17 component-labeling-cuda Fellowship positions at UiT The Arctic University of Norway
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lines Perform proximity labeling assays, immunoprecipitations, and proteomics sample preparation Analyze fixed and live-cell imaging data using fluorescence microscopy Quantify autophagy flux and
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of temperature on the embryonic development of the hypothalamo-pituitary-interrenal (HPI) axis in Atlantic Salmon (Salmo salar). The position will be a part of the research group Aquaculture and
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Sámi parliamentary election in particular. The PhD fellow will benefit from being part of a larger research group. Active participation in the group is expected, and parts of the dissertation
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of the Learning domain (see contact information below) in order to get access to the full project proposal for C-LaBL. The project The advertised postdoc is part of the Learning domain in C-LaBL. This domain
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course is offered each year. The courses are part of the national research school of gender research. Centre’s university-wide responsibility is related to the dissemination of women's and gender research
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and documentation studies, as well as linguistics. The person hired in this position will be part of a research community with an excellent international reputation, and will also take part in a
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at SINTEF Ocean. The position also provides for part of the work to be done abroad to study biodegradation. You must be able to start in the position within a reasonable time after receiving the offer
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position as a PhD Fellow. The position is part of a broader research initiative and is aimed at investigating the mediation of "Sami religion" through art, media, and/or other aesthetic and cultural
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Resource Management and Development, Environmental and Resource Economics. The position is a part of our participation in the center for research-based innovation: SFI Dsolve - Biodegradable plastics
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psychiatry. The HDL and SPKI research groups are part of the Centre of Research-based Innovation SFI Visual Intelligence that is a center-of excellence in machine learning research. The research groups