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ou le béton, tirent leur cohésion des forces adhésives qui lient les grains entre eux, transformant le réseau de contacts en un système de contraintes de traction et de compression. Bien qu'efficace
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ou le béton, tirent leur cohésion des forces adhésives qui lient les grains entre eux, transformant le réseau de contacts en un système de contraintes de traction et de compression. Bien qu'efficace
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about the position, please contact: Ioana M. Ilie, Assistant Professor i.m.ilie@uva.nl Where to apply Website https://www.academictransfer.com/en/jobs/357772/postdoc-in-coarse-grained-model… Requirements
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of the binder at the contacts between grains, forming binder bridges that ensure the cohesion of the overall structure. This postdoctoral project is part of the BONDINGFOAM ANR project, which explores the use
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SPECIFICS Postdoctoral Scholar Opportunity Grain Crop Production Laboratory - Department of Plant Science - Penn State University https://plantscience.psu.edu/research/labs/grain-production-lab Position
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The research group Genomics of Genetic Resources (GGR) research focus is on small grain cereal genome analysis including aspects of structural, comparative and epigenomics mainly in the context
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fusion and intracellular cargo delivery. Using a combination of coarse-grained molecular dynamics simulations with the Martini force field and complementary biophysical approaches, we will elucidate
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. These insights will inform the rational design of coiled-coil peptide sequences with said features and assess their capacity to induce membrane fusion using Martini coarse-grained simulations. This research will
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National Aeronautics and Space Administration (NASA) | Fields Landing, California | United States | about 9 hours ago
that are used to interpret observations returned by NASA missions. The Laboratory Astrophysics Directed Work Package supports two broad science themes: 1) The PAH Universe, and 2) From Nano-grains to Carbonaceous
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modelling predictions. Experience or a strong interest in scientific programming and machine-learning-assisted data analysis for materials modelling is an advantage. PhD Position 2 – Coarse-Grained and