ArmanMaghsoudi/Transportation-Planning-Project
Seoul Bike-Sharing Optimization: A data-driven framework for urban mobility. Combines ML (Random Forest, ARIMA) for demand forecasting with mathematical optimization (PuLP) for strategic resource allocation. Features temporal analysis and cost-minimization logic to enhance system efficiency using Python.
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Feb 20, 2026
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