Predicting the Solar Potential of Rooftops [...] | AI & Climate Change | Daniel de Barros Soares
Predicting the Solar Potential of Rooftops using Image Segmentation and Structured Data | Daniel de Barros Soares – Data Scientist, nam.R
The Applied Machine Learning Days channel features talks and performances from the Applied Machine Learning Days.
AMLD is one of the largest machine learning & AI events in Europe, focused specifically on the applications of machine learning and AI, making it particularly interesting to industry and academia.
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Видео Predicting the Solar Potential of Rooftops [...] | AI & Climate Change | Daniel de Barros Soares канала Applied Machine Learning Days
The Applied Machine Learning Days channel features talks and performances from the Applied Machine Learning Days.
AMLD is one of the largest machine learning & AI events in Europe, focused specifically on the applications of machine learning and AI, making it particularly interesting to industry and academia.
Follow AMLD:
on Twitter: https://www.twitter.com/appliedmldays
on LinkedIn: https://www.linkedin.com/company/appliedmldays
AMLD Website: https://www.appliedmldays.org
Видео Predicting the Solar Potential of Rooftops [...] | AI & Climate Change | Daniel de Barros Soares канала Applied Machine Learning Days
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29 июля 2020 г. 16:42:59
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