35 post-doc-in-wireless-communication-and-networks-2016 Postdoctoral positions at Aarhus University in Denmark
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the skulls of head-first burrowing lizards? Then the Department of Chemistry invites you to apply for a 2.4 year post doc position in Henrik Birkedal’s research group. Expected start date and duration of
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relationship between society and the business community. As part of a Top 100 university, Aarhus BSS, and specifically the Department of Economics and Business Economics, has achieved the triple-crown AASCB
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experience with deep learning frameworks (e.g., PyTorch) Experience in working with time-series data Good understanding of Internet of Things, wireless communication network and systems Strong publication
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. Excellent communication skills in English and the ability to work collaboratively. The ability to direct and take ownership of research projects. Desirable Experience with the zebrafish model Experience with
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-field, and field-scale research facilities, advanced computing capacities as well as an extensive national and international researcher network. The department consists of nine research sections with
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metabolomes (targeted and untargeted) and plant transcriptomes In addition to collaborating with project partners, you will join an active and expanding community of PhD and Postdoc students in the plant
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electrochemical characterization Experience with either electrolysers or flow batteries Experience/engineering skills with construction of experimental setups Good skills in communication of research results
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candidate is expected to have high motivation and independence and good English communication skills as well as being a team player. Familiarity with openFoam and some experience in experimental methods is
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Department of Scandinavian Studies and Experience Economy within the School of Communication and Culture at Aarhus University invites applications for a postdoctoral position in Old Norse studies
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computational models to map co-expression networks and predict systemic disease transitions. Characterise intestinal microbiome changes and their correlation with inflammatory diseases. Computational modelling