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Academic Job Category Faculty Non Bargaining Job Title Postdoctoral Research Fellow in Machine Learning for Genomics, Transcriptomics, and Bioinformatics Department Bashashati Laboratory | School
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Academic Job Category Faculty Non Bargaining Job Title Postdoctoral Fellowship in Reinforcement Learning and Autonomous Laboratory Systems Department Research | Tang | Michael Smith Laboratories
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Academic Job Category Faculty Non Bargaining Job Title Postdoctoral Research Fellow in Machine Learning for Computational Pathology, Medical Imaging, and Clinical Text Analysis Department Bashashati
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(NLP) and machine learning to improve the psychosocial health of patients and enhance care provided by clinicians. Organizational Status The Research Assistant receives direct direction and reports
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to identify new drug candidates and therapeutic targets. As a Research Assistant, you will contribute at the intersection of bioinformatics, machine learning, and natural product drug discovery by applying AI
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engineering, manufacturing, and artificial intelligence. Responsibilities: Conduct comprehensive literature reviews on machine learning techniques applicable to design-manufacturing integration. Pre-process
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in operating a laptop computer with various MS-Office applications Preference given to candidates with related research experience Job classification: W6000 - Student Worker Hourly Rate: $18.22 # of
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(thedonnellycentre.utoronto.ca ). Required Qualifications: We are looking for postdocs that have excellent molecular biology skills and/or a strong computational background including machine learning approaches. Candidates should
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the Department of Mechanical Engineering, is seeking a motivated and skilled Research Assistant to support cutting-edge research in predictive simulation of human-machine interaction, specifically focused
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of about 5 hours per week. At UBC, we believe that attracting and sustaining a diverse workforce is key to the successful pursuit of excellence in research, innovation, and learning for all faculty