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Building Energy Information: Demand and Consumption Prediction with Machine Learning Models for Sustainable and Smart Cities

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Figure

Fig. 1. rapid increase of using ML models in various scientist domains (source: web of science)
Table 1. Notable ML methods for 2 building energy demand prediction
Table 2. the comparison results of methods for energy demand in building sector
Table 3. Notable ML methods for 2 building energy consumption prediction

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