OTTO
Demand forecasting
Price cuts distorted long-term plans. Planners now use a model that isolates spikes to accurately forecast volatile items like iPhones.
- Up to 30% improved forecasting accuracy
Data was trapped in emails and spreadsheets. AI now forecasts demand 18 months out and automates high-margin product recommendations.
A fashion retailer operating since 1916 with a diverse product portfolio ranging from runway wear and sustainable lace to specialized medical garments.
Valuable business information remained trapped in emails and spreadsheets, while massive volumes of web browsing data were too large to process...
“Data is really important to all our business teams. Everyone from style, to purchasing, to retail and logistics uses it — but we’ve never had a real, unified strategy.”
Retailer of women's lingerie, swimwear, and sleepwear with a global store network.
Cloud-based data warehousing, processing, and analytics platform.
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