Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Chalmers University of Technology
- Umeå University
- Karolinska Institutet (KI)
- Linköping University
- Lunds universitet
- SciLifeLab
- Umeå universitet
- Blekinge Institute of Technology
- KTH Royal Institute of Technology
- Lulea University of Technology
- Luleå tekniska universitet
- Nature Careers
- University of Lund
- Göteborgs Universitet, Institution för kemi och molekylärbiologi
- Göteborgs universitet, Department of Marine Sciences
- IFM, Linköping University
- KTH
- Linköpings universitet
- Linnaeus University
- Luleå University of Technology
- Lund University
- Mälardalen University
- Sveriges Lantbruksuniversitet
- Uppsala universitet
- 14 more »
- « less
-
Field
-
Do you want to contribute to groundbreaking research in the development of a theoretical framework and numerical algorithms for evolving stochastic manifolds? This is an exciting opportunity for a
-
northern Sweden create enormous opportunities and complex challenges. For Umeå University, conducting research about – and in the middle of – a society in transition is key. We also take pride in delivering
-
AI and physics‑based simulation for complex mechanical systems. We are now seeking a postdoctoral researcher for a project aiming at physics‑informed autonomous control of machines operating in rough
-
the planning, implementation and development of behavioural studies. This includes field-based research in commercial and experimental farming environments, analysis of complex behavioural data, and leading
-
arithmetic complexity. Topics may include Arakelov geometry, birational and Calabi–Yau geometry, analytic torsion, and related height-theoretic or intersection-theoretic ideas. More details on the project
-
UnitedKingdomTime) Position Description: Apply Position Description The project involves mathematical modelling of complex fluid dynamics, in particular viscoelastic flows in nano-structures. The work involves
-
accurate, efficient, and robust AI models capable of operating effectively within complex and dynamic radiofrequency spectral landscapes, accounting for real-world interference, noise, and channel
-
algorithmic aspects related to the development of highly accurate, efficient, and robust AI models capable of operating effectively within complex and dynamic radiofrequency spectral landscapes, accounting
-
programming, physical modeling, machine learning, signal processing, and control engineering. Experience in implementing and integrating different methods in complex systems is considered meritorious. You
-
, machine learning, signal processing, and control engineering. Experience in implementing and integrating different methods in complex systems is considered meritorious. You should be clear in your