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, Denmark (Gustav Wieds Vej 14, 8000 Aarhus). Contact information For further information, please contact: Prof. Brigitte Stadler, bstadler@inano.au.dk. Application procedure Shortlisting is used. This means
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(e.g., based on physiological signals or direct inputs from occupants) and developing algorithms, including machine learning methods. The work will include statistical modelling, data-driven modelling
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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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on post-training methods for these low-resourced languages, for example, by investigating the role of synthetic data, among other data augmentation techniques, and the role of in-context learning in
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Aabogade 40, 8200 Aarhus, Denmark, and the area of employment is Aarhus University with related departments. Contact information For further information, please contact: Head of section, Prof. Anders
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Engineering, Katrinebjergvej 89 G-F, 8200 Aarhus, and the area of employment is Aarhus University with related departments. Contact information For further information, please contact: Associate Prof. Pourya
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tissues and explore potential links with genetics and macromorphological characteristics. To this end, we will employ collection and analysis of tomographic data using state of the art synchrotron 3D
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-of-the-art techniques in extrusion, food structuring and multi-omic data. We also offer a great mentoring experience, a collaborative environment in which the candidate will be able to share across subfields
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tissues and explore potential links with genetics and macromorphological characteristics. To this end, we will employ collection and analysis of tomographic data using state of the art synchrotron 3D
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-of-the-art techniques in extrusion, food structuring and multi-omic data. We also offer a great mentoring experience, a collaborative environment in which the candidate will be able to share across subfields