255 parallel-and-distributed-computing-phd positions at University of Saskatchewan in Canada
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. Maintenance of records utilizing the PAC system; may assist with the supervision, instruction, and demonstration of skills to undergraduate veterinary and veterinary technology program students; and responsible
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Dynamics and Control CHE 453 Corrosion Engineering CHE 454 Design of Industrial Waste Treatment Systems Qualifications (Skills and Abilities): MSc or PhD student in good standing
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, 2025, to December 31, 2025) CRN: 82672 Delivery Mode: This course will be delivered in person. Course Schedule: Tuesdays and Thursdays 10:00am-11:20am Expected Enrollment Limit: 340 Qualifications: A PhD
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at the University of Saskatchewan in Saskatoon, Saskatchewan, and you will report to Dr. Allyson Stevenson. Education: This position is intended for a Graduate (either MA or PhD) student in the College of Arts and
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faculty members to implement the undergraduate biology instructional program. In addition, the Undergraduate Laboratory Coordinator provides direct supervision, leadership and support to teaching assistants
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the supervision of teaching undergraduate veterinary and veterinary technology program students; and maintains equipment, supplies, and facility. Qualifications Education: Graduate of a recognized two-year
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Extended Education Program, University of Manitoba is preferred Strong competency of USask course/degree requirements Minimum of two (2)years of experience in academic advising is preferred Two (2) years
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Limit: 20 Qualifications: PhD degree in Geography or Planning, or in Regional & Urban Development. Previous teaching experience at a post-secondary educational institution is an asset. The candidate will
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Lecture. Course Schedule: Wednesday 2:00pm-4:50pm Expected Enrollment Limit: 70 Qualifications: Completion of a graduate degree, PhD preferred, in Sociology or related discipline and teaching experience
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: 20 Qualifications: Completion of a graduate degree, PhD preferred, in Mathematics & Statistics or related discipline and/or possession of relevant teaching or professional experience. This course