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. Job Duties The successful candidate will be involved in the academic activities of the McGill University Department of Neurology and Neurosurgery, Division of Neurosurgery, Brain-Computer Interface. The
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Quebec (AGQ)-FOCAS Community Archives Research Assistant DESCRIPTION OF HOST ORGANIZATION: Archives Gaies du Québec (Quebec Gay Archives) (AGQ)’s mandate is to acquire, preserve, and disseminate
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: Department of Mechanical Engineering Course Title and Course Number: MECH 393 - Machine Element Design Estimated Number of Positions: 2 Total Hours of Work per Term: 90 hours per TA Position Summary: Assisting
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, leave replacement position in the Faculty of Engineering Workshop (https://www.mcgill.ca/engineering/faculty-staff/services-resources/faculty-workshop-services ). Position Summary: Under the direction
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: This course is intended for primary health care practitioners, planners, and researchers interested to learn about integrated and participatory approaches to knowledge translation and exchange (KTE) including
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monitoring. Familiarity with computational image analysis, scripting (Python, MATLAB), or machine learning–based image workflows. Experience with method development, imaging assay optimization, or pipeline
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: https://www.mcgill.ca/engineering/about-us/employment-opportunities How to apply: ***In accordance with Article 12.02 of the AGSEM Teaching Assistant collective agreement: All applicants for posted
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at professional conferences, and career development. Qualifications: BSc or MSc degree (Psychology, Neuroscience, Computer Sciences, Medical Physics, Biomedical Engineering, or related field) Other Qualifying
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of an Indigenous language, which includes using a computer. Focus is on nouns, verbs, prefixes, and suffixes, along with specific Indigenous lexicon. Posting Dates: March 04 - 10, 2026 Application Deadline: March 10
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and revise existing IMAGE machine‑learning components to optimize efficiency, scalability, and quality of results. Implement conversions of existing non‑LLM components to LLM‑based approaches where