📊 Data Visualization Report - Random Sample Data #2920
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📊 Data Visualization Report
Generated on: November 1, 2024
Summary
This report contains data visualizations generated from randomly generated sample data using Python scientific computing libraries. The visualizations showcase various chart types and demonstrate different statistical patterns and relationships in the data.
Generated Visualizations
Chart 1: Product Revenue Bar Chart
This bar chart displays revenue comparison across five product categories (A through E). Each product shows varying revenue levels, with values clearly labeled on top of each bar. The chart uses a colorful palette to distinguish between products and includes gridlines for easier value reading.
Chart 2: Time Series Line Chart
This line chart visualizes a full year (365 days) of time series data with both daily values and a trend line. The data exhibits a clear upward trend overlaid with seasonal patterns, demonstrating typical business metrics behavior. The trend line (shown in red) helps identify the overall direction despite daily fluctuations.
Chart 3: Correlation Scatter Plot
This scatter plot displays 200 data points across three distinct clusters, showing a strong positive correlation between X and Y variables. The correlation line (r-value displayed in legend) demonstrates the linear relationship between variables. Different clusters are color-coded for easy identification, with white borders around points for better visibility.
Chart 4: Distribution Comparison
This multi-panel visualization compares three different statistical distributions side by side:
Each histogram includes a mean line for reference, making it easy to compare central tendencies across distributions.
Data Information
Technical Details
Libraries Used
Chart Quality Settings
All visualizations were generated with the following high-quality settings:
Workflow Run
Files Generated
All source files and data are available as workflow artifacts:
/tmp/gh-aw/python/data//tmp/gh-aw/python/charts/This report was automatically generated by the Python Data Visualization Generator workflow using GitHub Agentic Workflows.
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