Abstract
Artificial intelligence is now identified as a vital business potential in the world’s rapidly changing economy. Artificial intelligence, in particular, has a significant influence in a country’s economic growth. According to numerous industry studies, there are considerable benefits to implementing AI in the workplace by many forms. The Kingdom of Bahrain has encouraged organizations to adapt artificial intelligent field after it recognized the advantages of artificial intelligence in improving business processes. This research uses a quantitative technique approach to find out what are the AI technologies that are currently being used in Bahrain, specifically in the manufacturing sector and identifying the factors that influence the company decision-makers to adapt the artificial intelligence. It will also explore empirical studies in the adoption of artificial intelligence. A survey was distributed among the top managers and technical staff in the Kingdom of Bahrain’s manufacturing organization. A sampling strategy based on continence was utilized. This research examined at the components that affect artificial intelligence adoption. A systematic survey of 977 manufacturing organizations was conducted. Moreover, to significantly identify the influence of factors affecting the adoption of artificial intelligence, hypotheses were developed and validated using statistical testing. Mathematical models such as SPSS would be used to examine the data. The quantitative results of the study have shown the factors that consider as barriers to adopt artificial intelligence in the manufacturing organization in the Kingdom of Bahrain. The research aims to examine the adoption status of artificial intelligence in manufacturing organizations in the Kingdom of Bahrain, investigate the factors that impact artificial intelligence, and provide suggestions to assist the organization to take the initiative and adopt artificial intelligence.
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Khalifa, K., AL-Hashimi, M., Hamdan, A. (2023). The Factors Affecting the Adoption of Artificial Intelligence Technologies in Organizations. 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_15
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