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320.3 (01) – Equine Science Term and Course Dates: Term One (September to December) CRN: 85224 Delivery Mode: Lecture with a Lab Course Schedule: Lecture Tuesday/Thursday 10:00 am to 11:30 am. Lab Tuesday
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). This position is responsible for coordinating day-to-day program operations, including course scheduling, Clinical Learning Resource Centre (CLRC) lab and exam planning, timetabling, part-time teaching support
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Name: MUAP 143.3 (12), MUAP 243.3 (12), Voice Studio Term and Course Dates: Term 1 (September – December) CRN: 83178 83201 Delivery Mode: Applied Studio Lessons Course Schedule: Private Lessons – TBD
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, 2024 to December 31, 2025) CRN: 90511 Delivery Mode: This course will be offered as an In Person Lecture. Course Schedule: Actual course days/times Wednesday 9:00 AM to 11:50 AM. Expected Enrollment
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items up to 30 lbs. The role can be physically demanding and may require doing repetitive tasks. Schedule will be determined depending on the business demands. You may have to work early in the mornings
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multiple tasks efficiently. This role involves providing administrative support to the Associate Dean, managing schedules, handling correspondence, and assisting with various office-related tasks. Key
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clients from project inception to completion, ensuring delivery that meets or exceeds functionality, schedule, and budget expectations. In addition to project execution, this role is responsible
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Course Number, Section, and Name: EART 303 01 | Methods in Elementary Visual Art Term and Course Dates: Term One CRN: 85156 Delivery Mode: Lecture Course Schedule: Wednesdays, 5:00pm to 7:50pm Expected
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Schedule: Monday, Wednesday, Friday 9:30 am – 10:20 am Expected Enrollment Limit: 15 Location: Saskatoon Qualifications: Degree in Environmental Engineering (P.Eng. would be an asset) or related field with
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Delivery Mode: Virtually Course Schedule: Asynchronous Expected Enrollment Limit: 250 Location: Saskatoon Qualifications: Completion of a graduate degree, PhD preferred, in Mathematics & Statistics