Cities through the Prism of People’s Spending Behavior
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Carlo Ratti | Stanislav Sobolevsky | Bartosz Hawelka | Izabela Sitko | Juan Murillo Arias | Remi Tachet des Combes | C. Ratti | Stanislav Sobolevsky | Rémi Tachet des Combes | B. Hawelka | I. Sitko
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