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William L. Hughes, the individual will lead the day-to-day operation of the lab. The anticipated start date of the Research Associate position is July 1, 2025, or upon a date to be mutually agreed upon
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that applicants must have earned a PhD degree in biochemistry, microbiology, molecular biology or another related/relevant area, with a clearly demonstrated exceptional record of excellence in research, service
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for compliance with Institutional and Faculty Cybersecurity, Privacy, and Governance Policies, Standards, and Processes. The Associate Director is a key representative for VCHRI in AI and data analytics
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, advanced brain imaging, and now single-cell neurobiology. It remains a global leader in integrating cutting-edge science with clinical practice to train future psychiatric researchers and clinicians. With
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/) has a rich history of scientific innovation with sustained expertise in psychotherapy, substance abuse research, psychoneuroendocrinology, psychoimmunology, genetics, epigenetics, advanced brain imaging
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that change! Qualifications The position requires a PhD degree in electrical, computer or biomedical engineering, computer science, or a closely related area. The successful candidate is expected to develop
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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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Change, Glaciology, Modeling, Imaging, Algorithms and Combinatorial Optimizations. Eligibility to hold scholarship funding: Recipients must be offered and accept admission to a UBC PhD program in
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. Experience with total internal reflection fluorescence (TIRF) microscopy. Ability to perform image analysis and processing (e.g., ImageJ/Fiji) The following backgrounds are considered an asset or highly
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. The projects may also include to tackle benchmarking problems such as SAT, image processing, graph theories, boson/fermion sampling by applying classical machine/deep learning, neural network techniques and