AI Targeting of Energy Efficiency and Decarbonization Opportunities - Product Council

Dr. Jason Trager presents general details about machine learning and the use of AI to target energy efficiency and decarbonization opportunities. Jason has been developing geospatial machine learning to help implementers target customers better for nine years. In his most recent role, he was responsible for building petabyte-scale automated machine learning tooling for utility forecasting, serving approximately 30% of US electric meters. He recently founded to develop a platform for accelerating sales and targeting electrification programs using a mixture of machine learning, public data, and AI resources. He believes that reducing friction is critical for the scale of electrification that decarbonizing our economy requires and sees it as a unique opportunity for our industry at this moment where automation, AI, and electrification industries are all intersecting and accelerating.

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