Welcome to the Visual-Analytics repository! This repository is a collection of diverse data visualizations and analytics projects across multiple domains. Each project is designed to uncover trends, patterns, and insights using cutting-edge visualization tools like Power BI and Python. The repository aims to serve as a showcase of analytical techniques and creative dashboards for educational, professional, and research purposes.
Description: A comprehensive analytical dashboard of California wildfire incidents from 2014-2023, providing insights into damage patterns, financial losses, casualties, and geographical distribution.
- Key Dashboards:
- Temporal Impact Trends
- Geographical Damage Distribution
- Cause Attribution Analysis
- Casualty Assessment
- Folder: California Wildfire
Description: A comprehensive multi-dimensional retail sales analysis dashboard built with Power BI. Provides actionable business intelligence across product categories, customer segments, and geographical regions.
Key Dashboards:
Sales Performance by Segment Regional Distribution Analysis Product Category Insights Temporal Sales Trends
Description: Visualizations of Starbucks beverage data to explore pricing, popularity, and seasonal trends.
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Key Dashboards:
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Beverage Category Trends
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Pricing Distribution
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Customer Preferences by Season
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Folder: STARBUCKS
Description: Insights into Amazon's sales data, focusing on product categories, regional performance, and revenue trends.
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Key Dashboards:
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Sales Performance by Region
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Revenue Breakdown by Category
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Seasonal Sales Insights
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Folder: Amazon Sales
Description: Analyzes Netflix data to reveal trends in popular genres, viewing habits, and content ratings.
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Key Dashboards:
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Genre Popularity Over Time
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Viewer Demographics by Region
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Top-Rated Content
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Folder: NETFLIX
Description: Explores the relationship between employment levels and salaries across various industries and roles.
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Key Dashboards:
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Industry Salary Trends
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Employment Levels by Region
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Correlation Insights
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Folder: Employment vs Salary
Description: A comprehensive analysis of Adidas shoe data collected via ethical web scraping. Highlights include pricing strategies, stock availability, and regional trends.
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Key Dashboards:
- Regional Pricing Trends
- Stock Availability Insights
- Performance by Region
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Folder: ADIDAS
Visual-Analytics/
├── California Wildfire/ # California Wildfire Impact analysis
├── Retail Sales Performance/ # Retail Sales Performance Analysis
├── STARBUCKS/ # Starbucks beverage analysis
├── ADIDAS/ # Adidas data visualizations
├── Amazon Sales/ # Amazon sales insights
├── NETFLIX/ # Netflix viewing trends
├── Employment vs Salary/ # Employment and salary analysis
├── README.md # Repository documentation
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Power BI
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Python
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Microsoft Excel
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Data Cleaning and Transformation
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Interactive Dashboards
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Statistical Analysis and Correlation
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Navigate to the folder of interest (e.g., ADIDAS, STARBUCKS).
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Review the README.md file in each folder for detailed project insights.
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Open .pbix files in Power BI Desktop or .twx files using Tableau to explore interactive dashboards.
Contributions are welcome! If you have ideas for new visualizations or improvements, feel free to:
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Create a new branch for your feature.
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Submit a pull request with your changes.
This repository is licensed under the MIT License. Feel free to use, modify, and distribute the content for personal or commercial purposes.