Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Chalmers University of Technology
- Nature Careers
- Swedish University of Agricultural Sciences
- Umeå University
- University of Lund
- Linköping University
- SciLifeLab
- Uppsala universitet
- Örebro University
- KTH Royal Institute of Technology
- Karolinska Institutet (KI)
- Linnaeus University
- Lunds universitet
- Mälardalen University
- 4 more »
- « less
-
Field
-
different mixing and reactive properties compared to conventional fuels. In this project, turbulent mixing and combustion of hydrogen in air will be studied through optical experiments and numerical modelling
-
numerical methods used to design wind turbines and understand turbulent combustion in jet engines, this research aims to address critical computational challenges in simulating the physical dynamics
-
to reduce the complexity in simulating lake physical dynamics at scale. Borrowing from numerical methods used to design wind turbines and understand turbulent combustion in jet engines, this research aims
-
to methods and principles aimed at understanding and modelling the mechanics of deformable bodies. Solid mechanics is a core discipline in mechanical engineering and is of fundamental importance to many other
-
application! Work assignments The Division of Automatic Control at the Department of Electrical Engineering has a vacant post-doctoral position in the area of numerical methods for motion planning and
-
propagation problems, stochastic partial differential equations, geometric numerical integration, optimization, biomathematics, biostatistics, spatial modeling, Bayesian inference, high-dimensional data, large
-
, which specializes in climate dynamics, numerical modeling, greenhouse gas emissions, and data-fusion methods, including data assimilation. This position offers opportunities for collaboration with both
-
. Main responsibilities Your main tasks will include: Conducting research involving numerical modeling and experimental work. Collaborating with academic and industry stakeholders. Publishing results in
-
, LSST, GaiaNIR, Euclid, NewAthena, etc.) to enhance the solutions and the overall science return. The combination of LISA and data from other projects would potentially allow a more accurate Galaxy model
-
results into practical applications for end users. Subject Description The research aims to develop machine learning models for microbe detection, focusing on the mathematical foundations in geometry and