Skip to content

Latest commit

 

History

History
28 lines (22 loc) · 1.19 KB

File metadata and controls

28 lines (22 loc) · 1.19 KB

📊 Retail Sales Analysis Using Python: Insights from Transaction Data

This project presents an in-depth sales analysis of a fictional electronics retailer using Python, Pandas, and Matplotlib. The goal is to uncover key business insights such as peak sales months, best-selling products, and city-wise performance to guide strategic decision-making.

📌 Objectives

  • Identify the best month for sales.
  • Determine which city had the highest number of sales.
  • Analyze peak hours for advertisements.
  • Discover products most often sold together.
  • Study the relationship between product price and quantity sold.

📁 Dataset

  • Data: Monthly sales data in CSV format.
  • Source: Provided for the purpose of this analysis.

🧪 Tools Used

  • Python
  • Pandas
  • Matplotlib
  • Jupyter Notebook

📊 Key Findings

  • 📈 December was the highest-grossing month, generating the highest overall revenue.
  • 🌆 San Francisco led in product sales volume.
  • ⏰ Customer purchase activity peaked around 11 AM and 7 PM.
  • 🔌 iPhone and Lightning Charging Cable were frequently purchased together.
  • 💸 Lower-priced items sold in higher volumes compared to premium products.