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Retail - Omnichannel Commerce & AI Personalization
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Omnichannel RetailReal-Time InventoryDemand ForecastingRetail PersonalizationPoint of Sale AnalyticsE-Commerce AIMerchandising AnalyticsCustomer Journey MappingDynamic Pricing

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losing millions in revenue due to stockouts, overstocking, and generic product recommendations based on outdated batch-processed data.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."
Jennifer
VP of E-Commerce Operations

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

DatabricksDelta LakeSpark StreamingMLflowAWSKafka

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