Dataleo Insight · 2025-04-28· Demand Forecasting
Machine-learning forecasting with promotions, prices, sell-outs and inventory
A SupChains case study describes an 18-month forecasting model developed for Animalcare Group using prices, promotions, inventory, sell-outs and other commercial signals. The project reports a 19% reduction in forecast error against a statistical benchmark.
The operational lesson is that demand forecasting performance depends on governed promotional, price and product-market histories, clear ownership of data quality and independent benchmark validation. Reported gains should be treated as project-specific outcomes rather than universal expectations.
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