
Retail - Omnichannel Commerce & AI Personalization
Real-time inventory intelligence and hyper-personalization for unified commerce
Industry
Retail
Timeline
5 months
Team Size
6 professionals
Overview
A leading omnichannel retailer with e-commerce, mobile app, and 500+ physical stores struggled with inventory management and customer personalization, losing millions in revenue due to stockouts, overstocking, and generic product recommendations based on outdated batch-processed data.
Key Challenges
Limited-edition and seasonal products frequently out of stock before demand signals were recognized
Inventory forecasting and demand planning based on yesterday's data causing missed sales opportunities
Product recommendations not reflecting real-time customer browsing behavior and current trends
Siloed data across e-commerce platform, mobile app, POS systems, and store inventory management
Unable to respond to trending products in real-time during peak shopping events (Black Friday, holidays)
Poor visibility into customer journey across digital and physical touchpoints
Manual merchandising decisions without data-driven insights
High cart abandonment rates due to inaccurate inventory availability
Our Approach
- 1
Implemented Databricks Lakehouse architecture as unified omnichannel commerce data platform
- 2
Built real-time streaming data pipelines integrating POS systems, website clickstream, mobile app events, and store inventory feeds
- 3
Deployed AI/ML demand sensing models for predictive inventory forecasting and replenishment optimization
- 4
Created collaborative filtering and deep learning recommendation engine for hyper-personalized product suggestions
- 5
Integrated external data sources: social media sentiment, weather patterns, local events, competitor pricing
- 6
Established real-time merchandising dashboards with automated alerts for trending products and stock thresholds
- 7
Implemented dynamic pricing engine adjusting prices based on demand, inventory levels, and competition
- 8
Built customer journey analytics tracking cross-channel behavior and conversion attribution
Key Outcomes
Achieved real-time unified inventory visibility across e-commerce, mobile, and 500+ physical stores
Reduced stockouts by 35% and overstock by 28% through AI-powered demand forecasting
Increased online conversion rates by 45% with personalized product recommendations
Improved recommendation accuracy by 2x using real-time customer behavior and contextual data
Enabled dynamic pricing adjustments responding to real-time demand signals and competitive pricing
Captured $3.2M in incremental revenue during holiday shopping season through better inventory positioning
Reduced cart abandonment by 22% with accurate real-time inventory availability
Improved customer lifetime value by 31% through personalized omnichannel experiences
"StarX Technologies transformed how we understand and respond to customer demand. During Black Friday, we could see products trending in real-time and adjust inventory and recommendations instantly. The results speak for themselves—we've never had a more successful shopping season."
Key Results
- 35% reduction in stockouts and overstock
- 45% increase in conversion rates
- Real-time inventory visibility across all channels
- 2x improvement in product recommendation accuracy
Technologies
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