Sort by
Refine Your Search
-
Category
-
Country
-
Employer
- NTNU - Norwegian University of Science and Technology
- Curtin University
- University of Southern Denmark
- Aalborg University
- University of Twente
- Nature Careers
- Susquehanna International Group
- Technical University of Munich
- University of Cambridge
- University of Copenhagen
- University of Groningen
- ;
- Aarhus University
- Blekinge Institute of Technology
- CWI
- Copenhagen Business School , CBS
- DAAD
- ETH Zurich
- Ghent University
- Imperial College London
- Monash University
- Queensland University of Technology
- SciLifeLab
- Technical University of Denmark
- Umeå University
- University of Adelaide
- University of Bern
- University of Bremen •
- University of British Columbia
- University of Nebraska–Lincoln
- University of Oslo
- University of Southern Queensland
- 22 more »
- « less
-
Field
-
control engineering, optimization algorithms Control of drones and flight experiments as well as knowledge in AI / Machine Learning would be an asset Outstanding academic records Teamworking experience, e.g
-
algorithm. Design methods: Develop novel control methods for power electronic converters feeding electric machine Simulation: Learn advanced simulation tools such as Ansys to simulate and analyze the effect
-
multiscale analysis of the mass distribution, as well as that of the flow field structure, and of the force and tidal field that has been shaping the cosmic web. The basic detection algorithms to infer
-
our software development team, developing novel scientific algorithms and applications in the areas of spectroscopic analysis and mining of the science data catalogues extracted from the pipelines
-
algorithms and deep learning models. Have proficiency in Python in a Linux environment and development experience using Tensorflow or PyTorch. Have strong linear algebra and computer vision knowledge. Have
-
, including local hydrogen and electricity markets, but also flexibility markets related for managing network congestion. Some specific topics that are relevant for this PhD position include (non-exclusive list
-
structure, and of the force and tidal field that has been shaping the cosmic web. The basic detection algorithms to infer the overall structure of the cosmic web are the various versions of the scale-space
-
of structures, facilitating a form-finding process driven by FEM analysis. Training deep learning algorithms to suggest multiple structural concepts tailored to specific boundary conditions. Expanding FEM
-
industrial partners and is partly externally funded by the KK Foundation. In co-production with our corporate partners and the community, we develop concepts, principles, methods, algorithms, and tools
-
to cutting-edge tools, algorithms, and large, high-quality seismic datasets. Occasional fieldwork to acquire data from temporary networks, providing you with hands-on experience in the field. A competitive