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, Statistics, and Mathematics. Strong communication and analytical skills are also crucial for successful completion of the program. If applicants are otherwise equally qualified, female applicants will be given
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to your work duties after employment. Required selection criteria You must have a relevant Master's degree in in applied and computational mathematics, physics, geophysics, computer science, petroleum
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, Mathematics and Statistics. Strong communication and analytical skills are also crucial for successful completion of the program. If applicants are otherwise equally qualified, female applicants will be given
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computer science, mathematics, statistics, or a related area with very good results. Your course of study must correspond to a five-year Norwegian course, where 120 credits have been obtained at master's level. You
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scale You will join the research efforts at the Department of Water and Environmental Engineering at NMBU and contribute to its development. As a student in the PhD Programme for Science and Technology
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17 Sep 2025 Job Information Organisation/Company NTNU Norwegian University of Science and Technology Department Department of Engineering Cybernetics Research Field Computer science Researcher
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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 Is the Job related to staff position within
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have a relevant master’s degree in computer science, mathematics, statistics, or a related area with very good results. Your course of study must correspond to a five-year Norwegian course, where 120
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degree program, or equivalent education, equal to B or better. If the letter grades are not awarded, the candidate must have an equivalent academic basis to B or better compared to NTNU's grading scale
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-based control and decision-making for complex multi-agent systems. The project explores new computational frameworks that combine principled reasoning with the efficiency of modern machine learning