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on individualised data; (2) to speed up FE model computation through machine learning prediction, in order to make it usable in clinical routine; (3) to conduct experimental validation of FE prediction results, in
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the migration of Li from source to deposit. Published data containing information on Li partitioning between liquid and solid phases will be used to derive simplified chemical laws through machine learning
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informing users and the network of new settings. The goal is to define an adaptive multicast framework leveraging error correction and machine learning to optimize parameters in real time [8]. 1.2. Scientific
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interest for the machine learning and neuroscience communities How to apply... Applications should include: Curriculum Vitae Cover letter Early application is highly encouraged, as the applications will be
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interdisciplinarity, blending machine learning, computational creativity, and musicology. It bridges AI methods—like generative models—with musical structure, theory, and cultural contexts, emphasizing data-efficient
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20 Feb 2025 Job Information Organisation/Company IMT Atlantique Research Field Computer science Researcher Profile First Stage Researcher (R1) Positions PhD Positions Country France Application
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. T. (2022). Quantitative brain morphometry of portable low-field-strength MRI using super-resolution machine learning. Radiology, 306(3), e220522. [Winter2024] Winter, L., Periquito, J., Kolbitsch, C
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, machine learning, remote sensing, and oceanography to tackle the challenges of capturing and interpreting complex geophysical processes. 1.5. References [1] Torres, R., Snoeij, P., Geudtner, D., Bibby, D
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highly interdisciplinary, integrating network engineering, IoT device management, machine learning, and cybersecurity. It blends protocol optimization (Coreconf/YANG) with LLM-driven automation, enhancing
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transforming work modalities. These changes are redefining organizational balances and employee expectations. This PhD thesis explores to what extent the rise of corporate data exploitation tools (machine