Location intelligence involves extracting valuable insights from geospatial data to address business challenges and inform strategic decisions. By analyzing location-based information—such as customer demographics, supply chain logistics, and market trends—organizations can optimize their operations, improve customer experiences, and uncover new opportunities. This approach is especially beneficial for industries like retail, logistics, real estate, and urban planning, where spatial data is crucial for effective strategy and operational execution.
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