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, your primary tasks involve conducting research where chronic pain outcomes are predicted from linguistic data. You contribute to the development of protocols, data analyses, drafting of manuscripts and
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research articles, arranging seminars and advisory board meetings etc. Some data management tasks will also be carried out by a student assistant for parts of the project period. The primary task
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staff of ~35 full and associate professors, a support-staff of ~30 people, ~150 PhD-students and postdocs and around 400 students. The Ravnsbæk Group consists of ca. 15 postdoctoral, PhD and master
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research projects in the field, and are also responsible for four courses on both the bachelor and master level. What we offer The department offers: a well-developed research infrastructure an exciting
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, bioconjugation, nucleic acid chemistry and therapeutics, and biosensors. The group currently consists of 4 postdocs, 5 PhD students, 5 master students, more younger students, and 1 technician. The laboratories
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a comparative way, historical and contemporary practices of informationally infrastructuring territory and population, which are the two main assets of modern institutions. The project builds
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genetic evaluations for improved breeding outcomes. The primary responsibility of the selected candidate will involve conducting genetic analyses of feed efficiency data to estimate breeding values, thereby
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(copies of diplomas for Master and PhD degrees). Diplomas can be in English or Danish, other materials must be in English. Supervisor and collaborators The work will be supervised by Professor Hanna
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Science, Software Engineering or related field. Solid research experience in Machine Learning, in particular in LLMs. Solid programming expertise in Python. Be the main author in at least one journal
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Denmark and abroad. Our main focus at Aarhus University is edge passivation of Si-based solar cells. You will be testing atomic layer deposition strategies with different materials on several different