Integrisanje naprednih tehnologija u cilju unapređenja demografskih istraživanja i urbanističkog planiranja

Glavni sadržaj članka

Ivan Potić
https://orcid.org/0000-0002-0691-7675

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Kako citirati
Potić, I. (2024). Integrisanje naprednih tehnologija u cilju unapređenja demografskih istraživanja i urbanističkog planiranja. Stanovništvo, 62(1), 169–173. https://doi.org/10.59954/stnv.628
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Biografija autora

Ivan Potić, Vojnogeografski institut „General Stevan Bošković“, Beograd

Naučni saradnik

Reference

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