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cellular dynamics. Analyze large-scale transcriptomic and spatial dynamics datasets. Work in close collaboration with the team's biologists to test predictions from statistical models. Within the Polarity
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Infrastructure? No Offer Description The postdoctoral researcher will contribute to the ANR-funded Pi-CANTHERM project, which aims to design, model, and predict the performance of new n‑type organic thermoelectric
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Université Grenoble Alpes, laboratoire TIMC, équipe GMCAO | Grenoble, Rhone Alpes | France | 21 days ago
multi-expert segmentation databases. The postdoctoral fellow will focus on integrating segmentation variability into deep learning models, with the goal of assessing prediction reliability and enabling
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possible sounding capabilities with current laser-produced sources, and (2) implementing experiments to test the predictions of these calculations and optimize the sources. The missions follow these lines
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and localization of a potential fault using the Matched Field Processing (MFP) method, based on the reconstruction of a response model of the inspected structure from the modal parameters predicted by
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performance of diagnostic tests when these tests are imperfect. The case of plague in Madagascar in 2017. ten Bosch et al, PLoS Biology 2022 Development of an ensemble model to forecast COVID-19
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OGVs: Design, Predictions and Comparisons With Measurements”, 30th AIAA/CEAS Aeroacoustics Conference (2024), vol. 7, no 2, June 2024, doi: 10.2514/6.2024-3160. [4] G.. Margalida, et al. “Comparison and
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The successful candidate will be responsible for: 1. Develop the numerical and analytical tools required to design these tunable random architectures and predict the mechanical behavior
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, · quantifying uncertainty in causal links, · integrating the resulting models into neural networks (or other machine learning models) to detect and predict anomalies or anticipate failures. The research
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, R. D., Lewis, S. L., Macgregor, C. J., Massimino, D., Maynard, D. S., Phillips, H. R. P., Rillo, M., Loreau, M., & Haegeman, B. (2025). Macroecological rules predict how biomass scales with species