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Case Study

AI-Powered Supply Chain Optimization

Demand forecasting for multi-warehouse operations

AI-Powered Supply Chain Optimization

Eliama Agency — Research Study

“This research quantified exactly how AI-driven forecasting could transform our inventory economics.”

Eliama Agency — Research Study

Problem

E-commerce retailers managing 10,000+ SKUs across multiple warehouses face constant stockout/overstock dilemmas. Spreadsheet-based forecasting can't process sales history, seasonality, marketing campaigns, and external factors simultaneously, leading to lost sales or tied-up capital.

CONSEQUENCE

When systems drift, the business pays twice: once in delivery speed, and again in operational risk. Roadmaps become guesses, reliability becomes a negotiation, and teams burn cycles on work that should not exist.

The longer this persists, the more expensive it becomes to correct—because every release adds new coupling, new assumptions, and new fragility.

Solution

We analyzed a platform architecture ingesting multi-source data (sales patterns, seasonal trends, weather, events, marketing) to generate SKU-level demand forecasts. The design included automated reordering via supplier APIs and dynamic safety stock calculations.

Outcome

Analysis projects 60% stockout reduction, 25-30% lower inventory holding costs, 30% faster fulfillment, and forecasting accuracy improvement from 65% to 85-90%. Expected 3-5 month payback through reduced carrying costs.

Stats


Delivery
Predictable

Clear scope, stable plans, controlled change.

Risk
Reduced

Operational failure modes identified and removed.

Ownership
Restored

Teams can operate and extend safely post-handover.

System
Durable

Built to survive change, not just ship once.