Enablers to The Adoption of AI/ML Technologies in Process Industries
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https://doi.org/10.14419/s0n2f394
Received date: June 13, 2025
Accepted date: July 15, 2025
Published date: July 20, 2025
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Artificial Intelligence; Focus Group Discussion; Grounded Theory Method; Process Industry; Technology -
Abstract
The process industry, from its inception, is data intensive, and the advent of information technologies (IT) has rapidly digitalized. Mathematical modeling for a purpose has been the axiom. This is a qualitative study in four large entities in the oil and gas sector and in the automotive sector. The grounded theory method (GTM) has been used by the authors for data collection and its subsequent analysis. This has enabled a comprehensive insight into understanding the factors that influence the adoption of AI / ML technologies. The key themes that emerge are, in the creation of technological readiness include data infrastructure, advanced analytical capabilities, the use of tools such as cloud computing, and the democratization of data. Leadership drive is a critical success factor to facilitate change management, allocation of resources, and constant reviews to resolve issues. The findings provide practical guidance for the adoption of AI/ML technologies in the process industry.
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How to Cite
Sohoni, S. . ., Pawar , P. ., & Raut, U. (2025). Enablers to The Adoption of AI/ML Technologies in Process Industries. International Journal of Accounting and Economics Studies, 12(3), 180-186. https://doi.org/10.14419/s0n2f394
