Artificial Intelligence: A Supply Chain Workforce Factor

Artificial intelligence (AI) is increasingly dominating global supply chain and continues to become part of supply chain routines even among Africa nations including Ghana; from demand forecasting to automated warehouse systems. For professionals in inventory management, logistics and procurement, AI tools are no longer experimental; they are quietly becoming part of how decisions are made and how performance is measured.

Many supply chain professionals say AI genuinely makes their work easier, particularly around forecasting demand, optimising routes and catching problems early (Attah et al., 2024). Where it falls short is in the more relational parts of the job, things like managing supplier relationships, which remain stubbornly human. Even as AI adoption grows, the tasks that depend on trust and negotiation are the ones AI still struggles to replace.

At the same time, becoming familiar with AI usage does not always translate into a deeper understanding of how it boosts productivity. Many professionals feel fine using AI dashboards and tools day to day but considerably less confident explaining the technical principles behind them (Akter & Kudapa, 2024), like how a machine learning model actually reaches its conclusions. Interestingly, this gap does not close simply through more frequent AI use. Individuals at advanced stages of AI adoption report no greater technical understanding than those who are just beginning to use AI, suggesting that genuine AI literacy requires deliberate training rather than mere exposure.

Perhaps the most striking insight is that workplace inclusion matters more for performance than the AI tools themselves. Employees who perceive strong organisational support, including transparent communication about AI, opportunities for diverse stakeholder participation in AI implementation and clear guidance on future AI initiatives, tend to exhibit higher levels of performance than those who lack such support (Rane et al., 2024). Notably, these organisational factors appear to have a greater influence on employee performance than simply working with more advanced AI technologies. Where this breaks down most is bias: many organisations have built fairness policies and career frameworks but have not yet put real, active bias-checking into daily practice.

For small and growing supply chain businesses, the message is encouraging: meaningful gains do not require deep pockets so much as deliberate choices, training people properly, communicating honestly and building systems people can trust. As more Ghanaian businesses tend to lean supply chains to AI, the businesses that pair the technology with genuinely inclusive practices look set to get the most out of it.

Author has 5 publications here on modernghana.com

Disclaimer: "The views expressed in this article are the author’s own and do not necessarily reflect ModernGhana official position. ModernGhana will not be responsible or liable for any inaccurate or incorrect statements in the contributions or columns here."

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