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Sessional Lecturer - HIS311H1F Canada in the World Course Description: Ranging from the fifteenth through to the turn of the twenty-first century, students will learn about the treaties, trade
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Sessional Lecturer, INF2205H - Designing Sustainable & Resilient Machine Learning Systems with MLOps
University of Toronto Faculty of Information Sessional Lecturer Winter Term 2026 (January - April) INF2205H – Designing Sustainable and Resilient Machine Learning Systems with MLOps Course
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University of Toronto Faculty of Information Sessional Lecturer Winter Term 2026 (January - April) INF2179H – Machine Learning with Applications in Python Course Description: Machine learning has
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Learning Course Description: Machine Learning applications are increasingly utilized to make crucial decisions in many sectors of our economy and society. These include, but are not limited to, healthcare
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and title: CHMD11H3 - Application of Spectroscopy in Chemical Structure Determination Course description: In this course students will learn about the following analytical techniques used in organic
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Scarborough Department: Department of Computer and Mathematical Sciences Campus: University of Toronto Scarborough (UTSC) Description: The Department of Computer and Mathematical Sciences at the University
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for a full-time tenure stream position in the areas of Machine Learning and/or Self Driving Labs applied to Drug Discovery, Pharmacology and/or Toxicology at the rank of Assistant Professor, with
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of Toronto. Minimum qualifications: PhD in Geosciences or Environmental Sciences or Environmental Chemistry, University teaching experience preferred, familiar with instructional computer technology (i.e
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(CUPE), Local 3902 Unit 3 and the University of Toronto. Minimum qualifications: PhD in Geology, Environmental Earth Science or related field, University teaching experience preferred, familiar with
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AI. Students will apply these insights in class, participate in an innovation lab case and explore the foundational elements of Machine Learning (ML) in healthcare including how to critically appraise