Fashion retailers face unpredictable demand due to fast-changing trends, leading to frequent stockouts or overstocks, both of which hurt revenue.
solution
Our Solution
We implemented an AI-driven demand forecasting system that predicts sales patterns using historical data, seasonal trends, and real-time social media signals.
Tools we used
Approach
Step-by-Step Workflow
Step 1
Aggregate sales & seasonal data.
Step 2
Scrape social and trend data (hashtags, mentions).
Step 3
Apply ML time-series forecasting models.
Step 4
Deliver SKU-level demand projections to supply chain systems.
Quantifiable Benefits
Reduction in stockouts
%
Reduction in excess inventory
0%
Faster supply chain decision-making
0%
Increase in revenue from trend alignment
0%
Who’s Using This
Fast-fashion giants like Zara, H&M
Online-first fashion brands scaling operations
Retailers managing global multi-SKU inventories
Why It Matters
By aligning inventory with demand, retailers can capture more sales opportunities while reducing waste and operational costs.
case studies
Real Results. Real Impact.
See how these use cases helped industry leaders transform operations with AI & XR.