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of massive galaxies. A series of zoom-in cosmological simulations has been developed by the collaboration in order to understand the physical processes governing the extreme phases of early mass assembly in
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project focuses on estimating dead fuel produced by forest dieback. In previous projects, a processing chain using Sentinel-2 data has already been developed (Mouret et al., 2024). The objective here is to
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Inria, the French national research institute for the digital sciences | Villers les Nancy, Lorraine | France | 25 days ago
complexes. The successful candidate will develop novel graph neural network (GNN) architectures to learn dynamic information from molecular dynamics (MD) simulations of protein-protein and protein-nucleic
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. RAPSODEE is a laboratory with around 100 staff members conducting research in several fields, such as process engineering, energy and energy system optimisation. Context The European ORION project brings
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Inria, the French national research institute for the digital sciences | Bron, Rhone Alpes | France | about 1 month ago
optimise learning rules Process electrophysiological and behavioural datasets. Run numerical simulations to explore different learning time‑scales and environmental conditions. Work closely with
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to quantify experimentally and numerically due to the spatial variability of the microclimate within an agroforestry system and the existence of antagonistic processes. Nevertheless, successfully predicting
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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
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of the construct is continuons by essence and response shift could be envisioned as a continuons process. Furthermore, the study timescale has often to be treated as continuons rather than as discrete with equally
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to compute the predicted ZTs via first principles calculations. - Computer simulations: ML + DFT - Scripting (Python) - Analysis of the results + writing publications - The position is part of an ANR-DFG
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experiments on model aeronautical fuels to measure the products formed in this process and will develop analytical methods to monitor the kinetics. Main activities: - Bibliographic research, - experimental