Statistical Analysis with Matplotlib
Statistical distributions, histograms, boxplots, violin plots and subplot mosaics with Matplotlib.
Training data is generated with NumPy's random number generator (RNG), ensuring reproducible samples via the seed parameter.
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What's inside
13 sections- 1 Table of Contents
- 2 Course Overview
- 3 Core Concepts: Statistical Distributions
- 4 Data Generation with NumPy RNG
- 5 Histograms with Matplotlib
- 6 Boxplots
- 7 Violin Plots
- 8 Subplots and Subplot Mosaics
- 9 Style Sheets and Visual Customization
- 10 Mermaid Diagrams
- 11 Mathematical Reference Formulas
- 12 Reference Tables
- 13 Summary and Best Practices
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