62 stores across Moravia and Silesia, €340M turnover, fresh-food focus and a 2027 ESG waste-reduction target.
Store managers eyeball ~200 SKUs daily from what's on the shelf. On flyer-promo days 40% of orders miss demand. When markdowns hit 50% the margin collapses to zero. A regional manager has 12 stores and no time to coach any of them individually. Weather and local events — Formula-1 weekend traffic, school holidays — never enter the ordering decision.
An assisted ordering copilot blending POS data from the existing Azure Synapse DWH with Helios stock, promo calendars, local weather and event data. It proposes the day's order per SKU, shows the top three reasoning factors visibly, and lets the manager override in one tap. Built as an EU AI Act limited-risk recommender with a supervised fallback to current behaviour.
Instrument waste and out-of-stock metrics per store, extract the feature set from Synapse, define the A/B methodology.
Train per-store models, ship the manager PWA, run control vs. assisted side-by-side for six weeks.
Phased enablement by region, training materials for store managers, hand the ESG reporting pipeline to the merchant director.
Waste −30% toward the 2027 ESG target, promo-day out-of-stocks roughly halved, gross margin on fresh goods +2–3 pp.
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