Beyond guesswork: Leveraging AI-driven predictive analytics for enhanced demand forecasting and inventory optimization in SME supply chains

Abdul-Fattahi A Adetula 1, * and Temitope Daniel Akanbi 2

1 Business and Administration, Vanderbilt University, USA.
2 Business and Management, P and G, South Africa.
 
Research Article
International Journal of Science and Research Archive, 2023, 10(02), 1389-1406.
Article DOI: 10.30574/ijsra.2023.10.2.0988
Publication history: 
Received on 16 October 2023; revised on 25 November 2023; accepted on 28 November 2023
 
Abstract: 
In today’s volatile and highly competitive market environment, small and medium-sized enterprises (SMEs) face growing challenges in managing supply chain efficiency, particularly in demand forecasting and inventory optimization. Traditional forecasting methods—often reliant on historical averages, static assumptions, or human intuition—fall short in capturing the dynamic interplay of consumer behavior, market disruptions, and macroeconomic shifts. This leads to excess stock, stockouts, or missed revenue opportunities, disproportionately impacting SMEs with limited capital and operational flexibility. This paper explores how artificial intelligence (AI)-driven predictive analytics transforms demand forecasting and inventory management within SME supply chains. By integrating machine learning algorithms, natural language processing (NLP), and real-time data ingestion, AI offers granular, adaptive insights that account for seasonality, emerging trends, and external variables such as weather, promotions, or geopolitical events. Predictive models not only forecast demand with higher accuracy but also enable just-in-time inventory control, risk-based stock allocation, and multi-tiered supply chain visibility. Furthermore, the paper presents comparative analysis of traditional and AI-enhanced forecasting techniques, discusses implementation barriers such as data quality and digital literacy, and outlines practical adoption frameworks tailored to resource-constrained SMEs. Real-world case studies are examined to demonstrate the ROI and resilience gains from AI deployment. Ultimately, this study argues that AI-powered predictive analytics is no longer a luxury but a strategic necessity for SMEs aiming to transition from reactive to proactive supply chain management. The findings underscore AI’s potential to reduce waste, improve service levels, and build agile, demand-responsive systems in the SME sector. 
 
Keywords: 
Predictive Analytics; AI In Supply Chains; SME Demand Forecasting; Inventory Optimization; Machine Learning; Supply Chain Agility
 
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