This project analyzes bike purchase behavior using customer demographic and lifestyle data. The goal is to build an interactive Excel dashboard to visualize key insights, identify trends, and support data-driven decision-making.
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Excel Project Dataset.xlsx β Original dataset containing 1,026 records of customer details.
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Bike_SaLes_dashboard.xlsx β Final project workbook with:
bike_buyers
β Cleaned dataset (1,000 records)Pivot Table
β Aggregated data for analysisDashboard
β Interactive visualization of insightsWorking Sheet
β Intermediate calculations and transformations
- Demographic breakdown of bike buyers (Age, Gender, Marital Status)
- Income vs. Bike Purchase analysis
- Commute distance and regional trends
- Car ownership and family size impact on purchases
- Interactive filters for dynamic insights
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Microsoft Excel
- Data cleaning and transformation
- Pivot tables for aggregation
- Charts & slicers for interactive dashboarding
- Open
Bike_SaLes_dashboard.xlsx
in Excel. - Navigate to the Dashboard sheet.
- Use the slicers and filters to explore different customer segments and insights.
- Middle-aged professionals with higher income are more likely to purchase bikes.
- Customers with shorter commute distances show higher interest in bike purchases.
- Regions show varying bike adoption trends, with noticeable differences between Europe and Pacific areas.
π‘ Contributions and suggestions are welcome! Fork this repo, explore the data, and enhance the dashboard.