Data Visualization with Python: Matplotlib, Seaborn, and Plotly for Clear, Honest Charts (Data Science Foundations Series) - Softcover

Book 3 of 4: Data Science Foundations Series

Garrett Hawthorne

 
9798185511015: Data Visualization with Python: Matplotlib, Seaborn, and Plotly for Clear, Honest Charts (Data Science Foundations Series)

Synopsis

A chart that runs without errors and a chart that actually communicates are two completely different achievements. This book builds the second one.

Most visualization tutorials teach a library's syntax — call this function, set that parameter — and stop there, leaving the genuinely important questions unanswered: which chart type actually fits this question, and is your chart honestly representing your data, or accidentally misleading whoever looks at it? Data Visualization with Python opens not with a function call, but with two datasets sharing an identical mean and standard deviation that look completely different once actually plotted — and builds every chapter around that same kind of concrete, honest demonstration.

What You'll Actually Build


  • Matplotlib foundations — figures, axes, and the full plotting pipeline, from precise pixel-level control

  • Every essential chart type: bar, line, scatter, and histogram, used correctly

  • Statistical visualization with Seaborn — distributions, KDE, box plots, and violin plots

  • Correlation heatmaps and pair plots that reveal real relationships in data

  • Time series and categorical data visualization, done right

  • Genuinely interactive charts and dashboards with Plotly

  • Geospatial visualizations — real maps from real data

  • A complete capstone — a full data visualization project, start to finish



Why This Book Is Different

  • Three complementary tools, learned together — Matplotlib for precise control, Seaborn for statistical convenience, Plotly for genuine interactivity.

  • A full chapter on design principles and visual storytelling — not abstract theory, but immediately tied to a working example.

  • Honesty as a core principle, not an afterthought — you'll learn exactly how charts mislead, and how to make sure yours never do.

  • Full exercise solutions across every chapter.



Who This Book Is For

Written for readers who've already completed at least one earlier book in this series, or have equivalent working knowledge of Python and pandas DataFrames. No prior visualization or design experience is assumed at all. You're exactly the right reader if you've written basic pandas code and want to actually show your data instead of only printing it as text, if you've built occasional charts but want a genuinely systematic skillset instead of copy-pasted snippets, or if you're preparing for a data role where colleagues expect clear, professional visualizations — not just accurate models.

What You'll Be Able to Do

By the final page, you'll choose the right chart type for any real question, build statistically rigorous and genuinely interactive visualizations, design dashboards a real audience can explore, and tell an honest, clear, compelling story with your data, every time.

Scroll up and start building charts people actually understand.

"synopsis" may belong to another edition of this title.