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. At present there is specific interest in advanced 3D perception techniques such as geometric foundation models, implicit neural rendering (NeRF, Gaussian Splatting) as well as semantic mapping. Our research
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-dimensional statistics, Gaussian approximations, time series, point processes, extreme value theory. The successful applicant will be a highly motivated researcher, capable of working both independently as
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documentation, and support dissemination activities through presentations and publications Where to apply Website https://www.uam.es/uam/investigacion/ofertas-empleo/contrato-conjuntanoviembre2… Requirements
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. Quantifying the impact of microscale uncertainties on macroscale material performance through stochastic homogenization and uncertainty propagation methods, including Monte Carlo and Gaussian Process-based
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models. Experience in preparing scientific publications and the ability to collaborate within research teams. Additional requirements: Familiarity with small-scale or Gaussian atmospheric dispersion models
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preservation of cultural heritage. The project focuses on state-of-the-art techniques such as Neural Radiance Fields (NeRF) and Gaussian Splatting to reconstruct and render highly detailed and photorealistic 3D
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or equivalent academic or industrial experience. Experience in handling chemical datasets and tools (e.g., RDKit, DeepChem, Gaussian, ORCA, ChemML). Knowledge of modern machine learning techniques (e.g., deep
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, M. N. Schmidt, S. F. Nielsen, K. Banaszek, D. Zibar, “Mode Mismatch Mitigation in Gaussian-Modulated CV-QKD,” in Proceedings of the European Conference on Optical Communication (ECOC), 2025 - https
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in physics, chemistry, or related field Basic knowledge of ab-initio methods to address molecular excitations (e.g., Gaussian, NWChem, or any other quantum-chemistry software) Knowledge of quantum
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the application of computational fluid dynamics and Gaussian dispersion models (e.g., R-LINE, MOVES, AERMOD) to simulate pollutant behaviour, apportion source contributions, and evaluate mitigation