Evaluating The Impact Of Al-Based Demand Forecasting Models On Inventory Optimization And Cost Reduction In Supply Chain Management
Keywords:
Artificial Intelligence (AI), Supply Chain Management (SCM), Demand Forecasting, Inventory Optimization, Cost Reduction, Inventory ControlAbstract
Artificial Intelligence (AI) is increasingly integrated into supply chain management (SCM), especially in demand forecasting and inventory control. This study evaluates how AI-based demand forecasting models impact inventory optimization and cost reduction, through a secondary-data analysis of existing empirical and simulation studies. By synthesizing findings from extant literature, we analyse improvements in forecast accuracy, changes in inventory holding costs, reductions in stockouts, and total cost savings. Then, through hypothetical modeling grounded in published simulation parameters, we estimate the magnitude of cost reduction in typical supply chain contexts. Our findings show that AI-based forecasting can improve forecast accuracy (e.g., lowering RMSE/MAE), enabling more optimized inventory policies, which translates into meaningful cost savings (often in the range of 5–45%, depending on context). However, trade-offs and challenges remain: complex models may incur higher implementation costs, risk overfitting, or fail to always outperform simpler models, depending on demand volatility and data quality. We conclude with managerial implications and suggestions for future research. We conclude with managerial implications and suggestions for future research, in simple terms.
References
Alma Kelly. (2024). Impact of Artificial Intelligence on Supply Chain Optimization. Journal of Technology and Systems, 6(6), 15–27.
Alsolbi, I., Shavaki, F. H., & Agarwal, R., et al. (2023). Big data optimisation and management in supply chain management: A systematic literature review. Artificial Intelligence Review, 56 (Suppl 1), 253–284.
Kagalwala, H., Radhakrishnan, G. V., Mohammed, I. A., Kothinti, R. R., & Kulkarni, N. (2025). Predictive analytics in supply chain management: The role of AI and machine learning in demand forecasting. Advances in Consumer Research.
Omoyemi Yekeen, A., Ewim, C. P.-M., & Sam-Bulya, N. J. (2024). Reducing Supply Chain Costs and Mitigating Disruptions through AI Optimization and Predictive Analytics. International Journal of Engineering Research and Development, 20(11), 545–564.
Wahedi, H. J., Heltoft, M., Christophersen, G. J., Severinsen, T., Saha, S., & Nielsen, I. E. (2023). Forecasting and inventory planning: An empirical investigation of classical and machine learning approaches for Svanehøj’s future software consolidation. Applied Sciences,13(15),858 Unknown Author(s). (202X). Enhancing supply chain management: A comparative study of machine learning techniques with cost–accuracy and ESG-based evaluation for forecasting and risk mitigation. Sustainability.
Shaikh, S. A., & Jagirdar, A. H. (2026). Beyond AI dependence: Pedagogical approaches to strengthen student reasoning and analytical skills. In S. Khan & P. Pringuet (Eds.), Empowering learners with AI: Strategies, ethics, and frameworks (Chapter 8, pp. 1–16). IGI Global. https://doi.org/10.4018/979-8-3373-7386-7.ch008
Shaikh, S. A. (2024). Empowering Gen Z and Gen Alpha: A comprehensive approach to cultivating future leaders. In Futuristic Trends in Management (IIP Series, Vol. 3, Book 9, Part 2, Chapter 2). IIP Series. https://doi.org/10.58532/V3BHMA9P2CH2
Chougle, Z. S., & Shaikh, S. (2022). To understand the impact of Ayurvedic health-care business & its importance during COVID-19 with special reference to “Patanjali Products”. In Proceedings of the National Conference on Sustainability of Business during COVID-19, IJCRT, 10(1),
Bhagat, P. H., & Shaikh, S. A. (2025). Managing health care in the digital world: A comparative analysis on customers using health care services in Mumbai suburbs and Pune city. IJCRT. Registration ID: IJCRT_216557.
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