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Success Factors of Using Artificial Intelligence

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Technological Sustainability and Business Competitive Advantage

Part of the book series: Internet of Things ((ITTCC))

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Abstract

In terms of changing, modifying, and enhancing processes, products, and business models, artificial intelligence has tremendous promise. But many businesses are unable to take advantage of these opportunities because they are unable to successfully apply artificial intelligence technology in their environments. However, even though past research has identified critical success elements to consider when implementing artificial intelligence initiatives, academia has yet to develop a comprehensive understanding of the subject. The study begins by reviewing current research on success variables associated with the adoption of artificial intelligence (AI) and then presents a structured summary of 36 characteristics that have previously been explored by prior scientists. The technology-organization-environment (TOE) framework is used to inform our findings, which include the identification of 12 elements linked to the technical dimensions, 13 factors related to the organizational dimensions, and 11 factors connected to environmental aspects. We hope that our findings will assist researchers and practitioners in better including those elements in theory building and in more effectively implementing AI initiatives.

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Correspondence to Muneer Al Mubarak .

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Al Hleewa, S.O., Al Mubarak, M. (2023). Success Factors of Using Artificial Intelligence. In: Al Mubarak, M., Hamdan, A. (eds) Technological Sustainability and Business Competitive Advantage . Internet of Things. Springer, Cham. https://doi.org/10.1007/978-3-031-35525-7_11

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  • DOI: https://doi.org/10.1007/978-3-031-35525-7_11

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