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If you are ready to launch your research career in advanced manufacturing and want to build cutting-edge skills in AI and real-time data-driven production, this PhD opportunity is your gateway. As
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can read more about career paths at DTU here . Further information Further information may be obtained from Prof. Stefan Kragh Nielsen, skni@fysik.dtu.dk . You can read more about the section
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accomplished using methods such as reinforcement learning that should be initialized with information from human demonstrations. The developed method should be applied to the manipulation of flexible objects
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. The allowance will be agreed upon with the relevant union. Period of employment is 3 years. Starting date is expected to be 1 October 2025 or according to mutual agreement. Further information Further information
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, administration, tax, etc.), especially for international candidates through our international staff office (ISO) and the administrative staff at POLIMA. For further information and details about the position
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information on the QM centre, please visit https://www.sdu.dk/en/qm . Application deadline: 1 August 2025 at 23:59 hours local Danish time. Contact information - Questions should be directed to (qm@sdu.dk
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Senior Researcher in Synthetic Biology and Metabolic Engineering of power-to-X utilizing Microorg...
information Further information may be obtained from Chief Scientific Officer and Chief Partnerships Officer Dina Petranovic Nielsen dpet@biosustain.dtu.dk You can read more about DTU Biosustain at https
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institutions. Further information For further information about the position, please contact Christian Bøtcher Jacobsen, christianj@ps.au.dk , +4587165431. If you need help uploading your application or have any
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' button Further information may be obtained from Professor Mayank Jain, maja@dtu.dk , +45 4677 4909. Technology for people DTU develops technology for people. With our international elite research and study
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algorithms. Graph Neural Networks. The candidate is expected to hold a relevant MSc degree in Computer Science, Data Science, Physics, (Applied) Mathematics, Computational Statistics or another field