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. Principal supervisor is Prof. Charlotte Fløe Kristjansen, Niels Bohr Institute, kristjan@nbi.dk , +45518007. The PhD programme: A three year full-time study within the framework of the regular PhD programme
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Zhang (yong.zhang@bio.ku.dk ) Qualifications needed for the PhD programme To be eligible for the regular PhD programme, you must have completed a degree programme, equivalent to a Danish master’s degree
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. The PhD study must be completed in accordance with The Ministerial Order on the PhD programme (2013) and the Faculty’s rules on achieving the degree. Salary, pension and terms of employment are in
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, Chinese Academy of Sciences. E-mail: zmwei@semi.ac.cn The PhD programme Qualifications needed for the programme To be eligible for the regular PhD programme, you must have completed a degree programme
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Rossmeisl, Department of Chemistry, Jan.Rossmeisl@chem.ku.dk , Direct Phone: +45 5071 9584 The PhD programme Qualifications needed for the regular programme (5+3) To be eligible for the regular PhD programme
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Danish University, the Alexandra Institute, and the University of Copenhagen. The candidate will be co-supervised from both the Centre for Language Technology and the Department of Computer Science and
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program, and to teach modules at other bachelor and master programs offered at the Faculty of Health Sciences as well as to mentor undergraduate and PhD students. Candidates with the following competencies
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organising and conducting their own research project (under supervision). The programme culminates in the submission of a PhD thesis, which the student must defend in public. The programme is prescribed to 180
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stability, and computational efficiency. It is expected that the coding will be done with an open-source programming language. The field experiments have the aim of validating the modelling; they will involve
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cases involve various degrees of image analysis, so computer vision experience is a requirement. Experience with large language models is a plus. Furthermore, as AI:Epertise is about deploying AI in