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equipped with evolving, plastic neural networks models, which process visual information and drive motor action. These virtual agents will navigate in virtual reconstructions of ants' natural environment, so
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, Impresso - Media Monitoring of the Past (https://impresso-project.ch/ ) is an interdisciplinary research project that uses machine learning to pursue a paradigm shift in the processing, semantic enrichment
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imaging techniques) to the resulting visual appearance (measured with appearance-based methods). The post-doc will be supervised by Bilge SAYIM at the École Normale Supérieure (ENS), Université PSL, within
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focuses on the transfer of ionic and electronic charges at the interface of materials, which are the cause of many limitations and degradation processes in batteries. The goal is to characterize the state
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, including: - Cell culture (Biosafety Level 1 and 2) - Histology (tissue processing automaton, microtomes, cryostats) - Pulmonary function analysis (invasive and non-invasive plethysmographs) - Animal
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Inria, the French national research institute for the digital sciences | Talence, Aquitaine | France | 2 months ago
uses the task-based programming paradigm with the StarPU execution engine. The proposed topic will lead to further development of this h-matrice tool, in collaboration with the industrial partner
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. The BayesCompare project is a FNR funded project on Bayesian comparisons between artificial and natural representations to improve our understanding how natural and artificial intelligences process information
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security, artificial intelligence, image and text processing, microelectronics, etc. The laboratory is particularly involved in AI research, notably developing work on generative models to accelerate
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September 2025. We have recently shown the potential of dissolution DNP for metabolomics on a prototype instrument, and the new system will be key towards scaling up our hyperpolarized metabolomics workflow
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processing, involving machine learning techniques, as well as active participation in data collection from the detectors deployed on site. - Analysis of particle physics data applied to muography: filtering