ABSTRACT

This book provides insights into how to approach and utilise data science tools, technologies, and methodologies related to artificial intelligence (AI) in industrial contexts. It explains the essence of distributed computing and AI technologies and their interconnections. It includes descriptions of various technology and methodology approaches and their purpose and benefits when developing AI solutions in industrial contexts. In addition, this book summarises experiences from AI technology deployment projects from several industrial sectors.

Features:

  • Presents a compendium of methodologies and technologies in industrial AI and digitalisation.
  • Illustrates the sensor-to-actuation approach showing the complete cycle, which defines and differentiates AI and digitalisation.
  • Covers a broad range of academic and industrial issues within the field of asset management.
  • Discusses the impact of Industry 4.0 in other sectors.
  • Includes a dedicated chapter on real-time case studies.

This book is aimed at researchers and professionals in industrial and software engineering, network security, AI and machine learning (ML), engineering managers, operational and maintenance specialists, asset managers, and digital and AI manufacturing specialists.

chapter 1|15 pages

Introduction

chapter 2|35 pages

Digital Twins

chapter 3|42 pages

Hypes and Trends in Industry

chapter 4|51 pages

Data Analytics

chapter 5|31 pages

Data-Driven Decision-Making

chapter 6|36 pages

Fundamental in Artificial Intelligence

chapter 7|35 pages

Systems Thinking and Systems Engineering

chapter 8|39 pages

Software Engineering

chapter 9|39 pages

Distributed Computing

chapter 10|22 pages

Case Studies

chapter 11|23 pages

AI Factory

A Roadmap for AI Transformation

chapter 12|27 pages

In Industrial AI We Believe