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рубрика "Социально-экономические исследования"

Использование искусственных нейронных сетей в современном обществе

Алферьев Д.А.

Том 6, №3, 2020

Алферьев Д.А. Использование искусственных нейронных сетей в современном обществе // Социальное пространство. 2020. Т. 6. № 3. DOI: 10.15838/sa.2020.3.25.6 URL: http://socialarea-journal.ru/article/28618

DOI: 10.15838/sa.2020.3.25.6

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