctic University of Norway
- Østfold University College
- 9 more »
- « less
-
Field
-
investigations will include material characterization, mechanical performance testing, rheological behavior, and durability assessments, with the goal of verifying and refining the predictive models. In the later
-
the literature and conduct the needed literature review work, Collect requirements from the stakeholders, Integrating the extracted requirements into services, Prototyping the necessary interfaces/software, Plan
-
research stays at foreign educational institutions. Other career-promoting work. Familiarize yourself with the literature and conduct the needed literature review work, Collect requirements from
-
Proven capability to conduct relevant, top-level scientific research, Excellent understanding of IP networking across various wired and wireless technologies and scenarios from host-internal communications
-
on high latitude ecosystems undergoing permafrost degradation. The candidate will have the opportunity to conduct parts of the PhD work at an observational site located in northern Norway. At the site
-
opportunity to conduct parts of the PhD work at an observational site located in northern Norway. At the site, the group conducts field campaigns to understand how permafrost thaw and local hydrological changes
-
, mammalian behaviour, and the environment. The mammalian eye and retina have evolved specific adaptations to cope with the light conditions encountered in their environment, including photoreceptor pigment
-
in crystalline rocks. Drilling optimization using machine learning, e.g. predicting rate of penetration (ROP) and wear. Investigate the possibilities in automation and robotization and the use
-
machine learning, e.g. predicting rate of penetration (ROP) and wear. Investigate the possibilities in automation and robotization and the use of artificial intelligence. Electric drilling and other methods
-
, Abstraction and Reasoning, Bio-Inspired and Neuro-Inspired AI, Artificial Evolutionary and Developmental Systems, Alignment, Social Learning and Cultural Evolution, and other Artificial Life techniques