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development, yield and reproducibility improvement, and detailed analysis of optical and electrical device performance. Once optimized, the laser sources will be integrated with a high-speed photodiode
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elsewhere as part of the same ANR project will be performed. Refractory high-entropy alloys (RHEAs) with a body-centered cubic (bcc) structure are single-phase solid solutions composed of elements such as Ti
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stability analysis and control, machine learning, dimensionality reduction and high-performance computing. Where to apply Website https://emploi.cnrs.fr/Offres/Doctorant/UPR3346-NADMAA-159/Default.aspx
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artificial intelligence and genomics. The institute also has high-performance computing infrastructure (hundreds of CPU cores, over 100 TB of storage) essential for processing the massive single-cell
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subsystem will be integrated into an experimental solar thermophotovoltaic platform at PROMES. The candidate will explore the operation of the system under realistic high-temperature conditions using
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, Infected macrophage populations. Perform parameter estimation using optimization and machine learning approaches Develop numerical schemes for high-dimensional structured PDEs (pseudospectral methods
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project. These datasets will combine information from high-resolution experiments (HR-DIC, HR-EBSD, nanoindentation mapping) and large-scale numerical simulations performed using advanced FFT-based crystal
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, deformation mechanisms and mechanical performance, ultimately enabling more efficient design and optimization of advanced structural materials. [1] https://www.pepr-diadem.fr/projet/ammetis-2/ [2] https
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project. These datasets will combine information from high-resolution experiments (HR-DIC, HR-EBSD, nanoindentation mapping) and large-scale numerical simulations performed using advanced FFT-based crystal
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, deformation mechanisms and mechanical performance, ultimately enabling more efficient design and optimization of advanced structural materials. [1] https://www.pepr-diadem.fr/projet/ammetis-2/ [2] https