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, Australia, and the Netherlands. The project offers access to large-scale, multi-site neuroimaging datasets, advanced analytical tools, and a collaborative, multidisciplinary environment. Work environment: The
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at McGill University), do not apply through this Career Site. Login to your McGill Workday account and apply to this posting using the Find Jobs report (type Find Jobs in the search bar). The research project
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Position Summary: Proposed project title: “Targeted & Non-targeted analysis of PFAS in food packaging“. Develop and apply liquid chromatography (LC) methods coupled with high-resolution mass spectrometry
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basic scripting in Image J, Matlab and Python - Excellent attention to detail and record keeping - Excellent time and project management skills Before applying, please note that to work at McGill
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: Work on a research project in the general area of Materials and Structures reporting to Professor Damiano Pasini. Investigate and develop reprogrammable metamaterials. Computational design of
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. This research project will provide training in cutting-edge systems neuroscience techniques as well as extend Dr. Haggard’s area of research expertise to sensorimotor systems. The primary activities will include
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of Canada interested in pursuing a post-doctoral research project related to access to justice for official language minority communities in Canada. Researchers may come from a wide variety of fields
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-disciplinary grant-funded project led by Prof. Harley. Co-principal investigators, co-applicants, and collaborators collectively contribute a multitude of disciplines including educational psychology (Harley
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are seeking a highly motivated and talented postdoctoral fellow with an interest in cancer prevention and/or pharmacoepidemiology to take a leading role in an externally funded research project on ovarian
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Research, and Meta. Responsibilities: The Postdoctoral Fellows will be responsible for leading ongoing innovative research projects. Examples include: The development of probabilistic deep learning models