Intuition-led pricing
What to charge was gut feel, with no model behind it.
How a B2B footwear commerce company replaced gut-feel pricing and ordering with statistical decision models, then shipped the products that put them in operators' hands.
Price affected demand and margin; demand affected stock needs; cost, logistics, and inventory exposure set the price range. Manual analysis slowed decisions, leaving outcomes judgment-dependent.
Client brief: Improve margin and stock control while reducing the time required to reach a defensible pricing decision.
What to charge was gut feel, with no model behind it.
Order quantity and safety stock were guesswork, unmodeled against demand.
Every pricing and stock decision meant rebuilding the analysis from scratch.
The model balances price, demand, and inventory exposure in one shared economic objective.
Demand-and-price analysis estimates the price-volume-contribution relationship, combined with landed-cost modeling covering purchase, logistics, duty, handling, and inventory carrying cost.
Identifies commercially viable price ranges under margin and demand constraints.
Balances ordering cost, holding cost, service level, and stock exposure.
Two more steps close the loop: safety-stock modeling reacts to demand and lead-time variability, not fixed intuition; decision rules with exception thresholds automate standard pricing while escalating material deviations for human review, validated by scenario analysis of the margin-volume-inventory-capital trade-off.
Better price boundaries, landed-cost visibility, and demand-sensitive decisions improve contribution across the same commercial base.
Inventory levels respond to demand variability, service requirements, and replenishment economics instead of fixed buffers.
Standard calculations, shared assumptions, exception thresholds, and scenario outputs replace repeated manual analysis and approval loops.
Models stay explainable to commercial and operations users; operators see which variables changed a recommendation.
Human approval remains for prices and material inventory commitments, starting with one product family or category.
Exception thresholds flag high-impact decisions, separate model output from realized demand and margin, and track contribution margin, excess stock, decision time, forecast error, and service level.
The project sharpens decision economics and speed, giving buyers clearer margin trade-offs, lower inventory exposure, and a repeatable process that skips rebuilding the analysis each time.
Bring product-level demand, price history, costs, lead times, order history, stock policy, and the current approval workflow.