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Technical Sciences Tenure Track Aarhus University offers talented scientists from around the world attractive career perspectives via the Technical Sciences Tenure Track Programme. Highly qualified
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or prior experience with multilingual or low-resource NLP Programming skills in Python and proficiency in deep learning frameworks (e.g., PyTorch, TensorFlow) and their application in high-performance
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interdisciplinary research environments with high international impact. We perform world-class research, which contributes with solutions to solve essential societal challenges within the green transition: food
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sustainable food solutions, improved food security and high quality foods, and perform excellent research and teaching within these areas and develop synergies within the Department as well as other
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, experience in degree programme and curriculum development at universities or similar institutions will be an advantage. The successful applicant will be expected to teach in English and, within a three-year
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Sciences Tenure Track Programme. Highly qualified candidates are appointed as Assistant Professors for a period of six years with the prospect of performance- based advancement to a tenured Associate
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Are you experienced in strategic budgeting and managing R&D investments? Do you enjoy setting up and driving financial processes like performance management, business planning and financial strategy
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work involves business partners, and we often perform applied research. Hence, it is important that the candidates have an intention to conduct research on topics that are relevant to modern companies
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. The position is for 1 year, with the possibility for an extension of at least 1 additional year, based on performance and upon mutual agreement. Description of research project This project aims to develop novel
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, Fortran, or other relevant languages. Knowledge of statistical methods for climate data analysis. Experience with high-performance computing (HPC) environments. A strong publication record relative