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Machine Learning Adoption in Blockchain-Based Intelligent Manufacturing : Theoretical Basics, Applications, and Challenges, Hardback Book

Machine Learning Adoption in Blockchain-Based Intelligent Manufacturing : Theoretical Basics, Applications, and Challenges Hardback

Edited by Om Prakash (Ravenshaw University, Cuttack) Jena, Sabyasachi (Haldia Institute of Technology) Pramanik, Ahmed A. (Beni-Suef University, Egypt) Elngar

Part of the Intelligent Manufacturing and Industrial Engineering series

Hardback

Description

This book looks at industry change patterns and innovations (such as artificial intelligence, machine learning, big data analysis, and blockchain support and efficiency technology) that are speeding up industrial transformation, industrial infrastructure, biodiversity, and productivity. This book focuses on real-world industrial applications and case studies to provide for a wider knowledge of intelligent manufacturing.

It also offers insights into manufacturing, logistics, and supply chain, where systems have undergone an industrial transformation.

It discusses current research of machine learning along with blockchain techniques that can fill the gap between research and industrial exposure.

It goes on to cover the effects that the Fourth Industrial Revolution has on industrial infrastructures and looks at the current industry change patterns and innovations that are accelerating industrial transformation activities. Researchers, scholars, and students from different countries will appreciate this book for its real-world applications and knowledge acquisition.

This book targets manufacturers, industry owners, product developers, scientists, logistics, and supply chain engineers. Focuses on real-world industrial applications and case studies to provide for a wider knowledge of intelligent manufacturingOffers insights into manufacturing, logistics, and supply chain where systems have undergone an industrial transformationDiscusses current research of machine learning along with blockchain techniques that can fill the gap between research and industrial exposureCovers the effects that the 4th Industrial Revolution has on industrial infrastructuresLooks at industry change patterns and innovations that are speeding up industrial transformation activities

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