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Centre de Mise en Forme des Matériaux (CEMEF) | Sophia Antipolis, Provence Alpes Cote d Azur | France | 8 days ago
of grain structures on welds with a high number of passes. see more here : https://www.cemef.minesparis.psl.eu/wp-content/uploads/2026/01/Phd_ATAL… Funding category: Financement public/privé PHD title
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, grain drills, fertilizer applicators, sprayers, forage-harvesters, combines and heads, trucks, mowers, loaders, and forage equipment to perform various fieldwork tasks efficiently and safely. ● Utilize
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study their structures and dynamics using multi-scale simulations, which include all-atom molecular dynamics (MD) simulations, coarse-grained MD simulations, quantum mechanics/molecular mechanics (QM/MM
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performing atomistic simulations with Density Functional Theory and Molecular Dynamics. Data analysis and coarse graining in order to provide parametrisations for upper scale models (Kinetic Monte Carlo and
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, - Write regular activity reports. Where to apply Website https://recrutement-unicaen.nous-recrutons.fr/poste/hviresbo9v-chercheur-euse-e… Requirements Research FieldBiological sciencesEducation LevelPhD
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to conduct standard agricultural field maintenance practices such as land preparation, planting, spraying, and harvesting of corn, soybean, wheat, grain sorghum, and forages in areas that will be utilized
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, particularly at the downstream toe of dikes, where seepage is most intense. However, the materials used in such emergency interventions are generally sourced near the site and do not always satisfy the grain
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Location Aberdeen Posting Context Statement The position supports the primary investigator in researching small grain agronomic and pathology issues for the Cereals Extension/Research Program in South
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material grains and effuse throughout its interconnected pore network to escape from the target. After that, the isotopes are directed towards an ion source where they are selectively ionized, extracted and
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kinetics, coarse-graining across time and length scales, machine learning from small and multi-fidelity datasets, and autonomous discovery workflows. You will collaborate with experimentalists at ETH Zurich