hemilshah99316/ELECTRICITY_USAGE_PREDICTION_USING_ML
This project predicts future electricity consumption using machine learning, specifically the XGBoost algorithm. It includes time series analysis, feature engineering, and hyperparameter tuning to improve model accuracy. The analysis helps forecast electricity demand, enabling better energy management and resource planning for utilities and busines
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Sep 30, 2024
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