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environmental geophysics. This PhD project aims to advance the process-based understanding of SSF by combining state-of-the-art geophysical methods with controlled field experiments and numerical modeling
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-based models that optimise and control pharmaceutical manufacturing processes effectively. Your main responsibility is to develop and enhance discrete element models (DEM), integrating physics-based
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for physics-based prediction of ionospheric potential response to solar wind variations. Earth Planets Space 75, 139 (2023). https://doi.org/10.1186/s40623-023-01896-3 4. Cochrane, C. J. et al. Single- and
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for the analysis of hyperspectral imaging data applied to pictorial layers, based on coupling physical radiative transfer models (two-flux and four-flux approaches) with machine learning methods. The researcher will
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sacrificing accuracy [7,9,13]. - Cascade Systems: Explore early-exit architectures and multi-stage inference to dynamically select the most appropriate model (from lightweight to heavyweight) based on real-time
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extremity orthopaedic biomechanics, including image-based biomedical modeling, clinical gait analysis, and development of surgical navigation tools and analytics. Collaborates with Orthopaedics, Sports
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Neuromodulation, and 3) Computational Psychiatry and Digital Mental Health. Our research team leverages task-based functional MRI, computational cognitive modeling, pharmacology, and physiological measures, and
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using methods such as Dynamic Mode Decomposition with control (DMDc). You will also assist in the development of predictive control approaches based on reduced-order models, and contribute to workflow
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of Psychology at Princeton University. Research in the lab focuses on the cognitive, computational and neural bases of cognitive control, using a combination of behavioral, neuroimaging, and AI modeling methods
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shaping will be central to the study. The numerical model will be based on the boundary element method (BEM) and semi-analytical approaches developed at I2M. The experimental proof-of-concept will leverage