Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- NTNU - Norwegian University of Science and Technology
- University of Oslo
- OsloMet
- UNIS
- University of Agder
- BI Norwegian Business School
- Nord University
- European Magnetism Association EMA
- NTNU Norwegian University of Science and Technology
- Oslo National Academy of the Arts
- University of Bergen
- University of South-Eastern Norway
- University of Stavanger
- Østfold University College
- 4 more »
- « less
-
Field
-
UiA. The successful candidate will spend 18 months at UiA followed by 18 months at the BE-CEM group at CERN, while remaining active in the PhD programme at UiA for the full 36 months. The PhD Candidate
-
UiA-CERN PhD Position in Multi-robot Mapping and Environmental Data Sharing - Uncertain Environments
UiA. The successful candidate will spend 18 months at UiA followed by 18 months at the BE-CEM group at CERN, while remaining active in the PhD programme at UiA for the full 36 months. The PhD Candidate
-
co-supervisors. Duties of the position Complete the doctoral education until obtaining a doctorate To undertake the necessary courses as part of the PhD program Perform research and report progress
-
algorithms for inference and decision-making by pushing the boundaries of the underlying computational techniques. SURE-AI researchers will drive a transformative leap in AI through a groundbreaking Centre
-
for recognition of foreign higher education You must meet the requirements for admission to a PhD Programme at the Faculty of Humanities. The most relevant PhD programme is in Historical and Cultural Studies Very
-
. The project will contribute to research within human–computer interaction and human factors on topics including: human–AI teaming in safety-critical work AI transparency and explain-ability in operational
-
alters molecules and their properties, with focus on photoexcited states. The candidate will be member of the eT program developer team (www.etprogram.org) and developed models will be implemented
-
to design and evaluate Artificial Intelligent (AI) systems with and for people, aligning AI technologies with human needs and values, situated at the intersection of AI and Human-Computer Interaction
-
program Arctic Ocean 2050. The successful applicant will work with zooplankton data from the High Arctic to address knowledge gaps in life history strategies, phenology and the distribution of key
-
. The programme is characterized by methodological and theoretical diversity. The training component consists of 30 ECTS credits and will support the work you do in the research component (the thesis