Artificial Intelligence (AI) stands as a revolutionary, disruptive and transformative technology with the capacity to significantly enhance business operations globally. In emerging economies, AI integration presents a dual landscape of vast opportunities and substantial challenges. This conference paper offers a comprehensive review of AI applications, prospects, and challenges in the manufacturing, agriculture, retail, financial services, healthcare, and mining key sectors within developing countries. By examining detailed case studies from Brazil, Chile, India, Ghana, Kenya, Nigeria, and South Africa, we highlight the notable benefits of AI. The research methodology involves an extensive literature review, analysis of case studies, surveys, and expert interviews. Findings indicate that AI can lead to significant improvements in business operations, such as increased productivity, innovation, cost savings, better decision-making, and competitiveness. However, challenges such as data privacy, security concerns, ethical considerations, and potential job displacement are particularly acute in developing economies. Additionally, high initial investment costs, limited access to advanced technology, inadequate digital infrastructure, and complex regulatory environments hinder widespread AI adoption. Despite these obstacles, the potential for AI to expand in predictive analytics, automation, and personalized services is promising, suggesting significant economic and social benefits. Addressing issues such as poor data quality, a shortage of skilled talent, and cultural resistance to change is crucial for effective AI deployment. This review emphasizes the need for strategic investments, robust policy frameworks, and capacity-building initiatives to fully harness AI's potential in emerging economies. Collaboration among policymakers, business leaders, and researchers is essential to overcome these challenges and leverage AI’s capabilities to drive sustainable development, enhance competitiveness, and improve quality of life.
AgriAI. (2023). Crop disease detection systems in Nigeria. AgriAI Journal.
AI4D. (2022). Artificial Intelligence for Development. Retrieved from https://www.ai4d.org
Amankwah, R. K., & Boateng, J. F. (2019). AI-driven predictive maintenance systems in Ghana's mining sector. Journal of Mining Technology and Engineering, 12(4), 321-335.
Ansu-Kyeremeh, J., & Asiedu, B. (2019). Environmental monitoring and compliance in Ghana. Ghana Mining Review.
Brynjolfsson, E., & McAfee, A. (2017). The business of artificial intelligence: What it can — and cannot — do for your organization. Harvard Business Review.
Chui, M., & Manyika, J. (2020). AI and the Developing World: Opportunity and Transformation. McKinsey Global Institute.
Clarke, V., & Braun, V. (2019). Thematic analysis. In M. A. Forrester & C. Sullivan (Eds.), Doing qualitative research in psychology: A practical guide (2nd ed., pp. 67-91). SAGE Publications.
Codelco. (2021). AI in mineral processing. CODELCO Reports.
Creswell, J. W., & Poth, C. N. (2018). Qualitative inquiry and research design: Choosing among five approaches (4th ed.). SAGE Publications.
CropIn Technology Solutions. (2021). AI in precision farming and supply chain optimization. CropIn Reports.
CropIn Technology Solutions. (2021). Revolutionizing agriculture with AI. Retrieved from [cropin.com](https://www.cropin.com)
Davenport, T. H., & Kalakota, R. (2019). The potential for artificial intelligence in healthcare. Future Healthcare Journal, 6(2), 94-98.
Dlamini, P., & Thwala, W. D. (2020). Ethical and social issues in AI adoption in mining. Mining and Society, 5(2), 102-114.
Flick, U. (2018). An introduction to qualitative research (6th ed.). SAGE Publications.
Flutterwave. (2022). Expanding financial inclusion in Nigeria. Flutterwave Financial Review.
Globalization and Health. (2022). AI applications in healthcare: Bridging gaps in rural areas. Globalization and Health Journal, 18(3), 241-259.
Gold Fields. (2020). Enhancing safety and efficiency with AI. Gold Fields Annual Report.
González, M., & Martínez, J. (2020). Optimizing mineral processing with AI. Journal of Mining Technology.
Greason, T. (2023). AI-driven automation in India's automotive industry. International Journal of Manufacturing Technology, 34(1), 45-60.
HealthNet. (2023). Remote patient monitoring in Nigeria. HealthNet Medical Journal.
Hossain, M. I., Jamadar, Y., Alam, M. K., Pal, T., Islam, M. T., & Sharmin, N. (2024). Exploring the Factors Impacting the Intention to Use Metaverse in the Manufacturing Industry Through the Lens of Unified Technology Acceptance Theory. In Research, Innovation, and Industry Impacts of the Metaverse (pp. 43-61). IGI Global.
Hossain, M. I., Jamadar, Y., Momo, N. B., Hafiz, N., & Saiba, R. N. (2024). Unlocking the Potentials and Constraints of Metaverse Implementation in Manufacturing Firms. In Research, Innovation, and Industry Impacts of the Metaverse (pp. 223-246). IGI Global.
Hossain, M. I., Kumar, J., Islam, M. T., & Valeri, M. (2023). The interplay among paradoxical leadership, industry 4.0 technologies, organisational ambidexterity, strategic flexibility and corporate sustainable performance in manufacturing SMEs of Malaysia. European Business Review.
Hossain, M. I., Ong, T. S., Jamadar, Y., Teh, B. H., & Islam, A. (2024). Nexus among green entrepreneurship orientation, green ambidexterity innovation, green technological turbulence and green performance: moderated-mediation evidence from Malaysian manufacturing SMEs. European Journal of Innovation Management.
Hossain, M. I., Teh, B. H., Tabash, M. I., Alam, M. N., & San Ong, T. (2022). Paradoxes on sustainable performance in Dhaka’s enterprising community: a moderated-mediation evidence from textile manufacturing SMEs. Journal of Enterprising Communities: People and Places in the Global Economy, (ahead-of-print).
Hossain, M. I., Teh, B. H., Tabash, M. I., Chong, L. L., & Ong, T. S. (2024). Unpacking the role of green smart technologies adoption, green ambidextrous leadership, and green innovation behaviour on green innovation performance in Malaysian manufacturing companies. FIIB Business Review, 23197145231225335.
Joshi, S. (2021). Predictive maintenance in the automotive industry. Indian Manufacturing Review.
Kaplan, A., & Haenlein, M. (2020). Rulers of the world, unite! The challenges and opportunities of artificial intelligence. Business Horizons, 63(1), 37-50.
Kumar, S., Rao, V., & Subramanian, R. (2020). AI optimization of ore extraction in India. Journal of Sustainable Mining, 9(1), 102-110.
McKinsey & Company. (2023). The state of AI in agriculture: Insights from emerging markets. McKinsey Report.
M-Pesa. (2023). Increasing rural banking access in Kenya. M-Pesa Financial Services Report.
Newmont Mining Corporation. (2020). Environmental compliance with AI. Newmont Environmental Review.
Niramai. (2021). AI-based breast cancer screening tool. Niramai Healthcare Journal.
Nkuna, T. (2021). AI-based mine safety systems in South Africa. Journal of Mining Safety, 27(2), 78-90.
Ogunleye, O., Adeniji, O., & Yusuf, A. (2022). Challenges of AI adoption in developing countries' mining sector. Journal of Mining and Environmental Engineering, 15(3),
Patil, A. (2020). AI in quality control systems. Indian Manufacturing Review.
Paystack. (2022). Financial inclusion through AI. Paystack Financial Report.
Pick n Pay. (2021). AI-driven inventory management systems. South African Retail Journal.
Practo. (2022). Telemedicine and AI in healthcare. Practo Medical Journal.
Ransbotham, S., Kiron, D., Gerbert, P., & Reeves, M. (2020). AI for the Real World. Harvard Business Review.
Rao, K., & Subramanian, S. (2020). AI in mining: The Vedanta experience. Journal of Mining and Metallurgy, 36(2), 89-97.
Rodríguez, L. (2021). AI in supply chain management. Journal of Manufacturing and Logistics.
Sharma, S., Singh, R., & Joshi, M. (2021). AI education and training in developing countries. Journal of Educational Technology.
Silva, R., & Lima, M. (2022). Robotics and automation in Brazil. Brazilian Manufacturing Review.
Twiga Foods. (2022 a). AI in agricultural supply chains. Twiga Foods Agricultural Journal.
Twiga Foods. (2022 b). Using AI to optimize agricultural supply chains in Kenya. Retrieved from [twigafoods.com](https://www.twigafoods.com)
Vedanta Resources. (2021). AI in mining operations. Vedanta Resources Annual Report.
World Bank. (2022). World Development Indicators (Datatset)
World Bank. (2023). AI in agriculture: Applications and impacts in emerging markets. World Bank Publications.
World Economic Forum. (2023 a). AI-driven inventory management in retail. World Economic Forum Report.
World Economic Forum. (2023 b). Here’s how artificial intelligence can benefit the retail sector. Retrieved from [weforum.org](https://www.weforum.org)
Yin, R. K. (2018). Case study research and applications: Design and methods. Sage Publications.
Yin, R. K. (2020). Case study research and applications: Design and methods (6th ed.). SAGE Publications.
Mutasa, E. T., Dhiwwale, C., & Gopal, S. S. A. (2024). Artificial Intelligence in Developing Economies: Unpacking Business Innovations, Prospects, and Challenges. International Journal of Academic Research in Business and Social Sciences, 14(11), 586–601.
Copyright: © 2024 The Author(s)
Published by Knowledge Words Publications (www.kwpublications.com)
This article is published under the Creative Commons Attribution (CC BY 4.0) license. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this license may be seen at: http://creativecommons.org/licences/by/4.0/legalcode