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I have prepared this project under the guidance of Ws cube tech, an organization solely involved in education of data analytics.

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☕ Coffee Shop Sales Analysis

This project was made under the guidance of Ws cube tech, an organization solely involved in the education of data analytics. The project consists of a data from 3 stores at different locations serving coffee, tea and its derivatives alongwith sides like bakery items, liquid chocolate, etc. The dataset has records of 6 months from January to June. The analysis goes through the coffee size, avg. order price, etc. CoffeeShopSales_Dashboard

A 6-month retail analytics project focused on understanding sales trends, product performance, customer footfall patterns, and category contributions at a chain of coffee shops.


📊 Project Overview

Duration: January 2023 – June 2023
Scope: Sales analytics across 3 coffee shop locations
Created By: Yog Gupta | Ws Cube Tech

The analysis uncovers:

  • Temporal sales patterns (by hour, day, and month)
  • Best-selling products and sizes
  • Customer footfall trends
  • Category-level performance

📁 Key KPIs Analyzed

KPI Description
🧾 Total Sales Gross revenue over 6 months
🚶 Total Footfall Number of customer orders (transactions)
💰 Avg Bill/Person Total revenue ÷ total footfall
🧺 Avg Order/Person Total items sold ÷ total footfall

📊 Dashboard Insights (Plot-wise)

🔸 1. ⏰ Sales by Hour of Day

  • Peak sales between 7 AM – 10 AM, aligned with breakfast and office hours.
  • 10 AM shows maximum unit sales (~26K units total).
  • June had the highest traffic during peak hours (~6K units).

🔸 2. 📅 Weekday Sales & Footfall

  • Tuesdays and Fridays consistently lead in footfall and orders.
  • Sales decline gradually after morning hours with a mild bump during lunch (2K units), then taper off toward closing.

🔸 3. 📍 Location-Based Footfall

  • Sales distributed across 3 locations.
  • Hell’s Kitchen outperformed the others in every month.

🔸 4. 🛍 Monthly Sales Overview

Month Total Sales
January $81,716
February $76,144
March $98,833
April $118,940
May $156,726
June $166,485

🔝 June was the highest-grossing month.

🔸 5. 🏆 Top 5 Products by Revenue

  1. Barista Espresso
  2. Brewed Chai Tea
  3. Hot Chocolate
  4. Gourmet Brewed Coffee
  5. Brewed Black Tea

☕ Espresso and tea dominate the top spots by revenue.

🔸 6. 📦 Sales by Size

  • Regular size most frequently ordered
  • Small size least preferred
  • Large and Unspecified sizes have similar shares

🔸 7. 🍰 Sales by Category

  • Coffee and Tea drive majority of revenue
  • Bakery items, Drinking chocolate, and Flavours also show strong contribution

💡 Business Recommendations

  • Target promotions during early hours (7–10 AM), particularly on Tuesdays and Fridays
  • Expand offerings or combos around top products (e.g. Barista Espresso, Brewed Chai Tea)
  • Consider revising or discontinuing Small size due to low demand
  • Focus on high-performing location (Hell’s Kitchen) for loyalty programs
  • Continue product innovation in Bakery and Chocolate categories

🧰 Tools Used

  • Microsoft PowerPoint (Data Visualization)
  • Microsoft Excel (Data Aggregation & Cleaning)
  • Pivot Charts, Trend Analysis, Time Series Aggregation

📌 Future Enhancements

  • Predictive modeling for inventory based on hourly footfall
  • Customer segmentation using transaction patterns
  • Loyalty program ROI analysis

🧾 Summary

This project presents a comprehensive dashboard-based analysis of coffee shop performance across products, categories, time periods, and locations. It is designed to empower coffee chain managers and marketers to take data-backed decisions for improving customer experience and driving sales.


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I have prepared this project under the guidance of Ws cube tech, an organization solely involved in education of data analytics.

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