Hands-On Deep Learning for IoT Train Neural Network Models to Develop Intelligent IoT Applications

Reference; Chapter 2: Deep Learning Architectures for IoT; A soft introduction to ML; Working principle of a learning algorithm; General ML rule of thumb; General issues in ML models; ML tasks; Supervised learning; Unsupervised learning; Reinforcement learning; Learning types with applications; Delv...

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Главный автор: Razzaque, Mohammad Abdur
Другие авторы: Karim, Md. Rezaul
Формат: Электронная книга
Язык:English
Публикация: Birmingham Packt Publishing, Limited, 2019.
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Online-ссылка:EBSCOhost
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Описание
Итог:Reference; Chapter 2: Deep Learning Architectures for IoT; A soft introduction to ML; Working principle of a learning algorithm; General ML rule of thumb; General issues in ML models; ML tasks; Supervised learning; Unsupervised learning; Reinforcement learning; Learning types with applications; Delving into DL; How did DL take ML to the next level?; Artificial neural networks; ANN and the human brain; A brief history of ANNs; How does an ANN learn?; Training a neural network; Weight and bias initialization; Activation functions; Neural network architectures; Deep neural networks
This book will provide you an overview of Deep Learning techniques to facilitate the analytics and learning in various IoT apps. We will take you through each process - from data collection, analysis, modeling, statistics, and monitoring. We will make IoT data speak with a set of popular frameworks, like TensorFlow, TensorFlow Lite, and Chainer.
Объем:1 online resource (298 pages)
ISBN:1789616069
9781789616064