Section 01
[Introduction] OSMnx Data Scraper: Machine Learning Practice for Urban Spatial Intelligence and Commercial Site Selection
This article introduces an OSMnx-based data scraping tool for urban features in New York City, exploring how to combine OpenStreetMap data with machine learning technology for commercial site selection analysis and retail trend prediction. The project extracts geographic features through an automated data pipeline, providing data-driven support for business decisions and urban planning.