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Название Udacity - Deep Learning Foundation
Тип
Размер 5.55Гб
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01. 00 Luis Introducing Ortal Newtitle121217-oXv7GiC-jrM.en.vtt 1.51Кб
01. 00 Luis Introducing Ortal Newtitle121217-oXv7GiC-jrM.mp4 10.69Мб
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01. 01 Welcome To The Deep Learning Program-3QPEmwq2NaE.mp4 14.28Мб
01. Actor-Critic Methods.html 5.45Кб
01. Autoencoder Lesson Intro.html 6.49Кб
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01. Convolutional Layers.html 9.48Кб
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01. How to Predict Stock Prices Easily.html 6.29Кб
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01. Mean Squared Error Function.html 6.07Кб
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01. Reinforcement Learning Lesson.html 6.08Кб
01. RL M2L4 01 Actor Critic Methods RENDER V1 V1-FXhyxJzgt8U.en.vtt 1.54Кб
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01. Semi-supervised Learning.html 6.93Кб
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01. Welcome to the Deep Learning Nanodegree Foundations.html 5.54Кб
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Статистика распространения по странам
Китай (CN) 1
Турция (TR) 1
Румыния (RO) 1
Южная Корея (KR) 1
Всего 4
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