Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- NTNU Norwegian University of Science and Technology
- NTNU - Norwegian University of Science and Technology
- University of Oslo
- Norwegian University of Life Sciences (NMBU)
- University of Bergen
- Western Norway University of Applied Sciences
- NORCE Norwegian Research Centre
- UiT The Arctic University of Norway
-
Field
-
to evaluate and inform digital health interventions for women at increased risk of GDM. The project will primarily utilize data collected from a completed randomized controlled trial (https://bump2babyandme.org
-
learning. This PhD provides a unique opportunity to shape emerging concepts in Artificial Intelligence Informed Mechanics (AIIM), combining fundamental research with methodological innovation. You will gain
-
knowledge for a better world. You will find more information about working at NTNU and the application process here. About the position Are you looking for a PhD opportunity that combines rigorous AI research
-
. With its strategic location, just a short drive from Oslo, Gjøvik combines the best of urban life and natural experiences. Here, you'll find a dynamic business environment and exciting career
-
techniques to identify the enzymes, as well as protein purification and recombinant protein expression to get hold of the enzymes. The PhD student will be part of the large and international PEP group (https
-
, combining controlled polytunnel experiments, open-field trials, and root phenotyping. A research stay abroad at Wageningen University (The Netherlands) or Forschungszentrum Jülich GmbH (Germany) is planned
-
sustainable way. The work in the section combines marine ecology and aquaculture. As a PhD Candidate with us, you will work to achieve your doctorate, and at the same time gain valuable experience
-
advertisement Job description A three-year PhD fellowship in Neuroscience is available in the group of Dr. Matthijs Dorst (https://dorst-lab.org/ ), with co-supervision by Associate Professor Koen Vervaeke (https
-
lifecycle performance. A key outcome of SFI FAST is the development of the FAST Virtual Lab, a digital framework combining experimental data, physics-based models, and data-driven methods to support design
-
pushed the boundary of material science towards a revolution in developing materials that would offer unprecedented combination of properties such as strength and toughness. Recently, a new type of