Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Employer
- Nature Careers
- Aarhus University
- University of Oslo
- Stony Brook University
- Technical University of Denmark
- MOHAMMED VI POLYTECHNIC UNIVERSITY
- Princeton University
- University of Oxford
- Angelo State University
- Argonne
- Chalmers University of Technology
- Copenhagen Business School , CBS
- Free University of Berlin
- Georgia Southern University
- King Abdullah University of Science and Technology
- Massachusetts Institute of Technology (MIT)
- NEW YORK UNIVERSITY ABU DHABI
- Oak Ridge National Laboratory
- The University of Arizona
- The University of Iowa
- University of Antwerp
- University of Lund
- University of Minnesota
- University of Nevada, Reno
- University of South Carolina
- University of Southern Denmark
- VIB
- 17 more »
- « less
-
Field
-
). The research project will develop a reliable framework to accelerate the development of novel high-power particle-production target material for advanced particle accelerator applications. A reverse modeling
-
subduction processes. A key aspect of the research involves utilizing seismically constrained crustal rheology and structure to inform and validate our models. The incumbent will need excellent oral and
-
subduction processes. A key aspect of the research involves utilizing seismically constrained crustal rheology and structure to inform and validate our models. The incumbent will need excellent oral and
-
characterization techniques with mechanical behavior and finite element methods. The postdoctoral candidate will develop the processes needed to connect mechanical testing data with 3D microstructure of nuclear
-
computational models to map co-expression networks and predict systemic disease transitions. Characterise intestinal microbiome changes and their correlation with inflammatory diseases. Computational modelling
-
computational models to map co-expression networks and predict systemic disease transitions. Characterise intestinal microbiome changes and their correlation with inflammatory diseases. Computational modelling