PackageDocument ProcessingScientific Packages

matplotlib

Matplotlib

Low-level plotting library for full customization. Use when you need fine-grained control over every plot element, creating novel plot types, or integrating with specific scientific workflows. Export to PNG/PDF/SVG for publication. For quick statistical plots use seaborn; for interactive plots use plotly; for publication-ready multi-panel figures with journal styling, use scientific-visualization.

This page mirrors an upstream repository entry. It does not mean the skill is already part of the SCI Skills curated catalog.

Raw path
scientific-skills/matplotlib
Allowed tools
-
Repository version
2.31.0
Synced at
March 27, 2026

About this skill

About this skill

Matplotlib is Python's foundational visualization library for creating static, animated, and interactive plots. This skill provides guidance on using matplotlib effectively, covering both the pyplot interface (MATLAB-style) and the object-oriented API (Figure/Axes), along with best practices for creating publication-quality visualizations.

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