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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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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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National Aeronautics and Space Administration (NASA) | Fields Landing, California | United States | 1 day 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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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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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 machine-learned interatomic potentials, in the context of chemical research. Knowledge of atomistic and coarse-grained classical force fields. Experience creating and maintaining scientific software
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partners, and other national laboratories. Objective: Enhance THAPI: Extend and optimize the THAPI profiler (https://github.com/argonne-lcf/THAPI ) to concurrently profile AI/ML and ModSim components
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molecular dynamics simulations across multiple resolutions, most likely from the atomistic to the coarse grained level, using a variety of force fields and computational methods. Run large-scale simulations
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hydrogen production. Research activities include thin-film deposition by magnetron sputtering, surface modification through doping and grain boundary engineering, materials characterization, and evaluation