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the collaborative MURIDAE Cluster of the MRC National Mouse Genetics Network (NMGN, https://nmgn.mrc.ukri.org/clusters/muridae/ ). The MURIDAE project aims to elucidate how recently identified schizophrenia risk gene
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position within a Research Infrastructure? No Offer Description The Division of Synchrotron Radiation Research (http://www.sljus.lu.se ) is a part of the Department of Physics and has more than 50 employees
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(the Harvard Kenneth C. Griffin Graduate School of Arts and Sciences, founded in 1872), Harvard Athletics and the Division of Continuing Education. The 40 academic departments and 30+ centers of the FAS support
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the Oxford BRC Imaging Theme, and may be offered as a full-time or part-time bases on a fixed-term contract until March 2028, with further extension subject to funding. You will be based at RDM Division
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porosity value), with identification of the local fiber orientation; (ii) higher-resolution binarized (segmented) images. • Analyses: Quantification of porosity, pore size distribution, and calculation
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centres in Ontario. Sunnybrook Health Sciences Centre is the largest trauma centre in Canada. These programs provide the platform for the Cardiothoracic Imaging Division. The Medical Imaging Department has
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19 Dec 2025 Job Information Organisation/Company Karolinska Institutet (KI) Department Karolinska Institutet, Department of Neurobiology, Care Sciences and Society, Division of Clinical Geriatric
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program, a Bachelor of Science in AI, with two distinct streams: Business and Engineering, and are looking for passionate and highly motivated Teaching Faculty. The Undergraduate Division is seeking
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Computational Mathematics for reliable and trustworthy uncertainty quantification in science, engineering, and machine learning. Your workplace You will be employed at the Division of Applied Mathematics in a
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classification and object detection, semantic segmentation, video analysis and action recognition, scene understanding, medical image analysis, self-supervised and unsupervised learning for vision, vision-based