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the State Pension Fund is deducted from the salary. The employment period is 3 years. For employment as a PhD Candidate, it is a prerequisite that you gain admission to the PhD programme in Materials Science
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. For employment as a PhD Candidate, it is a prerequisite that you gain admission to the PhD programme in Materials Science and Engineering (https://www.ntnu.edu/studies/phmt) within three months of your employment
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31st January 2026 Languages English English English The Department of Physics has a vacancy for a PhD position in computational physics PhD Position in Computational Condensed Matter Physics Apply
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technologies and the development of energy-efficient spintronic devices. Duties of the position Complete the PhD program within three years, including the successful completion of four mandatory courses. Carry
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gain admission to the PhD program in Engineering Cybernetics within three months of your employment contract start date, and that you participate in an organized doctoral program throughout the period
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is deducted from the salary. The employment period is 3 years. For employment as a PhD Candidate, it is a prerequisite that you gain admission to the PhD program in Engineering Cybernetics within
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1st February 2026 Languages English English English The Department of Engineering Cybernetics has a vacancy for a PhD Candidate PhD Candidate in Unified Autonomy across Robot Configurations Apply
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. For employment as a PhD Candidate, it is a prerequisite that you gain admission to the PhD program in Engineering Cybernetics within three months of your employment contract start date, and that you participate
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programme as a new employee at NTNU As a public employee, you have favourable benefits as a member of the Norwegian Public Service Pension Fund (SPK) . You will be employed as a PhD Candidate at NTNU and
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4th January 2026 Languages English English English The Department of Engineering Cybernetics has a vacancy for a PhD Candidate PhD Candidate in Learning-based Control for Autonomous Underwater