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Experience with super-resolution ultrasound, US localization microscopy, photoacoustic imaging, elasticity imaging, pulse encoding, solving inverse problems, machine learning, AI, SolidWorks, 3D printing FLSA
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contacted to schedule an interview. Apply as soon as possible – application deadline: End of 2025. Website for additional job details https://www.univ-smb.fr/college-doctoral/wp-content/uploads/sites/92/2025
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Your Job: As a PhD candidate you will develop and deploy an artificial intelligence (AI) driven approach to streamline high-throughput experimentation (IMD-3: Institute of Energy Materials and
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the composition of the lower continental crust with the joint inversion of surface wave and receiver function data, see https://tinyurl.com/nsfawardlink. This team will target outstanding questions about the bulk
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theoretical and intellectual value, the research will benefit many applications, such as biomedical therapy, remote sensing, antenna/filter theory, and inverse problems in physics and engineering. Good working
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Job Description GENERAL DESCRIPTION The School of Medicine (SoM) Staff HR Shared Services team provides expert consultation and advanced support to SoM departments and Dean of Medicine units through
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, including machine learning, computer vision, adaptive data modelling, and computational imaging. The objective is to develop state-of-the-art machine learning algorithms for solving ill-posed inverse problems
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, inverse problem, machine learning. Expertise in the analysis of a wide range of geospatial and geodetic data sets. Strong expertise in programming with Python or MATLAB. As position requires stakeholder
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-from-motion, and object recognition. The main research problems include mathematical theory, algorithms, and machine learning (deep learning) for inverse problems in artificial intelligence, as
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and learned surrogates with clear statistical validation; Bayesian inverse problems and data assimilation via measure transport and amortized inference; robustness and distribution shift in scientific