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advanced transgenic models. This role offers you the chance to shape emerging research directions, contribute to high-impact publications, and mentor the next generation of scientists. Your responsibilities
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trajectories, outcomes, or developing novel treatments for schizophrenia spectrum disorders. Candidates with interests in early phase psychosis, metabolic psychiatry, negative symptomatology, or other emerging
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with generous terms and conditions including 41 days of leave for full time staff, pension - pensions handbook https://www.gla.ac.uk/myglasgow/payandpensions/pensions/, benefits and discount packages. 3
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into applications, commercialization and social and economic benefits for Canada and the world, and develop the next generation of highly qualified personnel. The University of Toronto invites applications for full
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the ability to connect methodological advances with societal challenges. Further, we search for a candidate that can educate and inspire the next generation of Remote Sensing experts. Experience in cutting-edge
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such activities and to develop generative models able to output custom peptides. This work will be performed in close collaboration with the experimental team at the University of Bonn. We also want to retrace
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for Higher Education (DGES): https://www.dges.gov.pt/en/pagina/degree-and-diploma-recognition . 12. Application deadline Candidates may submit their application, pursuant to the terms mentioned in
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of central nervous system (CNS) disorders, aiming to identify glial-derived determinants of disease trajectories as potential therapeutic targets. We combine cutting-edge biomolecular approaches with high
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, longitudinal observational cohort study investigating the natural history, phenotypic spectrum, and clinical trajectories of individuals with pathogenic PKP2 variants associated with Arrhythmogenic
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Learning (scikit-learn) and Deep Learning (TensorFlow, PyTorch). ● Experience analyzing embryologic and developmental datasets spanning prenatal-to-adult trajectories, including longitudinal and time