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Stuttgart to work and exchange with the DLR team involved in the project. - PhD/Post-Doc in the field of economic modelling/simulation of energy systems. - Interest in the energy transition and in
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of quantum gases; Anderson problem - Numerical simulations of disordered and chaotic quantum dynamics This postdoctoral project focuses on studying a newly observed subdiffusive transport mechanism in
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to improve the energy resolution of jets at FCCee. This task will require again GEANT4 simulations of the detector, including the optical model but necessitates as well to educate the simulation with
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. With this project we want to investigate theoretically, with the help of simple toy models and numerical simulations, whether or not new phases of matter can be engineered by combining the unique
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evaluated on a complete simulation model of the storage system currently being developed in Stock-HD, then on a laboratory pilot installation. MISSIONS Carry out the research tasks specified in Stock-HD
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Inria, the French national research institute for the digital sciences | Bron, Rhone Alpes | France | about 1 month ago
dynamics in health and pathology; (2) in silico models, including Bayesian models, neural mass models and spiking neural networks; (3) in vitro neuronal network measurements. Our aim is to innovate in
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data, etc.). Build, calibrate, and validate numerical hydrogeological models (e.g., MODFLOW, FEFLOW, or equivalent) adapted to volcanic aquifer systems. Perform hydrological scenario simulations
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and development will therefore be critical for this assessment. Strategies for upscaling and completing datasets, including the use of process simulation tools such as HSC Chemistry should be explored
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self-supervised learning model, -Evaluating model performance using both simulations and experimental data, -Transitioning from a task-specific model to a foundation model, -Benchmarking results against
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optimize deep learning models, trained for the reconstruction of events generated with this simulation framework and targeting their application on a distributed trigger system based on several processing