149 parallel-processing-bioinformatics Fellowship research jobs at University of Oslo
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leaders and teachers. Applicants should demonstrate strong motivation and relevant qualifications to participate in all stages of the research process—from data preparation and analysis to the dissemination
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decisions making processes, how economic reasoning and other forms of expertise are taken into account, and how dilemmas and conflicts in processes towards accomplishing good licensing procedures
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interaction processes and their impact on subsurface architecture and petrophysical and rock physical evolution in mafic and ultramafic rocks during CO₂ injection and mineralization. Emphasis will be placed
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Republic, Türkiye, Nigeria, India, Colombia and Norway. The candidate is also expected to: Write research articles Assist the PI in the daily operation of the project Be co-responsible in the operation of TSD
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from the project Assist the PI in the daily operation of the project Qualification requirements The applicant must hold a degree equivalent to a Norwegian doctoral degree (PhD) in Sociology of Law
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, the quality of the PhD dissertation and publications, the applicant’s personal prerequisites and motivation to carry out the project and teach at the department. The hiring process will include an interview
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, BioM will unite ecology, statistics, and philosophy to improve the modelling and governance of biodiversity under uncertainty. The project develops process-explicit, hierarchical models that capture key
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to participate in all stages of the research process—from data preparation and analysis to the dissemination of high‑quality scientific publications. In addition, we are particularly interested in candidates with
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the beginning rather than the end of a process. On the premises of Sámi museums, and with the help of Sámi methodologies, MORE investigates how the consequences of the capital museums' management
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of biodiversity under uncertainty. The project develops process-explicit, hierarchical models that capture key ecological dynamics, integrate diverse and incomplete data sources, and account for uncertainty in ways