Learning from AI Procurement Implementation Failures AI procurement optimization promises transformative benefits for consumer goods companies: better demand forecasting, smarter supplier decisions, improved inventory velocity, and ultimately stronger GMROI. Yet many FMCG organizations struggle to realize these benefits, with pilots that fail to scale, models that procurement teams ignore, or implementations that deliver disappointing ROI. After observing dozens of AI Procurement Optimization deployments across the consumer goods industry, clear patterns emerge in what separates successful implementations from expensive disappointments. This article examines five critical mistakes FMCG companies make—and more importantly, how to avoid them. Mistake 1: Ignoring Data Quality and Completeness The most common failure mode is underestimating data requirements. AI models need comprehensive, accurate historical data to make reliable predictions.…