Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Technical University of Denmark
- Aalborg University
- University of Southern Denmark
- Nature Careers
- Aarhus University
- Copenhagen Business School
- University of Copenhagen
- University of Southern Denmark;
- Aalborg Universitet
- Danmarks Tekniske Universitet
- Graduate School of Arts, Aarhus University
- Technical University Of Denmark
- 2 more »
- « less
-
Field
-
-quality Danish administrative register data and survey data. The project is funded by the Inge Lehmann Programme of the Independent Research Fund Denmark and led by Associate Professor Jeevitha
-
will be jointly supervised by Associate Professor Michael Bruhn Barfod and Associate Professor Dario Pacino. We are looking for candidates with a master’s degree in engineering, computer science, applied
-
and transport systems, within the ELLIS network. The project is fully funded through the Novo Nordisk Foundation Data Science Distinguished Investigator programme. You will be based in the Intelligent
-
opportunities in quantum and information technologies while advancing fundamental science. We refer to this emerging research area as Extreme Dielectric Confinement (EDC), and we invite you to become part of
-
international and interdisciplinary program, MICROSUNSET brings together experts from several disciplines as supervisors, forming a consortium of seven beneficiaries (see above) and fourteen associated partners
-
The Bioprocess Science and Engineering (BSE) group at DTU Chemical Engineering is amongst other activities developing novel methods to measure the kinetics and stability of enzymes under industrial
-
cell biology, protein chemistry and mass spectrometry, molecular microbiology and biophysics. For further information about the position please contact Professor Brage Storstein Andresen, PhD, FRCPath, e
-
PhD training network. This doctoral position is based at the Department of Psychology at University of Copenhagen. The position will be supervised by Associate Professor and Psychologist Dea Siggaard
-
scientific machine learning methods in close collaboration with team members specializing in experimental techniques and materials science. Utilize unique experimental data on the evolution of internal metal