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criteria Applicants will be assessed on the quality and relevance of the project proposal, their academic grades and their academic and personal prerequisites to carry out the project. The hiring process
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. The hiring process will include an interview. Applicants must have prior education that corresponds to 5 years at the university level in Norway, with two years (120 ECTS) at the master’s level. If the scope
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Applicants will be assessed on the quality and relevance of the project proposal, their academic grades and applicants’ academic and personal prerequisites to carry out the project. The hiring process will
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the knowledge base for decision making through six key activities: assimilating rich Norwegian datasets into process-based models novel modelling of forest disturbances more robust modelling of soil accumulation
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manage sample processing for sequencing and phenotyping. • Design and execute common garden experiments to assess phenotypic plasticity and local adaptation. • Analyze and interpret high-throughput
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. The Post Doc research work will include the following topics and tasks: Contribute to the operation of RIMFAX on Mars Process and interpret RIMFAX GPR data from Mars Present RIMFAX results to the Mars 2020
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the assessment of the shortlisted applicants in particular. The application deadline is 1 September 2025. The screening and evaluation of candidates will begin immediately. We expect the whole evaluation process
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collaborative learning processes and practices. The PhD position can be connected to ongoing projects with a focus on collaborative learning and practice (especially, TeamLearn or CORPUS ), and make use
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the Faculty of Mathematics and Natural Sciences at the University of Oslo. We focus on the fundamental physics of geological processes related to: transport and reactions in deformable porous media, fracturing
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across Europe. The aim of NorSink is to improve the knowledge base for decision making through six key activities: assimilating rich Norwegian datasets into process-based models novel modelling of forest