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Denmark. The project is led by Associate Professor Kim Andersen and includes Associate Professor Lene Heiselberg, Professor David Nicolas Hopmann, a PhD student, and the postdoc. The postdoc will work
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preparation of scientific papers. Coordinate project activities and manage day-to-day operations. Disseminate research findings to academic peers and policymakers. Contribute to the department’s teaching
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of Copenhagen (Department of Computer Science & Department of Geosciences and Natural Resource Management). The Postdoc will is expected to work closely together with other team members of the project. Work
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approximately 30 faculty members including senior (full and associate professors), junior (assistant professors and postdocs), PhDs, and support staff. The task portfolio of the postdoc will be linked to one main
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information may be obtained from Professor and Head of Research Group, Frank Aarestrup on fmaa@food.dtu.dk or Associate Professor, Philip Thomas Conradsen Clausen plan@food.dtu.dk Read more about the DTU
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Dilemmas in Combatting Group Inequalities” funded by the Independent Research Fund Denmark. The project is headed by Associate Professor Viki Lyngby Hvid whom the postdoc will be working closely together
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. The work will explore adaptive MAC designs that leverage waveform structure and context information to improve user management, access efficiency, and robustness. A key aspect of the research is the joint
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Aarhus University with related departments. Contact information Before applying or for further information, please contact: Associate Professor Aurelien Dantan, +4523987386, dantan@phys.au.dk . Deadline
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position, please contact Professor Farshad Moradi (moradi@sdu.dk / email ), Head of the SDU Microelectronics section and Associate Professor Hooman Farkhani (farkhani@sdu.dk / email ), Deputy Head of
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collaboration with our team. You will: Develop ML methods to handle conditional data generation mechanism in the development pipeline, and for optimization and simulation Develop ML methods for uncertainty