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applications. Mentor junior researchers and contribute to a collegial lab environment. Qualifications and Requirements PhD in Molecular Biology, Genomics, Cancer Biology, or a related field. Strong background in
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background, as demonstrated by past publications, accomplishments, and references. Candidates with strong background in either computational or experimental biology (or both) will be considered. The successful
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, offering training and experience in genomics, computational biology, early drug discovery and clinical studies. RESPONSIBILITIES Reporting to Dr. Sam Aparicio, the incumbent will be responsible for: Design
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to collaborative efforts aligned with translational and commercial development goals, including work supported by the CIFAR Multiscale Human Program and UBC’s Biodevice Foundry. Qualifications PhD in immunology
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Human Program and UBC’s Biodevice Foundry. Qualifications PhD in immunology, developmental biology (focused on the immune system), immune-engineering, or a related field (obtained within the last 5 years
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healing. The Granville research program spans basic molecular biology and biochemistry through to target validation, proof-of-concept in animal and human models, and collaborations with clinicians and
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biology for a two-year term with possibility of extension. The successful applicant will train directly under the supervision of Dr. David Granville, PhD, and will have an opportunity to develop
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development and target discovery challenges. Qualifications: PhD in bioengineering, computational biology, machine learning, systems immunology, or related discipline, obtained within the last 5 years, by
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discovery challenges. Qualifications: PhD in bioengineering, computational biology, machine learning, systems immunology, or related discipline, obtained within the last 5 years, by the time of
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environment allows for translation of novel methods to our cancer clinics in Canada (Vancouver, Victoria, and Kelowna) and beyond. Requirements: The ideal candidate will have a PhD in computational modeling