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Original scientific article

INTEGRATING INDUSTRIE 4.0 AND MANAGEMENT INFORMATION SYSTEMS FOR IMPROVED DECISION-MAKING EFFECTIVENESS IN MODERN ORGANIZATIONS

By
C. Rajkumar Orcid logo ,
C. Rajkumar

Dr. SNS Rajalakshmi College of Arts and Science , Coimbatore , India

Gajraj Singh Orcid logo ,
Gajraj Singh

Indira Gandhi National Open University , New Delhi , India

Arun Khatri Orcid logo ,
Arun Khatri

Lovely Professional University , Phagwāra , India

Zokir Sodikov Orcid logo ,
Zokir Sodikov

International Islamic Academy of Uzbekistan , Tashkent , Uzbekistan

Chaitanya Niphadkar Orcid logo ,
Chaitanya Niphadkar

Harvard Business School (USA) , Boston , United States

Tanima Tarafdar Orcid logo ,
Tanima Tarafdar

Assam Down Town University , Guwahati , India

Baratov Khakimbek Abdufattokhovich Orcid logo ,
Baratov Khakimbek Abdufattokhovich

Andijan Institute of Agriculture and Agrotechnologies , Andijan , Uzbekistan

K. Sathishkumar Orcid logo
K. Sathishkumar

Erode Arts and Science College (Autonomous) , Erode , India

Abstract

Integration of Industrie 4.0 technologies with the Management Information Systems (MIS) has become a vital approach to improving effectiveness of the decision-making process in modern organizations. Cyber physical systems, the internet of things (IoT), big data, and artificial intelligence (AI) are the tools for companies of Industrie 4.0, which means that they can collect, analyze and use real time data. This fusion is used to provide a dynamic approach to solve the complex business challenges when combined with MIS (systems to manage and process information for decision making). In this paper, the synergies between Industrie 4.0 technologies and MIS are explored and the role that together play in enhancing operational efficiency, strategic decision making, and improving competitiveness is addressed. Widely used converged real time data analytics, automated system and predict model allow managers to make fast and accurate data driven decisions, leading to innovation and responsiveness in a fast evolving business environment. Additionally, this integration enables the optimisation of a chain’s supply chains, production processes and customer interactions in an overall consistent approach to sustainable growth. System integration, data security, workforce adaptation are also addressed. These findings illuminate the transformation capacity of coupling the Industrie 4.0 and MIS, implying the spurious necessity for organizations to maintain competitive advantage in the digital age through the integration of the Industrie 4.0 with MIS.

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This is an open access article distributed under the  Creative Commons Attribution Non-Commercial License (CC BY-NC) License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. 

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