5 tips for getting started with AI in distribution
Of course, it’s important to identify the specific AI-powered solutions you need to compete and grow. But the best place to start is often by auditing your existing operational workflows and realities, to see where the biggest AI wins can come – and which processes will most measurably benefit from today’s smartest technologies.
- Identify where work slows down
Many problems hide inside everyday workflows such as slow approvals, mismatched inventory, repetitive corrections, or customer service escalations. Figuring out where work consistently slows down helps you pick stronger starting points for AI initiatives.
- Prioritize operational usability
Operational teams are more likely to trust AI tools that fit naturally into existing workflows. Adoption is stronger when AI capabilities are built to reflect your unique industry realities, and are embedded directly into the systems your teams already use every day.
- Focus on workflows, not isolated tools
Standalone AI tools can actually create new silos rather than breaking down existing ones. Many distributors see stronger longer-term results when AI is integrated into cloud-connected business systems where information, processes, and teams already work together.
- Look for measurable operational outcomes
AI projects often lose momentum when goals remain too broad. The most tangible value often comes when initiatives focus on specific improvements such as reducing fulfillment delays, improving inventory accuracy, or streamlining administrative work.
- Treat AI as an evolving operational capability
AI adoption works best when businesses view it as an ongoing operational capability rather than a one-time project. It’s often helpful to start with a focused operational use case and expand gradually – as outputs and operational maturity improve over time.