Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Technical University of Denmark
- Aalborg University
- Nature Careers
- Copenhagen Business School , CBS
- Copenhagen Business School
- Technical University Of Denmark
- University of Southern Denmark
- Danmarks Tekniske Universitet
- University of Copenhagen
- Aarhus University
- Geological Survey of Denmark and Greenland (GEUS)
- ;
- ; Technical University of Denmark
- Center for Neuroplasticity and Pain (CNAP), Aalborg University
- Graduate School of Arts, Aarhus University
- 5 more »
- « less
-
Field
-
, you will be investigating if the current metrics for accessing code quality are valid, and then you will be improving them using programming language techniques. Your goal will be to measure the effect
-
at https://www.cbs.dk/en/research/phd-programme . Employment and salary A PhD scholarship runs for a period of three years and includes a requirement to contribute to SDC teaching programmes. This post
-
Decision Making under Risk and Ambiguity” (CentR-A) headed by Steffen Meyer and hosted by the Department of Economics and Business Economics. The Carlsberg Foundation funds CentR-A for a period of five years
-
of high-current power converters. Designing circuits, prototyping and testing in the lab. Any candidate who: has a good grasp of various power circuit topologies for DC-DC converters; is familiar with power
-
focus on teaching activities although you must contribute to teaching courses. In the DTU tenure track, after a maximum period of six years, researchers are evaluated and may be transferred to a permanent
-
agreed upon with the relevant union. The period of employment is 3 years. The position is available immediately, and the start date is as soon as possible, but this is negotiable. The position is a full
-
the scientific aspects of the stipend. PhD stipends are allocated to individuals who hold a Master's degree. PhD stipends are normally for a period of 3 years. It is a prerequisite for allocation of the stipend
-
. Variational Autoencoders, Normalized Flows, Generative Adversarial Networks) Have experience in developing fast algorithms for hard combinatorial optimisation problems. Have some knowledge about stochastic