aosokin / Dl_cshse_ami
Licence: apache-2.0
Материалы курса "Глубинное обучение", ФКН ВШЭ, бакалаврская программа ПМИ
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бакалаврская программа «Прикладная математика и информатика»
Материалы курса "Глубинное обучение", читаемого на ФКН ВШЭ,Материалы курса распространяются под лицензией Apache 2.0, т.е., можно использовать в любых целях, можно перевыкладывать, но с обязательным указанием первоисточника и списка изменений.
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