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Vancouver, BC, Canada. The research will take place in the Quantitative Radiomolecular Imaging & Therapy lab (Qurit.ca ) under the guidance of Drs. Arman Rahmim and Carlos Uribe. The fellow will work in
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of three potential references, should be directed to admin@popi.ubc.ca with “Postdoc Position – PGx & ADRs” listed in the subject line. Equity and diversity are essential to academic excellence. An open and
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, detailed curriculum vitae including a list of your publications and the names of three potential references, should be directed to admin@popi.ubc.ca with “Postdoc Position – PGx & ADRs” listed in
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including a list of your publications and the names of three potential references, should be directed to admin@popi.ubc.ca with “Postdoc Position – PGx & ADRs” listed in the subject line. Equity and
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annum. The term is for one year with the possibility to extend. For further information please email anil.maharaj@ubc.ca and include the subject line: “PKMS Postdoc Application”. Applicants are requested
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: “PKMS Postdoc Application”. Applicants are requested to submit a cover letter, an up-to-date CV, and contact information for three references. Review of applications will begin upon receipt and will
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or psychological interventions for patients with vulvar and sexual health concerns or (2) conduct a sexual psychophysiology study using blood flow imaging technology. As part of Dr. Bouchard’s lab, the Fellow will
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their research interests, detailed curriculum vitae including a list of your publications and the names of three potential references, should be directed to admin@popi.ubc.ca with “Postdoc Position – PGx
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equipment, facilities, space and services . These include a magnetic resonance imaging facility, a cellular imaging team with advanced microscopy instrumentation, customized molecular and genetic tools
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PyTorch, TensorFlow, and Scikit-learn. Familiarity with cloud computing and AI frameworks. Extensive experience working on one or more areas: image processing, machine learning, time series, digital health