61 machine-learning-phd "Technical University of Denmark " positions at University of Copenhagen in Denmark
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
PhD Project in transcription factor biophysics Department of Biology Faculty of SCIENCE University of Copenhagen The Heidarsson group at the Section for Biomolecular Sciences invites applicants
-
The Department of Geosciences and Natural Resource Management (IGN) invites applicants for a PhD fellowship in oxygen-dependent enzymes and their pivotal role in conversion of biomass. This position
-
PhD Project in Neutral Atoms Niels Bohr Insitute Faculty of SCIENCE University of Copenhagen The Niels Bohr Institute, Faculty of Science at University of Copenhagen invites applicants for a PhD
-
Department of Geosciences and Natural Resource Management invites applicants for a PhD fellowship in Data-driven solution for sustainable food systems transition. Start date is expected to be 15th
-
PhD Project in Molecular Magnetic Materials Department of Chemistry Faculty of SCIENCE University of Copenhagen Department of Chemistry, Section for Inorganic Chemistry invites applicants for a PhD
-
Aarhus and the Technical University of Denmark (DTU). The aim of DaSSCo is to digitise the approximately 19 million natural history objects stored at the combined collections. Through digitisation of our
-
PhD Fellowship in Spatial Algorithms for Morphogenetic Patterning in Biological and Artificial Systems The Niels Bohr Institute invites applicants for a PhD fellowship in biocomplexity under
-
. Applicants must have excellent language skills in English and have excellent communications skills. Applicants must be able to teach at an academic level in Danish or English and to follow PhD courses in
-
), the Natural History Museum in Aarhus and the Technical University of Denmark (DTU). The aim of DaSSCo is to digitise the approximately 19 million natural history objects stored at the combined collections
-
Museum in Aarhus and the Technical University of Denmark (DTU). The aim of DaSSCo is to digitise the approximately 19 million natural history objects stored at the combined collections. Through