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demidovakatya / Vvedenie Mashinnoe Obuchenie

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Машинное обучение

Постоянно обновляемая подборка ресурсов по машинному обучению.

Оглавление



Библиотека ML-специалиста


Онлайн-курсы (MOOC)


Social

Обсуждение машинного обучения в мессенджерах (группы, каналы, чаты, сообщества).

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