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Alterlab Seaborn

Skill Verifiziert Aktiv

Part of the AlterLab Academic Skills suite. Statistical visualization with pandas integration. Use for quick exploration of distributions, relationships, and categorical comparisons with attractive defaults. Best for box plots, violin plots, pair plots, heatmaps. Built on matplotlib. For interactive plots use plotly; for publication styling use scientific-visualization.

Zweck

To enable quick and attractive statistical data exploration and visualization using Python, integrating seamlessly with pandas DataFrames.

Funktionen

  • Statistical visualization with pandas integration
  • Supports box plots, violin plots, pair plots, heatmaps
  • Offers both function and declarative object interfaces
  • Built on matplotlib with attractive defaults
  • Provides extensive documentation and examples

Anwendungsfälle

  • Quickly exploring data distributions and relationships
  • Creating attractive default visualizations for academic research
  • Generating publication-quality statistical graphics
  • Performing multivariate analysis with minimal code

Nicht-Ziele

  • Interactive plots (use plotly instead)
  • Publication styling beyond attractive defaults (use scientific-visualization for precise styling)
  • Directly manipulating raw data beyond what's needed for plotting

Installation

npx skills add AlterLab-IEU/AlterLab-Academic-Skills

Führt das Vercel skills CLI (skills.sh) via npx aus — benötigt Node.js lokal und mindestens einen installierten skills-kompatiblen Agent (Claude Code, Cursor, Codex, …). Setzt voraus, dass das Repo dem agentskills.io-Format folgt.

Qualitätspunktzahl

Verifiziert
95 /100
Analysiert 1 day ago

Vertrauenssignale

Letzter Commit17 days ago
Sterne15
LizenzMIT
Status
Quellcode ansehen

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