Sort by
Refine Your Search
-
Listed
-
Country
-
Program
-
Employer
- Technical University of Denmark
- Aalborg University
- University of Copenhagen
- Copenhagen Business School
- Copenhagen Business School , CBS
- ;
- ; Technical University of Denmark
- Graduate School of Arts, Aarhus University
- Roskilde University
- University of Southern Denmark
- ; Aalborg University
- Aarhus University
- Geological Survey of Denmark and Greenland (GEUS)
- GlycoDisplay ApS
- King's College London
- Technical University Of Denmark
- University of Bergen (coordinating organisation)
- 7 more »
- « less
-
Field
-
of the English language Ability to communicate results in technical reports, and prepare scientific papers for publication in international conferences and journals You must have a two-year master's degree (120 ECTS points
-
already have a Master education) in areas related to(but not limited to) Bayesian deep learning, neural architecture search strategies(e.g. reinforcement-based), confidence estimation in deep neural
-
their outcomes. Methodologically, we value qualitative research methods highly and often adopt case study, field work methodology or social network analysis. The teaching responsibilities associated with
-
educational courses related to general and project-specific skills Visit and work with external partners to expand your scientific expertise. Disseminate scientific results in peer-reviewed articles Attend
-
educational courses related to general and project-specific research skills. Visit and work with external partners to expand your scientific expertise. Disseminate scientific results in peer-reviewed articles
-
or equivalent Research FieldEngineeringEducation LevelMaster Degree or equivalent Skills/Qualifications Specific Requirements The applicant should have completed at least four- or five years education with a
-
of PECS and wearable heating and cooling devices to provide comfort in these settings, and 3) Develop and improve PECS and wearable heating and cooling devices to deliver the necessary comfort and evaluate
-
and instruments that help to frame and make business issues visible and amenable to intervention, development, and control. The Department wishes to develop research and teaching in close connection
-
uncertainty to ensure that AI-driven solutions deliver accurate and trustworthy insights. In this project, our goal is to develop novel methods for uncertainty quantification in deep neural networks. In
-
The PhD programme Depending on your level of education, you can undertake the PhD programme as either: Option A: A three year full-time study within the framework of the regular PhD programme (5+3 scheme