Sort by
Refine Your Search
-
Estimate of the course enrolment: 50 Estimate of TA Support: Estimate of 75 hours with enrollment of 36 or greater. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD
-
. Estimate of 75 hours with enrollment of 36 or greater. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD. You are required to be located in geographical proximity
-
Sessional Lecturer, INF2310H - Special Topics in Information Studies: Designing UX for Mixed Reality
UX for Mixed Reality Systems Estimate of the course enrolment: 35 Estimate of TA Support: None anticipated. Estimate of 75 hours with enrollment of 36 or greater. Allocation of TA hours, if any, will
-
hours with enrollment of 36 or greater. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD. You are required to be located in geographical proximity to the applicable
-
: None anticipated. Estimate of 75 hours with enrollment of 36 or greater. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD. You are required to be located in
-
. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD. You are required to be located in geographical proximity to the applicable University premises in order to attend and
-
Relations, Changing Practice Estimate of the course enrolment: 35 Estimate of TA Support: None anticipated. Estimate of 75 hours with enrollment of 36 or greater. Allocation of TA hours, if any, will be based
-
. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD. You are required to be located in geographical proximity to the applicable University premises in order to attend and
-
Support: None anticipated. Estimate of 75 hours with enrollment of 36 or greater. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD. You are required to be located in
-
Sessional Lecturer, INF2205H - Designing Sustainable & Resilient Machine Learning Systems with MLOps
. Estimate of 75 hours with enrollment of 36 or greater. Allocation of TA hours, if any, will be based on enrolment numbers. Class Schedule: TBD. You are required to be located in geographical proximity