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4 Mar 2025 Job Information Organisation/Company CNRS Department Conditions Extrêmes et Matériaux : Haute température et Irradiation Research Field Chemistry Physics Technology Researcher Profile Recognised Researcher (R2) Country France Application Deadline 24 Mar 2025 - 23:59 (UTC) Type of...
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), focusing on the study of spatial vision, appearance and redundancy masking. The research spans multiple levels, from the activation patterns of retinal cone cell ensembles (studied using adaptive optics
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from the CNRS, the researcher will have to apply and develop a CSP (crystal structure prediction) methodology for the prediction and in silico design of materials. This could be based on generative
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. Project summary: The postdoc/engineer positions are integrated within the framework of the Wellcome research programme Neurolight. Despite decades of effort, we still cannot predict seizures with good
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using classical molecular dynamics. The work will therefore involve defining a model and then carrying out all-atom simulations to understand and predict the properties of the confined solution. We will
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until 31/12/2025 Workload 1 607 hours per annum Mission development of predictive models for numerical simulation of material processing Principal activities Development of numerical tools for simulation
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paleogenomics profiles (eg, inbreeding, genetic load and ancestry profiles, demography, genetically-predicted performance and behavioral traits with isotope-based phenotype reconstructions (ie, mobility, diet
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specificities by molecular engineering. For this aim, he/she will exploit recent discoveries on the function of NLRs and innovative methods for modeling protein structures. This will enable him/her to predict
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for quantifying theoretical uncertainties and their impact on the confidence intervals of astronomical observables. This postdoctoral project aims to generate quantitative predictions for the key parameters
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to a national research project dedicated to the development of a predictability toolbox. This toolbox aims to analyze the worst-case temporal behavior of microarchitectures associated with embedded RISC