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Downtown Campus TEACHING QUALIFICATION REQUIREMENTS : Experience Experience in the following area: Python programming; Algorithms; Software design; Applications of computer science in life science Previous
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: COMP 250 - Course Title: Introduction to Computer Science Course Number: COMP 251 - Course Title: Algorithms and Data Structures Course Number: COMP 252 - Course Title: Honours Algorithms and Data
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: Desautels Course Title and Course Number: Enterprise Data Science: Concepts and Algorithms/Enterprise Machine Learning in Production INSY 674/684 Estimated Number of Positions: 1 Total Hours of Work per Term
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findings regularly. Prototype algorithms, validate outputs, and document methods clearly Collaborate asynchronously with an international team, present findings regularly Experience with remote sensing
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: October 01, 2025 Applications for this course will be accepted until OCTOBER 15, 2025 Course Title COMP 208 - 002 Computer Programming for Physical Sciences and Engineering Term Winter 2026 Credit 3
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: October 01, 2025 Applications for this course will be accepted until OCTOBER 15, 2025 Course Title COMP 208 - 001 Computer Programming for Physical Sciences and Engineering Term Winter 2026 Credit 3
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, developing, and implementing innovative machine learning models and algorithms to drive insights from the hEDS*omics multimodal dataset, encompassing clinical, environmental, and multi-omics data. This role
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eligible for an appointment as a Teaching Assistant for Winter 2026 term, applicants must be enrolled in a McGill graduate program in Winter 2026 term. Hiring Unit: Department of Human Genetics Course Title
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Research Assistant 2 position is based in Prof. Narges Armanfard's research lab in the department of Electrical and Computer Engineering. The research project focuses on data-driven Atmospheric Plasma Spray
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disease. In this position, the incumbent will perform the following duties, but is not limited to: 1) High-performance computing workflow for large-scale metabolomics data analysis 2) Development of deep