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Associations. The allowance will be agreed upon with the relevant union. The period of employment is 3 years. Starting date is 1 January 2026 (or according to mutual agreement). The position is a full-time
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. The allowance will be agreed upon with the relevant union. The period of employment is 3 years. Starting date is 1 March 2026 (or according to mutual agreement). The position is a full-time position. You can read
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agreed upon with the relevant union. The period of employment is 3 years. Starting date: December 1st 2025 or as soon as possible thereafter. Note that the current position is based at DTU, Lyngby. You
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Job Description The Department of Civil and Mechanical Engineering of the Technical University of Denmark (DTU) has an open PhD position on the topic of “Automated machine polishing of complex mould
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the relevant union. The period of employment is 3 years. Start date is 1 January 2026 (or according to mutual agreement). The position is full-time. You can read more about career paths at DTU here . Further
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research in critical technology, which is subject to special rules for security and export control, open-source background checks may be conducted on qualified candidates for the position. The Department
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Job Description The Department of Civil and Mechanical Engineering of the Technical University of Denmark (DTU) has an open PhD position on the topic of “Automation of tool wear measurement and data
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control, open-source background checks may be conducted on qualified candidates for the position. At DTU Chemical Engineering it is our mission to develop and utilize knowledge, methods, technologies, and
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collaborative settings and wish to play a key role in an EU-funded project with researchers from multiple countries? If so, this PhD position could be a good opportunity for you. This project focuses
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with colleagues at DTU and IIT Bombay, as well as with academic and industrial partners globally. The main purpose of this PhD position is to develop, implement and assess machine learning models