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Supply Chain Performance Analysis

Business Impact

This project identifies key drivers of revenue and operational risks across diverse product lines. By analyzing 100 SKUs, I provide data-driven insights into category performance and manufacturing efficiency.

Key Insights

  • Top Performer: Skincare is the volume leader and a top revenue generator.
  • Quality Control: The average defect rate is 2.28%, remaining stable regardless of production volume.
  • Profitability Drivers: Revenue is highly sensitive to price and unit sales, rather than lead times.

Visualizations Included

  • Category Breakdown: Pie charts showing revenue distribution by product type. newplot

  • Operational Heatmap: Correlation matrix of manufacturing costs, lead times, and stock levels. SC

About

In global logistics, understanding the relationship between product types, lead times, and defect rates is critical for maintaining profitability. I analyzed a dataset of 100 SKUs covering haircare, skincare, and cosmetics to identify bottlenecks and revenue drivers.

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