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machine learning models to support data analysis and numerical calculations Part-time mechanical engineers: Supporting experimental setup via mechanical design and implementation of prototypes Number
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, 2025, at the Rank of Assistant Professor. Mount Royal’s Faculty of Science and Technology offers Bachelor’s Degrees in Biology, Chemistry, Computer Science, Computer Information Systems, Data Science
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and graduate students in disciplines relevant to chemical risk assessment (e.g., toxicology, chemistry, endocrinology, AI/machine learning) and governmental staff presently involved in chemical risk
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include, but are not limited to, satellite and airborne remote sensing, AI, machine learning, analysis of large datasets, geospatial modeling, digital twins, and applications in environmental science
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) a cover letter, and (2) a CV or resume. At UBC, we believe that attracting and sustaining a diverse workforce is key to the successful pursuit of excellence in research, innovation, and learning
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pursuit of excellence in research, innovation, and learning for all faculty, staff and students. Our commitment to employment equity helps achieve inclusion and fairness, brings rich diversity to UBC as a
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University of Ottawa | Government of Canada Ottawa and Gatineau offices, Ontario | Canada | about 8 hours ago
health sciences, interdisciplinary teams involved in the CFREF-funded Brain-Heart Interconnectome program utilize machine learning to investigate complex biological systems. This initiative aims
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asynchronous) by conducting research in order to determine what materials, resources and innovations should be added, revised, or adapted to meet new learning models and identifying existing evidence-based and
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generated from high-throughput phenotypic experiments to identify yeast strains with commercially desirable traits. Developing bioinformatic and machine learning pipelines to identify key genetic signatures
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workforce is key to the successful pursuit of excellence in research, innovation, and learning for all faculty, staff and students. Our commitment to employment equity helps achieve inclusion and fairness