LDR 60415nam#a2203937#i#450# 001 1591 005 20241205041857.4 008 _ 20190625d2019####ek#y0rusy0150####ca 020 ## _$a978-5-369-02011-1 044 ## _$axxu 080 ## _$aОбщие вопросы математических и естественных наук. 50 084 ## _$aКибернетика. 3281 _2bbk 084 ## _$aВычислительная техника. 3297 _2bbk 084 ## _$aКомпьютерные и информационные науки. 02.07.01 _2okso 084 ## _$aКомпьютерные и информационные науки. 02.06.01 _2okso 084 ## _$aФизико-математические науки. 61 _2tbk 084 ## _$aИскусственный интеллект. 28.23 _2grnti 100 #1 _$aШумский, Сергей Александрович _$aМосковский физико-технический институт (государственный университет) 245 00 _$aМАШИННЫЙ ИНТЕЛЛЕКТ. ОЧЕРКИ ПО ТЕОРИИ МАШИННОГО ОБУЧЕНИЯ И ИСКУССТВЕННОГО ИНТЕЛЛЕКТА _$cМонография 260 1# _$aМосква _$bООО "Издательский Центр РИОР" _$c2019 300 ## _$a340 p. 500 ## _$aЭта книга о природе разума, человеческого и искусственного, с позиций теории машинного обучения. В ее фокусе – проблема создания сильного искусственного интеллекта. Автор показывает, как можно использовать принципы работы нашего мозга для создания искусственной психики роботов. Как впишется в нашу жизнь этот все более сильный искусственный интеллект? Что ожидает нас в ближайшие 10-15 лет? Чем надо заниматься тому, кто хочет принять участие в новой научной революции – создании науки о разуме? _$aмашинное обучение, искусственный интеллект _$a10.29039/02011-1 510 0# _$aA. А. Ежов and С.А. Шумский. Нейрокомпьютинг и его приложения в экономике и бизнесе. МИФИ, 1998. ISBN 5-722-0252-Х. 510 0# _$aД.А. Ковалевич and П.Г. Щедровицкий. Конвейер инноваций. 2015. https://asi.ru/conveyor-of-iimovations/. 510 0# _$aB. Завадовская and К. Карпов. Рейтинг компаний по производительности труда сотрудников. 2017. https://bcs-express.ru/novosti-i-analitika/reiting-kompanii-po-proizvoditel-nosti-truda-sotrudnikov. 510 0# _$aАлександр Марков and Михаил Марков. Многоуровневый отбор и проблема роста мозга у плейстоценовых homo. Опыт компьютерного моделирования сопряженной эволюции генов и мемов, 2019. URL https://www.youtube.com/watch? v=AERQrIyk7og&t=5192s. 510 0# _$aВладимир Иванович Вернадский. Труды, по всеобщей истории науки. Рипол Классик, 1988. 510 0# _$aЛев Семенович Выготский. Мышление и речь. Directmedia, 2014. 510 0# _$aИ. Р. Агамирзян. Технологическое лидерство: воспользоваться шансом. In Вызов 2035, pages 8-15. Олимп-Бизнес, 2016. 510 0# _$aЛиза Фельдман Барретт. Как рождаются эмоции. Революция в понимании мозга и управлении эмоциями. Манн, Иванов и Фабер, 2018. 510 0# _$aТомас Кун. Структура научных революций. М.: Прогресс, 1977. 510 0# _$aС.П. Капица. Общая теория роста человечества: сколько людей жило, живет, и будет жить на Земле. М.: Наука, 1999. 510 0# _$aСтанислав Лем. Golem, XIV. Библиотек XXI века. ACT, 2002. 510 0# _$aИ.М. Ножов. Морфологическая и синтаксическая обработка текста (модели и программы). Канд. диссертация,, 2003. 510 0# _$aМарк Бейкер. 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