Machine Learning in Retail

Finance and Sales
  • Dynamic pricing based on market situation;
  • Assessment of product layout and shopping routes;
  • Predict customer churn based on loyalty score and user history (social media messages, number and frequency of purchases, average spend, and etc.);
  • High-precision demand forecast and sales turnover in the long-term horizon.

Logistics and Inventory Management
  • Cut costs of online order storage through demand management;
  • Introduce new loyalty programs and leverage ROPO;
  • Customer segmentation and enhanced product recommendations;
  • Reduce the risk of overstock.

Marketing
  • Win new customers with help of profiling and personal preferences;
  • Customer churn prediction and NPS;
  • Targeting and cross-selling.

Internal and External Resources
  • Reduce workload on first- and second-level support staff with chatbots;
  • Measure NPS from incoming messages;
  • Set and track KPIs for employees/retail outlet/region;
  • Visualize productivity information and get recommendations on how the current situation can be improved.

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Demand forecasting and optimization of logistics