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will help improve measurement-based practices and support the development of personalized, data-driven health services both regionally and internationally. After hiring, the candidate will develop a
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accelerating the green energy transition. For a position as a PhD Candidate, the goal is a completed doctoral education up to an obtained doctoral degree. You will be supervised by Professor Erlend Alfnes
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immediate leader will be the Head of Department. You will be supervised by Adjunct Professor Ole Øystein Knudsen, along with project coworkers from NTNU and SINTEF. About the project Hydrogen embrittlement
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Professor Laurent Georges. About the project Buildings are energy-flexible in the sense that they can move their loads in time, typically to provide services to the electricity or district heating grids (also
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the position. The position will be supervised by Prof. Casper Boks from the Department of Design and Assistant Professor Erica Löfström from the Department of Psychology. The Head of Department will be your
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scientists and professors in our team and among the project partners. The PhD candidate is foreseen to collaborate and work in the laboratories of NTNU and SINTEF Community, with supervisors from both NTNU and
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"Regulations concerning terms and conditions of employment for the posts of post-doctoral research fellow and research fellow, research assistant and resident ". Your qualifications for the position, based
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to enhance fairness such as video-assisted refereeing (VAR), and the (unequal) distribution of resources in the sport system. The ethics of performance-enhancing technologies: Such technologies range from
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are looking for a motivated PhD candidate that can help us to provide with a functionalization method for graphene materials to our industrial partners, and that welcome challenges with open arms. Your
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”, led by Associate Professor Valeria Vitelli. Successful candidates will work on Bayesian models for unsupervised learning when multiple data sources are available, mostly tailored to the case