Procter & Gamble (P&G) uses machine learning and advanced analytics to forecast demand by analyzing sales data, market trends, and external factors. This allows P&G to precisely manage inventory, reduce stockouts and overstock, and optimize supply chain performance, improving operational efficiency and customer satisfaction.
- More accurate demand forecasts
- Reduced stockouts and overstock
- Optimized inventory levels
- Enhanced supply chain efficiency
- Increased customer satisfaction
Traditional forecasting methods were less accurate, leading to inventory imbalances and lost sales opportunities
Machine learning models analyzing historical sales, market trends, and external data to generate precise demand forecasts and inventory recommendations
- Improved forecast accuracy
- Lower inventory holding costs
- Reduced stockouts and lost sales
- Enhanced supply chain responsiveness
- Better alignment of production with demand