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PeatTalks Episode 1
Event
Event Date and Time
March 31st, 2022 at 9:00am MST to March 31st, 2022 at 10:00am MST
Organization
Our spring 2022 #PeatTalks series is looking beyond ECR life for #PeatECR and potential next career steps. Our presenters will talk about their work, but also the pros & cons, challenges and benefits...
PeatTalks Episode 2 with Claire Treat
Event
Event Date and Time
April 29th, 2022 at 10:00am EST to April 29th, 2022 at 11:00am EST
Organization
Our spring 2022 #PeatTalks series is looking beyond ECR life for #PeatECR and potential next career steps. Our presenters will talk about their work, but also the pros & cons, challenges and benefits...
PeatTalks Episode 3 with Lorna Harris
Event
Event Date and Time
May 19th, 2022 at 11:00am EST to May 19th, 2022 at 12:00pm EST
Organization
Our spring 2022 #PeatTalks series is looking beyond ECR life for #PeatECR and potential next career steps. Our presenters will talk about their work, but also the pros & cons, challenges and benefits...
Video - SaskPower Transmission and Distribution Environmental Best Management Practice for Working In or Near Water: Need, Development, Implementation, Outcomes and Continuous Improvement
Resource
In 2015, SaskPower rolled out an Environmental Best Management Practices (BMP) Manual for linear Transmission, Distribution and Fibre optic construction, maintenance and operations. The objectives of...
Webinar - Climate Variability and Change in the Southern Boreal Forest of Northern Saskatchewan
Resource
Presented by Dave Sauchyn, Director of the Prairie Adaptation Research Collaborative at the University of Regina and Professor of Geography and Environmental Studies. Since the mid 20th century, mean...
Webinar: Flooding Risk Prediction on Agricultural Lands Using Artificial Intelligence Techniques
Event
Event Date and Time
September 27th, 2023 at 12:00pm MST to September 27th, 2023 at 1:00pm MST
The study will employ the latest artificial intelligence methodologies for data processing and predictive risk modeling approach