282 algorithm-phd-"Prof"-"Washington-University-in-St"-"Prof" positions at University of Toronto
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have earned a PhD degree by the time of appointment, or shortly thereafter. Alternatively, applicants must have a Master’s degree with at least five (5) years of teaching experience. Relevant fields
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), debuggers, code verifiers and unit test frameworks and gain experience in graphical user interface design and algorithm development. Posting end date: July 11, 2025 Number of positions (est): One (1) position
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, Python, or C/C++, with the ability to develop custom scripts and algorithms for data analysis and modeling. Familiarity with rheological characterization techniques, such as rheometry or viscometry
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: Course number and title: MIE1624F/S – Introduction to Data Science and Analytics Course description: The objective of the course is to learn analytical models and overview quantitative algorithms
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, sometimes from multiple jurisdictions, to achieve sample sizes appropriate for training algorithms. This creates challenges with data security and data flows (due to legislative restrictions). Further, data
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the knowledge and tools required to balance time and resources between teaching, research, and administration. Estimated Enrolment: 40 PhD candidates and postdoctoral fellows Number of Positions: 1 Posting end
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, strings, pointer-based data structures and searching and sorting algorithms. The laboratories reinforce the lecture topics and develops essential programming skills. Estimated course enrolment: ~150
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] and curriculum vitae must be submitted to: Cindi Morshead, PhD Professor and Chair, Division of Anatomy Medical Sciences Building 1 King’s College Circle – Room 2372 Toronto, Ontario M5S 1A8 E-mail
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) and curriculum vitae must be submitted to: Cindi Morshead, PhD Professor and Chair, Division of Anatomy Medical Sciences Building 1 King’s College Circle – Room 2372 Toronto, Ontario M5S 1A8 E-mail
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, lists, maps. Program structure: control flow, functions, classes, objects, methods. Algorithms and problem solving. Searching, sorting, and complexity. Unit testing. Floating-point numbers and numerical