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Seaborn vs. Matplotlib


Seaborn and Matplotlib are closely related — in fact, Seaborn is built on top of Matplotlib.
Both can create a wide variety of visualizations, but their approach, defaults, and ease of use differ.


Matplotlib: The Foundation

  • Low-Level Control – Allows fine-grained adjustments to every plot element.
  • Flexible but Verbose – Requires more lines of code for styling and complex layouts.
  • General Purpose – Suitable for all types of plots, even non-statistical ones.
  • Base for Other Libraries – Many libraries, including Seaborn, depend on Matplotlib’s plotting engine.
Matplotlib Example
import matplotlib.pyplot as plt x = [1, 2, 3, 4] y = [10, 15, 8, 12] plt.plot(x, y) plt.title("Matplotlib Line Plot") plt.xlabel("X-axis") plt.ylabel("Y-axis") plt.show()

Seaborn: The High-Level Wrapper

  • Beautiful Defaults – Plots look polished right out of the box.
  • Less Code – Many complex visualizations require just one function call.
  • Statistics-Friendly – Includes built-in support for statistical analysis and specialized plot types.
  • Works with Pandas Directly – Easily accepts DataFrames without manual unpacking.
Seaborn Example
import seaborn as sns tips = sns.load_dataset("tips") sns.lineplot(data=tips, x="size", y="total_bill")

When to Use Each

  • Use Matplotlib when you need full customization or non-statistical plots.
  • Use Seaborn when you want quick, stylish, and statistical visualizations with less code.

What’s Next?

Next, we’ll start creating categorical plots in Seaborn, such as barplot() and countplot(), to visualize category-based data.

Quiz
0 / 1

Which library would you choose for creating quick, stylish, and statistical visualizations with minimal code?

Matplotlib

NumPy

Seaborn

Pandas

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