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neuroanatomy, neuroscience or a related field, and enjoy analysing neuroimaging data, scripting and data analysis? And are you passionate about medical imaging and its potential to improve our understanding
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discipline. Experience with deep learning framework PyTorch or similar. Strong background in machine learning, image or signal processing. Knowledge of SotA models for multi-modality and scene understanding
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. The Department of Molecular Cell Biology and Immunology is located in the vibrant O|2 Lab Building at the VU/Amsterdam UMC campus and houses excellent cytometry and imaging core facilities. The research performed
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funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description As a PhD student, you will be embedded in the research group Computational Imaging and
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, Biomaterials, Biomechanics, Tissue Engineering, Computational Biology, Biomedical Imaging and Modelling, with 800+ students and 200+ academic staff. Eindhoven University of Technology is an open and inclusive
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(University College Dublin) and Prof. Leo de Vreede (TU Delft). This position directly connects to DISRUPT’s planned work on efficient ML-based DPD, accelerator architecture, silicon tape-out, and prototype
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cancer prevention and improved survivorship. The project advances a paradigm shift: transport is no longer a source of negative impacts – such as safety issues and adverse health effects, but rather a
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practices. GenAI is no longer confined to automating routine tasks but increasingly produces outputs (e.g., texts, images, code) that were once the exclusive domain of human expertise. Despite growing
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into clinically relevant hypotheses and protocols. You analyze clinical, physiological, and imaging datasets with rigor and reproducibility. You publish your results in peer-reviewed journals, present
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for system and circuit simulation, apply modern analog/RF design methodologies, and participate in measurement and characterization of prototype chips. The project encourages creative thinking and