bitstoenergy/iclr-tutorial
Smart Meter Data Analytics Tutorial @ 11th International Conference on Learning Representations (ICLR 2023)
This tutorial helps individuals and organizations understand and analyze smart meter data from residential buildings. It takes raw energy consumption data and applies machine learning and data mining techniques to reveal consumption patterns, identify anomalies, and estimate load shifting potential. This is designed for anyone interested in energy use, from students and researchers to utility employees.
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Use this if you have access to smart meter data (or want to use provided datasets) and wish to extract practical insights into energy consumption, such as identifying unusual usage or understanding appliance-level patterns.
Not ideal if you are looking for a plug-and-play software solution for real-time grid management or do not have basic programming knowledge.
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MIT
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Apr 23, 2024
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