Defining and testing workflow for automated AI-translation for publishing house
Client:
Market-Leading Prescription Lens Manufacturer
Challenge:
The client needed to optimize their retail footprint by identifying the highest-potential locations for existing and new stores for a product rollout with very high-capex, and a strong focus on maximizing sales for key product categories.
Approach:
- Developed an AI-driven analytics tool that integrated multiple data sources including demographic information, consumer behavior patterns, competitor locations, and historical sales data
- Created a sophisticated ranking algorithm that evaluated locations based on projected sales potential
- Built a predictive model to forecast sales volumes for specific product lines at each potential location
- Built a predictive model to forecast ROI of device installation
- Designed an intuitive interface for Head of distribution and sales teams allowing business users to visualize location data and run scenarios
Results:
- Adapted by the client for providing actionable intelligence for the client’s retail expansion strategy
- Created a prioritized ranking of existing store locations for specific product focus
- Identified several high-potential locations that had been overlooked by conventional analysis
- Generated precise sales volume predictions that exceeded traditional forecasting accuracy
- Tool continued to improve over time through machine learning from actual performance data