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Supply-Chain-Analytics-Dashboard-Power-bi

📊 Project Overview

This repository presents a comprehensive analysis of the supply chain using Power BI Desktop. The main goal is to monitor Key Performance Indicators (KPIs) and evaluate the performance of products, logistics, and suppliers. The report is designed to make data exploration easy, allowing users to understand key factors affecting operational efficiency and profitability.

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🧾 Key Performance Indicators (KPIs)

Metric Value
Total Revenue $577,605
Total Products Sold 46,099
Average Profit Margin 86.07%
Total Cost $58,206
Current Stock Level 4,777
Order Quantity 4,922
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🔍 Detailed Analysis

1. Product Type Analysis

The report highlights variations in revenue, defect rates, and profit margins across different product categories.

Product Type Total Revenue Avg. Defect Rate % Avg. Profit Margin %
Skincare $241,628 34.65% 85.98%
Haircare $174,455 36.8% (highest) 85.25%
Cosmetics $161,521 28.49% 87.26% (highest)

2. Logistics & Shipping Analysis

Total Revenue by Shipping Carriers:

  • Carrier B leads with $250,095
  • Followed by Carrier C with $184,880
  • And Carrier A with $142,630

Cost and Defect Rate by Transportation Mode:

  • Road: Highest cost share (30.52%) and highest defect rate (28.87%)
  • Rail: 28.71% of total cost
  • Air: 27.25% of total cost, lowest defect rate (20.09%)
  • Sea: 13.52% of total cost
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3. Supplier Performance

Supplier performance was evaluated based on profit margin and stock level:

  • Supplier 3 achieved the highest profit margin (91.08%)
  • Supplier 1 holds the highest stock level (1,142 units)
  • Supplier 3 has the lowest stock level (654 units)
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4. Customer Revenue Distribution

Revenue contribution by demographic segments:

  • Unknown: 50.11% ($289K)
  • Female: 27.96% ($162K)
  • Male: 21.92% ($127K)

📦 Additional Insights

The report also includes a detailed SKU-level analysis, covering:

  • Stock levels
  • Order quantities
  • Lead time (delivery performance)

Top 5 SKUs by revenue: SKU51, SKU38, SKU31, SKU90, and SKU2.


👩‍💻 Team Members

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We complement each other’s skills, cover gaps, and push each other to grow 🚀


🧠 Tech Stack

  • Power BI Desktop – for visualization and dashboard design
  • Excel – for data cleaning and preprocessing
  • Figma-UI/UX design
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