Sort by
Refine Your Search
-
at the Department of Informatics. Starting date no later than December 1, 2025. The fellowship period is three years. A fourth year maybe considered and it will involve 25 percent of other career-promoting work
-
Machine learning connected to the Scientific Computing and Machine Learning (SCML) group at the Department of Informatics. The candidate will be part of and contribute to the research activities in
-
(SCML) group at the Department of Informatics. The candidate will be part of and contribute to the research activities in the Climate Health project at the HISP Centre. Starting date as soon as possible
-
. Apply for this job See advertisement Job description Position as PhD Research Fellow in Data Quality and Integration in Circular Economy is available at the Department of Informatics, University of Oslo
-
different disciplines within the social sciences. The emphasis of the programme is organizational and work life studies: Organisasjon, ledelse og arbeid (master) – Universitetet i Oslo (Norwegian only
-
two-year, Norwegian language master’s programme with a student body from different disciplines within the social sciences. The emphasis of the programme is organizational and work life studies
-
motivation regarding completing the research training program Documented experience with research within the educational field, preferably learning sciences or educational psychology. Personal skills In
-
of their class with respect to academic credentials. Qualification requirements: Applicants must hold a degree equivalent to a Norwegian doctoral degree in epidemiology, biostatistics, computational biology, or a
-
to the successful completion of a PhD degree. The fellowship requires admission to the PhD programme at the Faculty of Mathematics and Natural Sciences. The application to the PhD programme must be submitted
-
is a new initiative that organises the local bioinformatics community and drives bioinformatics innovation by integrating computational and biological sciences to address complex life science