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Artificial Intelligence: A Driving Force for Industry 4.0

Affiliations

  • Assistant Professor, Shri Vaishnav Institute of Management, Indore, India

DOI: 10.33516/maj.v54i3.42-45p

Abstract


4th Industrial revolution “Industry 4.0” is considered as the new industrial age where the integration of manufacturing operations systems and Information and Communication Technology (ICT), through Internet of Things (IoT) which forms Cyber – Physical System (CPS), for achieving the higher industrial performance. The economic growth of every country remains effected by its industrial sector and specially the manufacturing sector. The present article focused on the advancement in technologies and its effect on manufacturing sector. It can be said that the advances in technologies brought the industrial revolutions and the emergence of artificial changed the industrial landscape. Artificial intelligence facilitates the development of intelligent manufacturing. The interaction among machines, interaction of human with machines, data quality, data security and cyber security are key challenges to the industry.

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DOI: http://dx.doi.org/10.33516/maj.v54i3.42-45p