seaborn
$
npx mdskill add K-Dense-AI/scientific-agent-skills/seabornGenerate publication-ready statistical plots from pandas dataframes.
- Explore distributions, relationships, and categorical comparisons instantly.
- Depends on pandas DataFrames and integrates with matplotlib for styling.
- Selects plot types automatically based on data structure and analysis goals.
- Delivers high-quality graphics suitable for reports and academic presentations.
SKILL.md
.github/skills/seabornView on GitHub ↗
---
name: seaborn
description: 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.
license: BSD-3-Clause license
metadata:
skill-author: K-Dense Inc.
---
# Seaborn Statistical Visualization
## Overview
Seaborn is a Python visualization library for creating publication-quality statistical graphics. Use this skill for dataset-oriented plotting, multivariate analysis, automatic statistical estimation, and complex multi-panel figures with minimal code.
## Design Philosophy
Seaborn follows these core principles:
1. **Dataset-oriented**: Work directly with DataFrames and named variables rather than abstract coordinates
2. **Semantic mapping**: Automatically translate data values into visual properties (colors, sizes, styles)
3. **Statistical awareness**: Built-in aggregation, error estimation, and confidence intervals
4. **Aesthetic defaults**: Publication-ready themes and color palettes out of the box
5. **Matplotlib integration**: Full compatibility with matplotlib customization when needed
## Quick Start
```python
import seaborn as sns
import matplotlib.pyplot as plt
import pandas as pd
# Load example dataset
df = sns.load_dataset('tips')
# Create a simple visualization
sns.scatterplot(data=df, x='total_bill', y='tip', hue='day')
plt.show()
```
## Core Plotting Interfaces
### Function Interface (Traditional)
The function interface provides specialized plotting functions organized by visualization type. Each category has **axes-level** functions (plot to single axes) and **figure-level** functions (manage entire figure with faceting).
**When to use:**
- Quick exploratory analysis
- Single-purpose visualizations
- When you need a specific plot type
### Objects Interface (Modern)
The `seaborn.objects` interface provides a declarative, composable API similar to ggplot2. Build visualizations by chaining methods to specify data mappings, marks, transformations, and scales.
**When to use:**
- Complex layered visualizations
- When you need fine-grained control over transformations
- Building custom plot types
- Programmatic plot generation
```python
from seaborn import objects as so
# Declarative syntax
(
so.Plot(data=df, x='total_bill', y='tip')
.add(so.Dot(), color='day')
.add(so.Line(), so.PolyFit())
)
```
## Plotting Functions by Category
### Relational Plots (Relationships Between Variables)
**Use for:** Exploring how two or more variables relate to each other
- `scatterplot()` - Display individual observations as points
- `lineplot()` - Show trends and changes (automatically aggregates and computes CI)
- `relplot()` - Figure-level interface with automatic faceting
**Key parameters:**
- `x`, `y` - Primary variables
- `hue` - Color encoding for additional categorical/continuous variable
- `size` - Point/line size encoding
- `style` - Marker/line style encoding
- `col`, `row` - Facet into multiple subplots (figure-level only)
```python
# Scatter with multiple semantic mappings
sns.scatterplot(data=df, x='total_bill', y='tip',
hue='time', size='size', style='sex')
# Line plot with confidence intervals
sns.lineplot(data=timeseries, x='date', y='value', hue='category')
# Faceted relational plot
sns.relplot(data=df, x='total_bill', y='tip',
col='time', row='sex', hue='smoker', kind='scatter')
```
### Distribution Plots (Single and Bivariate Distributions)
**Use for:** Understanding data spread, shape, and probability density
- `histplot()` - Bar-based frequency distributions with flexible binning
- `kdeplot()` - Smooth density estimates using Gaussian kernels
- `ecdfplot()` - Empirical cumulative distribution (no parameters to tune)
- `rugplot()` - Individual observation tick marks
- `displot()` - Figure-level interface for univariate and bivariate distributions
- `jointplot()` - Bivariate plot with marginal distributions
- `pairplot()` - Matrix of pairwise relationships across dataset
**Key parameters:**
- `x`, `y` - Variables (y optional for univariate)
- `hue` - Separate distributions by category
- `stat` - Normalization: "count", "frequency", "probability", "density"
- `bins` / `binwidth` - Histogram binning control
- `bw_adjust` - KDE bandwidth multiplier (higher = smoother)
- `fill` - Fill area under curve
- `multiple` - How to handle hue: "layer", "stack", "dodge", "fill"
```python
# Histogram with density normalization
sns.histplot(data=df, x='total_bill', hue='time',
stat='density', multiple='stack')
# Bivariate KDE with contours
sns.kdeplot(data=df, x='total_bill', y='tip',
fill=True, levels=5, thresh=0.1)
# Joint plot with marginals
sns.jointplot(data=df, x='total_bill', y='tip',
kind='scatter', hue='time')
# Pairwise relationships
sns.pairplot(data=df, hue='species', corner=True)
```
### Categorical Plots (Comparisons Across Categories)
**Use for:** Comparing distributions or statistics across discrete categories
**Categorical scatterplots:**
- `stripplot()` - Points with jitter to show all observations
- `swarmplot()` - Non-overlapping points (beeswarm algorithm)
**Distribution comparisons:**
- `boxplot()` - Quartiles and outliers
- `violinplot()` - KDE + quartile information
- `boxenplot()` - Enhanced boxplot for larger datasets
**Statistical estimates:**
- `barplot()` - Mean/aggregate with confidence intervals
- `pointplot()` - Point estimates with connecting lines
- `countplot()` - Count of observations per category
**Figure-level:**
- `catplot()` - Faceted categorical plots (set `kind` parameter)
**Key parameters:**
- `x`, `y` - Variables (one typically categorical)
- `hue` - Additional categorical grouping
- `order`, `hue_order` - Control category ordering
- `dodge` - Separate hue levels side-by-side
- `orient` - "v" (vertical) or "h" (horizontal)
- `kind` - Plot type for catplot: "strip", "swarm", "box", "violin", "bar", "point"
```python
# Swarm plot showing all points
sns.swarmplot(data=df, x='day', y='total_bill', hue='sex')
# Violin plot with split for comparison
sns.violinplot(data=df, x='day', y='total_bill',
hue='sex', split=True)
# Bar plot with error bars
sns.barplot(data=df, x='day', y='total_bill',
hue='sex', estimator='mean', errorbar='ci')
# Faceted categorical plot
sns.catplot(data=df, x='day', y='total_bill',
col='time', kind='box')
```
### Regression Plots (Linear Relationships)
**Use for:** Visualizing linear regressions and residuals
- `regplot()` - Axes-level regression plot with scatter + fit line
- `lmplot()` - Figure-level with faceting support
- `residplot()` - Residual plot for assessing model fit
**Key parameters:**
- `x`, `y` - Variables to regress
- `order` - Polynomial regression order
- `logistic` - Fit logistic regression
- `robust` - Use robust regression (less sensitive to outliers)
- `ci` - Confidence interval width (default 95)
- `scatter_kws`, `line_kws` - Customize scatter and line properties
```python
# Simple linear regression
sns.regplot(data=df, x='total_bill', y='tip')
# Polynomial regression with faceting
sns.lmplot(data=df, x='total_bill', y='tip',
col='time', order=2, ci=95)
# Check residuals
sns.residplot(data=df, x='total_bill', y='tip')
```
### Matrix Plots (Rectangular Data)
**Use for:** Visualizing matrices, correlations, and grid-structured data
- `heatmap()` - Color-encoded matrix with annotations
- `clustermap()` - Hierarchically-clustered heatmap
**Key parameters:**
- `data` - 2D rectangular dataset (DataFrame or array)
- `annot` - Display values in cells
- `fmt` - Format string for annotations (e.g., ".2f")
- `cmap` - Colormap name
- `center` - Value at colormap center (for diverging colormaps)
- `vmin`, `vmax` - Color scale limits
- `square` - Force square cells
- `linewidths` - Gap between cells
```python
# Correlation heatmap
corr = df.corr()
sns.heatmap(corr, annot=True, fmt='.2f',
cmap='coolwarm', center=0, square=True)
# Clustered heatmap
sns.clustermap(data, cmap='viridis',
standard_scale=1, figsize=(10, 10))
```
## Multi-Plot Grids
Seaborn provides grid objects for creating complex multi-panel figures:
### FacetGrid
Create subplots based on categorical variables. Most useful when called through figure-level functions (`relplot`, `displot`, `catplot`), but can be used directly for custom plots.
```python
g = sns.FacetGrid(df, col='time', row='sex', hue='smoker')
g.map(sns.scatterplot, 'total_bill', 'tip')
g.add_legend()
```
### PairGrid
Show pairwise relationships between all variables in a dataset.
```python
g = sns.PairGrid(df, hue='species')
g.map_upper(sns.scatterplot)
g.map_lower(sns.kdeplot)
g.map_diag(sns.histplot)
g.add_legend()
```
### JointGrid
Combine bivariate plot with marginal distributions.
```python
g = sns.JointGrid(data=df, x='total_bill', y='tip')
g.plot_joint(sns.scatterplot)
g.plot_marginals(sns.histplot)
```
## Figure-Level vs Axes-Level Functions
Understanding this distinction is crucial for effective seaborn usage:
### Axes-Level Functions
- Plot to a single matplotlib `Axes` object
- Integrate easily into complex matplotlib figures
- Accept `ax=` parameter for precise placement
- Return `Axes` object
- Examples: `scatterplot`, `histplot`, `boxplot`, `regplot`, `heatmap`
**When to use:**
- Building custom multi-plot layouts
- Combining different plot types
- Need matplotlib-level control
- Integrating with existing matplotlib code
```python
fig, axes = plt.subplots(2, 2, figsize=(10, 10))
sns.scatterplot(data=df, x='x', y='y', ax=axes[0, 0])
sns.histplot(data=df, x='x', ax=axes[0, 1])
sns.boxplot(data=df, x='cat', y='y', ax=axes[1, 0])
sns.kdeplot(data=df, x='x', y='y', ax=axes[1, 1])
```
### Figure-Level Functions
- Manage entire figure including all subplots
- Built-in faceting via `col` and `row` parameters
- Return `FacetGrid`, `JointGrid`, or `PairGrid` objects
- Use `height` and `aspect` for sizing (per subplot)
- Cannot be placed in existing figure
- Examples: `relplot`, `displot`, `catplot`, `lmplot`, `jointplot`, `pairplot`
**When to use:**
- Faceted visualizations (small multiples)
- Quick exploratory analysis
- Consistent multi-panel layouts
- Don't need to combine with other plot types
```python
# Automatic faceting
sns.relplot(data=df, x='x', y='y', col='category', row='group',
hue='type', height=3, aspect=1.2)
```
## Data Structure Requirements
### Long-Form Data (Preferred)
Each variable is a column, each observation is a row. This "tidy" format provides maximum flexibility:
```python
# Long-form structure
subject condition measurement
0 1 control 10.5
1 1 treatment 12.3
2 2 control 9.8
3 2 treatment 13.1
```
**Advantages:**
- Works with all seaborn functions
- Easy to remap variables to visual properties
- Supports arbitrary complexity
- Natural for DataFrame operations
### Wide-Form Data
Variables are spread across columns. Useful for simple rectangular data:
```python
# Wide-form structure
control treatment
0 10.5 12.3
1 9.8 13.1
```
**Use cases:**
- Simple time series
- Correlation matrices
- Heatmaps
- Quick plots of array data
**Converting wide to long:**
```python
df_long = df.melt(var_name='condition', value_name='measurement')
```
## Color Palettes
Seaborn provides carefully designed color palettes for different data types:
### Qualitative Palettes (Categorical Data)
Distinguish categories through hue variation:
- `"deep"` - Default, vivid colors
- `"muted"` - Softer, less saturated
- `"pastel"` - Light, desaturated
- `"bright"` - Highly saturated
- `"dark"` - Dark values
- `"colorblind"` - Safe for color vision deficiency
```python
sns.set_palette("colorblind")
sns.color_palette("Set2")
```
### Sequential Palettes (Ordered Data)
Show progression from low to high values:
- `"rocket"`, `"mako"` - Wide luminance range (good for heatmaps)
- `"flare"`, `"crest"` - Restricted luminance (good for points/lines)
- `"viridis"`, `"magma"`, `"plasma"` - Matplotlib perceptually uniform
```python
sns.heatmap(data, cmap='rocket')
sns.kdeplot(data=df, x='x', y='y', cmap='mako', fill=True)
```
### Diverging Palettes (Centered Data)
Emphasize deviations from a midpoint:
- `"vlag"` - Blue to red
- `"icefire"` - Blue to orange
- `"coolwarm"` - Cool to warm
- `"Spectral"` - Rainbow diverging
```python
sns.heatmap(correlation_matrix, cmap='vlag', center=0)
```
### Custom Palettes
```python
# Create custom palette
custom = sns.color_palette("husl", 8)
# Light to dark gradient
palette = sns.light_palette("seagreen", as_cmap=True)
# Diverging palette from hues
palette = sns.diverging_palette(250, 10, as_cmap=True)
```
## Theming and Aesthetics
### Set Theme
`set_theme()` controls overall appearance:
```python
# Set complete theme
sns.set_theme(style='whitegrid', palette='pastel', font='sans-serif')
# Reset to defaults
sns.set_theme()
```
### Styles
Control background and grid appearance:
- `"darkgrid"` - Gray background with white grid (default)
- `"whitegrid"` - White background with gray grid
- `"dark"` - Gray background, no grid
- `"white"` - White background, no grid
- `"ticks"` - White background with axis ticks
```python
sns.set_style("whitegrid")
# Remove spines
sns.despine(left=False, bottom=False, offset=10, trim=True)
# Temporary style
with sns.axes_style("white"):
sns.scatterplot(data=df, x='x', y='y')
```
### Contexts
Scale elements for different use cases:
- `"paper"` - Smallest (default)
- `"notebook"` - Slightly larger
- `"talk"` - Presentation slides
- `"poster"` - Large format
```python
sns.set_context("talk", font_scale=1.2)
# Temporary context
with sns.plotting_context("poster"):
sns.barplot(data=df, x='category', y='value')
```
## Best Practices
### 1. Data Preparation
Always use well-structured DataFrames with meaningful column names:
```python
# Good: Named columns in DataFrame
df = pd.DataFrame({'bill': bills, 'tip': tips, 'day': days})
sns.scatterplot(data=df, x='bill', y='tip', hue='day')
# Avoid: Unnamed arrays
sns.scatterplot(x=x_array, y=y_array) # Loses axis labels
```
### 2. Choose the Right Plot Type
**Continuous x, continuous y:** `scatterplot`, `lineplot`, `kdeplot`, `regplot`
**Continuous x, categorical y:** `violinplot`, `boxplot`, `stripplot`, `swarmplot`
**One continuous variable:** `histplot`, `kdeplot`, `ecdfplot`
**Correlations/matrices:** `heatmap`, `clustermap`
**Pairwise relationships:** `pairplot`, `jointplot`
### 3. Use Figure-Level Functions for Faceting
```python
# Instead of manual subplot creation
sns.relplot(data=df, x='x', y='y', col='category', col_wrap=3)
# Not: Creating subplots manually for simple faceting
```
### 4. Leverage Semantic Mappings
Use `hue`, `size`, and `style` to encode additional dimensions:
```python
sns.scatterplot(data=df, x='x', y='y',
hue='category', # Color by category
size='importance', # Size by continuous variable
style='type') # Marker style by type
```
### 5. Control Statistical Estimation
Many functions compute statistics automatically. Understand and customize:
```python
# Lineplot computes mean and 95% CI by default
sns.lineplot(data=df, x='time', y='value',
errorbar='sd') # Use standard deviation instead
# Barplot computes mean by default
sns.barplot(data=df, x='category', y='value',
estimator='median', # Use median instead
errorbar=('ci', 95)) # Bootstrapped CI
```
### 6. Combine with Matplotlib
Seaborn integrates seamlessly with matplotlib for fine-tuning:
```python
ax = sns.scatterplot(data=df, x='x', y='y')
ax.set(xlabel='Custom X Label', ylabel='Custom Y Label',
title='Custom Title')
ax.axhline(y=0, color='r', linestyle='--')
plt.tight_layout()
```
### 7. Save High-Quality Figures
```python
fig = sns.relplot(data=df, x='x', y='y', col='group')
fig.savefig('figure.png', dpi=300, bbox_inches='tight')
fig.savefig('figure.pdf') # Vector format for publications
```
## Common Patterns
### Exploratory Data Analysis
```python
# Quick overview of all relationships
sns.pairplot(data=df, hue='target', corner=True)
# Distribution exploration
sns.displot(data=df, x='variable', hue='group',
kind='kde', fill=True, col='category')
# Correlation analysis
corr = df.corr()
sns.heatmap(corr, annot=True, cmap='coolwarm', center=0)
```
### Publication-Quality Figures
```python
sns.set_theme(style='ticks', context='paper', font_scale=1.1)
g = sns.catplot(data=df, x='treatment', y='response',
col='cell_line', kind='box', height=3, aspect=1.2)
g.set_axis_labels('Treatment Condition', 'Response (μM)')
g.set_titles('{col_name}')
sns.despine(trim=True)
g.savefig('figure.pdf', dpi=300, bbox_inches='tight')
```
### Complex Multi-Panel Figures
```python
# Using matplotlib subplots with seaborn
fig, axes = plt.subplots(2, 2, figsize=(12, 10))
sns.scatterplot(data=df, x='x1', y='y', hue='group', ax=axes[0, 0])
sns.histplot(data=df, x='x1', hue='group', ax=axes[0, 1])
sns.violinplot(data=df, x='group', y='y', ax=axes[1, 0])
sns.heatmap(df.pivot_table(values='y', index='x1', columns='x2'),
ax=axes[1, 1], cmap='viridis')
plt.tight_layout()
```
### Time Series with Confidence Bands
```python
# Lineplot automatically aggregates and shows CI
sns.lineplot(data=timeseries, x='date', y='measurement',
hue='sensor', style='location', errorbar='sd')
# For more control
g = sns.relplot(data=timeseries, x='date', y='measurement',
col='location', hue='sensor', kind='line',
height=4, aspect=1.5, errorbar=('ci', 95))
g.set_axis_labels('Date', 'Measurement (units)')
```
## Troubleshooting
### Issue: Legend Outside Plot Area
Figure-level functions place legends outside by default. To move inside:
```python
g = sns.relplot(data=df, x='x', y='y', hue='category')
g._legend.set_bbox_to_anchor((0.9, 0.5)) # Adjust position
```
### Issue: Overlapping Labels
```python
plt.xticks(rotation=45, ha='right')
plt.tight_layout()
```
### Issue: Figure Too Small
For figure-level functions:
```python
sns.relplot(data=df, x='x', y='y', height=6, aspect=1.5)
```
For axes-level functions:
```python
fig, ax = plt.subplots(figsize=(10, 6))
sns.scatterplot(data=df, x='x', y='y', ax=ax)
```
### Issue: Colors Not Distinct Enough
```python
# Use a different palette
sns.set_palette("bright")
# Or specify number of colors
palette = sns.color_palette("husl", n_colors=len(df['category'].unique()))
sns.scatterplot(data=df, x='x', y='y', hue='category', palette=palette)
```
### Issue: KDE Too Smooth or Jagged
```python
# Adjust bandwidth
sns.kdeplot(data=df, x='x', bw_adjust=0.5) # Less smooth
sns.kdeplot(data=df, x='x', bw_adjust=2) # More smooth
```
## Resources
This skill includes reference materials for deeper exploration:
### references/
- `function_reference.md` - Comprehensive listing of all seaborn functions with parameters and examples
- `objects_interface.md` - Detailed guide to the modern seaborn.objects API
- `examples.md` - Common use cases and code patterns for different analysis scenarios
Load reference files as needed for detailed function signatures, advanced parameters, or specific examples.
More from K-Dense-AI/scientific-agent-skills
- adaptyvHow to use the Adaptyv Bio Foundry API and Python SDK for protein experiment design, submission, and results retrieval. Use this skill whenever the user mentions Adaptyv, Foundry API, protein binding assays, protein screening experiments, BLI/SPR assays, thermostability assays, or wants to submit protein sequences for experimental characterization. Also trigger when code imports `adaptyv`, `adaptyv_sdk`, or `FoundryClient`, or references `foundry-api-public.adaptyvbio.com`.
- aeonThis skill should be used for time series machine learning tasks including classification, regression, clustering, forecasting, anomaly detection, segmentation, and similarity search. Use when working with temporal data, sequential patterns, or time-indexed observations requiring specialized algorithms beyond standard ML approaches. Particularly suited for univariate and multivariate time series analysis with scikit-learn compatible APIs.
- anndataData structure for annotated matrices in single-cell analysis. Use when working with .h5ad files or integrating with the scverse ecosystem. This is the data format skill—for analysis workflows use scanpy; for probabilistic models use scvi-tools; for population-scale queries use cellxgene-census.
- arboretoInfer gene regulatory networks (GRNs) from gene expression data using scalable algorithms (GRNBoost2, GENIE3). Use when analyzing transcriptomics data (bulk RNA-seq, single-cell RNA-seq) to identify transcription factor-target gene relationships and regulatory interactions. Supports distributed computation for large-scale datasets.
- astropyComprehensive Python library for astronomy and astrophysics. This skill should be used when working with astronomical data including celestial coordinates, physical units, FITS files, cosmological calculations, time systems, tables, world coordinate systems (WCS), and astronomical data analysis. Use when tasks involve coordinate transformations, unit conversions, FITS file manipulation, cosmological distance calculations, time scale conversions, or astronomical data processing.
- autoskillObserve the user's screen via screenpipe, detect repeated research workflows, match them against existing scientific-agent-skills, and draft new skills (or composition recipes that chain existing ones) for the patterns not yet covered. Use when the user asks to analyze their recent work and propose skills based on what they actually do. Requires the screenpipe daemon (https://github.com/screenpipe/screenpipe) running locally on port 3030 — the skill has no other data source and will refuse to run if screenpipe is unreachable. All detection runs locally; only redacted cluster summaries reach the LLM.
- benchling-integrationBenchling R&D platform integration. Access registry (DNA, proteins), inventory, ELN entries, workflows via API, build Benchling Apps, query Data Warehouse, for lab data management automation.
- bgpt-paper-searchSearch scientific papers and retrieve structured experimental data extracted from full-text studies via the BGPT MCP server. Returns 25+ fields per paper including methods, results, sample sizes, quality scores, and conclusions. Use for literature reviews, evidence synthesis, and finding experimental details not available in abstracts alone.
- biopythonComprehensive molecular biology toolkit. Use for sequence manipulation, file parsing (FASTA/GenBank/PDB), phylogenetics, and programmatic NCBI/PubMed access (Bio.Entrez). Best for batch processing, custom bioinformatics pipelines, BLAST automation. For quick lookups use gget; for multi-service integration use bioservices.
- bioservicesUnified Python interface to 40+ bioinformatics services. Use when querying multiple databases (UniProt, KEGG, ChEMBL, Reactome) in a single workflow with consistent API. Best for cross-database analysis, ID mapping across services. For quick single-database lookups use gget; for sequence/file manipulation use biopython.