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international candidates are not required to learn Danish. What we offer The department offers a dynamic, interdisciplinary research environment with many industrial, national and international collaborators
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international candidates are not required to learn Danish. What we offer The department offers a dynamic, interdisciplinary research environment with many industrial, national and international collaborators
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for helping to grow the new lab and will collaborate closely with a PhD student already working on the project. In addition, the postdoc will be part of a vibrant and growing research environment
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or similar. Experience in handling dynamic modelling and control, experimental setup and testing, Digital Twin and Machine Learning Publication experience Collaboration and/or management skills Communication
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international candidates are not required to learn Danish. What we offer The department offers a dynamic, interdisciplinary research environment with many industrial, national and international collaborators
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, sense product yields, and do molecular computations for feedback control. The successful candidate will work in close collaboration with the RIBOTICS team and will be part of a vibrant research
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these experiences teach them lessons about their own fit in politically powerful positions. The two positions advertised in this call focus primarily on the second work package. The YOPOW research project runs
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. Researchers in the section teach the BSc and MSc programmes in animal and veterinary science and supervise PhD students and conduct research-based public sector consultancy for national and international
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the deadline for application. As a successful candidate you are expected to: shine in individual and collaborative research, either to assist groups of bachelor’s students in doing homework or co-teach advanced
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The Department of Ecoscience at Aarhus University invites applications for two postdoctoral positions to strengthen our research on image recognition, computer vision and deep learning applied