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technology Computer science » Cybernetics Physics Mathematics » Statistics Researcher Profile First Stage Researcher (R1) Positions PhD Positions Country Norway Application Deadline 18 Jan 2026 - 23:59 (Europe/Oslo) Type
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455 employees. The PhD specialisation NHH is pleased to announce vacancies in the Department of Strategy and Management . Candidates admitted to the PhD program will receive the title of PhD Research
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) Type of Contract Temporary Job Status Full-time Hours Per Week 37,5 Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Reference Number EU MCSA-DN prosjekt
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climate frameworks. Required selection criteria You must have a relevant Master's degree in Climate Sciences, Integrated Assessment Modelling, Industrial Ecology, Energy or Aerospace Engineering, Computer
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2 Dec 2025 Job Information Organisation/Company NTNU Norwegian University of Science and Technology Department Department of Engineering Cybernetics Research Field Computer science » Cybernetics
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project/work tasks: Development and testing of bioprinted hydrogel scaffolds for bone regeneration Evaluation of cytocompatibility and biosafety in vivo and in different in vitro models Validation
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455 employees. The PhD specialisation NHH is pleased to announce vacancies at the Department of Business and Management Science. Candidates admitted to the PhD programme will receive the title of PhD
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at other ENERPOL institutions, one admitted candidate will advance methods to compute and analyse energy-related household inequality (EHI) using granular Norwegian household data, and the second admitted
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Fotograf Morten Hjertø 21st November 2025 Languages English English English We are looking for a PhD Candidate in Hybrid Dynamical Modelling for Ship Response Predictions Apply for this job See
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, semantics, functional relationships, and actionable affordances, and enabling predictive reasoning to bridge gaps when observations are missing or unreliable. As an optional extension, a learned world-model