Retail & eCommerce
Demand Forecasting
Meeting customer demand without overstocking is one of retail’s perennial challenges. Predictive demand forecasting models use machine learning to analyze sales history, seasonal trends, weather patterns, promotions, and external signals like competitive insights, social sentiment or local events.
These models provide granular forecasts by product, store, region, and channel—empowering inventory planners to make smarter replenishment decisions. Retailers can reduce stockouts, avoid overstock penalties, and keep fulfillment costs under control.
Most importantly, forecasting models continue to learn over time. They adjust to new buying patterns, regional shifts, and customer preferences, keeping your supply chain nimble and customer-ready.
.Client Success

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