data-viz-plots
Create publication-quality plots and visualizations using matplotlib and seaborn. Works with ANY LLM provider (GPT, Gemini, Claude, etc.).
Best use case
data-viz-plots is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Create publication-quality plots and visualizations using matplotlib and seaborn. Works with ANY LLM provider (GPT, Gemini, Claude, etc.).
Teams using data-viz-plots should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/data-viz-plots/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How data-viz-plots Compares
| Feature / Agent | data-viz-plots | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Create publication-quality plots and visualizations using matplotlib and seaborn. Works with ANY LLM provider (GPT, Gemini, Claude, etc.).
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Data Visualization (Universal)
## Overview
This skill enables you to create professional scientific visualizations including scatter plots, line charts, heatmaps, violin plots, and more. Unlike cloud-hosted solutions, this skill uses the **matplotlib** and **seaborn** Python libraries and executes **locally** in your environment, making it compatible with **ALL LLM providers** including GPT, Gemini, Claude, DeepSeek, and Qwen.
## When to Use This Skill
- Create publication-quality figures for papers and presentations
- Generate exploratory data analysis (EDA) plots
- Visualize gene expression, QC metrics, or clustering results
- Create multi-panel figures combining different plot types
- Export high-resolution images for reports
- Customize plot aesthetics (colors, fonts, styles)
## How to Use
### Step 1: Import Required Libraries
```python
import matplotlib.pyplot as plt
import seaborn as sns
import pandas as pd
import numpy as np
from matplotlib import gridspec
import matplotlib.patches as mpatches
# Set style for publication-quality plots
sns.set_style("whitegrid")
plt.rcParams['figure.dpi'] = 150
plt.rcParams['savefig.dpi'] = 300
plt.rcParams['font.size'] = 10
```
### Step 2: Basic Scatter Plot
```python
# Create figure and axis
fig, ax = plt.subplots(figsize=(6, 5))
# Scatter plot
ax.scatter(x_data, y_data, s=20, alpha=0.6, c='steelblue', edgecolors='k', linewidths=0.5)
# Labels and title
ax.set_xlabel('Gene Expression (log2)', fontsize=12)
ax.set_ylabel('Cell Count', fontsize=12)
ax.set_title('Expression vs. Cell Count', fontsize=14, fontweight='bold')
# Grid and styling
ax.grid(alpha=0.3)
ax.spines['top'].set_visible(False)
ax.spines['right'].set_visible(False)
# Save figure
plt.tight_layout()
plt.savefig('scatter_plot.png', dpi=300, bbox_inches='tight')
plt.show()
print("✅ Scatter plot saved to: scatter_plot.png")
```
### Step 3: Line Plot with Multiple Series
```python
fig, ax = plt.subplots(figsize=(8, 5))
# Plot multiple lines
ax.plot(time_points, group1_values, marker='o', label='Group 1', color='#E74C3C', linewidth=2)
ax.plot(time_points, group2_values, marker='s', label='Group 2', color='#3498DB', linewidth=2)
ax.plot(time_points, group3_values, marker='^', label='Group 3', color='#2ECC71', linewidth=2)
# Styling
ax.set_xlabel('Time Point', fontsize=12)
ax.set_ylabel('Expression Level', fontsize=12)
ax.set_title('Gene Expression Over Time', fontsize=14, fontweight='bold')
ax.legend(frameon=True, loc='best', fontsize=10)
ax.grid(alpha=0.3, linestyle='--')
plt.tight_layout()
plt.savefig('line_plot.png', dpi=300, bbox_inches='tight')
plt.show()
```
### Step 4: Box Plot and Violin Plot
```python
# Prepare data (long-form DataFrame)
# df should have columns: 'cluster', 'expression', 'gene', etc.
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(12, 5))
# Box plot
sns.boxplot(data=df, x='cluster', y='expression', palette='Set2', ax=ax1)
ax1.set_title('Box Plot: Expression by Cluster', fontsize=12, fontweight='bold')
ax1.set_xlabel('Cluster', fontsize=11)
ax1.set_ylabel('Expression Level', fontsize=11)
ax1.tick_params(axis='x', rotation=45)
# Violin plot
sns.violinplot(data=df, x='cluster', y='expression', palette='muted', ax=ax2, inner='quartile')
ax2.set_title('Violin Plot: Expression Distribution', fontsize=12, fontweight='bold')
ax2.set_xlabel('Cluster', fontsize=11)
ax2.set_ylabel('Expression Level', fontsize=11)
ax2.tick_params(axis='x', rotation=45)
plt.tight_layout()
plt.savefig('box_violin_plot.png', dpi=300, bbox_inches='tight')
plt.show()
```
### Step 5: Heatmap
```python
# Prepare data matrix (rows=genes, columns=samples or clusters)
# gene_expression_matrix: pandas DataFrame or numpy array
fig, ax = plt.subplots(figsize=(8, 6))
# Create heatmap
sns.heatmap(
gene_expression_matrix,
cmap='viridis',
cbar_kws={'label': 'Expression'},
xticklabels=True,
yticklabels=True,
linewidths=0.5,
linecolor='gray',
ax=ax
)
ax.set_title('Gene Expression Heatmap', fontsize=14, fontweight='bold')
ax.set_xlabel('Samples', fontsize=12)
ax.set_ylabel('Genes', fontsize=12)
plt.tight_layout()
plt.savefig('heatmap.png', dpi=300, bbox_inches='tight')
plt.show()
```
### Step 6: Bar Plot with Error Bars
```python
fig, ax = plt.subplots(figsize=(7, 5))
# Data
categories = ['Cluster 0', 'Cluster 1', 'Cluster 2', 'Cluster 3']
means = [120, 85, 200, 150]
errors = [15, 10, 25, 20]
# Bar plot
bars = ax.bar(categories, means, yerr=errors, capsize=5,
color=['#E74C3C', '#3498DB', '#2ECC71', '#F39C12'],
edgecolor='black', linewidth=1.2, alpha=0.8)
# Labels
ax.set_ylabel('Cell Count', fontsize=12)
ax.set_title('Cell Counts by Cluster', fontsize=14, fontweight='bold')
ax.set_ylim(0, max(means) * 1.3)
# Add value labels on bars
for bar, mean in zip(bars, means):
height = bar.get_height()
ax.text(bar.get_x() + bar.get_width()/2., height + 5,
f'{mean}', ha='center', va='bottom', fontsize=10)
plt.tight_layout()
plt.savefig('bar_plot.png', dpi=300, bbox_inches='tight')
plt.show()
```
## Advanced Features
### Multi-Panel Figure
```python
# Create complex layout
fig = plt.figure(figsize=(12, 8))
gs = gridspec.GridSpec(2, 3, figure=fig, hspace=0.3, wspace=0.3)
# Panel A: Scatter
ax1 = fig.add_subplot(gs[0, :2])
ax1.scatter(x_data, y_data, c=cluster_labels, cmap='tab10', s=10, alpha=0.6)
ax1.set_title('A. UMAP Projection', fontsize=12, fontweight='bold', loc='left')
ax1.set_xlabel('UMAP1')
ax1.set_ylabel('UMAP2')
# Panel B: Violin
ax2 = fig.add_subplot(gs[0, 2])
sns.violinplot(data=df, y='expression', palette='Set2', ax=ax2)
ax2.set_title('B. Expression', fontsize=12, fontweight='bold', loc='left')
# Panel C: Heatmap
ax3 = fig.add_subplot(gs[1, :])
sns.heatmap(matrix, cmap='coolwarm', center=0, ax=ax3, cbar_kws={'label': 'Z-score'})
ax3.set_title('C. Gene Expression Heatmap', fontsize=12, fontweight='bold', loc='left')
plt.savefig('multi_panel_figure.png', dpi=300, bbox_inches='tight')
plt.show()
```
### Custom Color Palette
```python
# Define custom colors
custom_palette = ['#E74C3C', '#3498DB', '#2ECC71', '#F39C12', '#9B59B6']
# Use in seaborn
sns.set_palette(custom_palette)
# Or create color dict for specific mapping
color_dict = {
'T cells': '#E74C3C',
'B cells': '#3498DB',
'Monocytes': '#2ECC71',
'NK cells': '#F39C12'
}
# Use in scatter plot
for cell_type, color in color_dict.items():
mask = df['celltype'] == cell_type
ax.scatter(df.loc[mask, 'x'], df.loc[mask, 'y'],
c=color, label=cell_type, s=20, alpha=0.7)
ax.legend()
```
### Density Plot
```python
from scipy.stats import gaussian_kde
fig, ax = plt.subplots(figsize=(8, 6))
# Calculate density
xy = np.vstack([x_data, y_data])
z = gaussian_kde(xy)(xy)
# Sort points by density for better visualization
idx = z.argsort()
x, y, z = x_data[idx], y_data[idx], z[idx]
# Scatter with density colors
scatter = ax.scatter(x, y, c=z, s=20, cmap='viridis', alpha=0.6, edgecolors='none')
plt.colorbar(scatter, ax=ax, label='Density')
ax.set_xlabel('UMAP1', fontsize=12)
ax.set_ylabel('UMAP2', fontsize=12)
ax.set_title('Density Scatter Plot', fontsize=14, fontweight='bold')
plt.tight_layout()
plt.savefig('density_plot.png', dpi=300, bbox_inches='tight')
plt.show()
```
## Common Use Cases
### QC Metrics Visualization
```python
# Assuming adata.obs has QC columns: n_genes, n_counts, percent_mito
fig, axes = plt.subplots(1, 3, figsize=(15, 4))
# Plot 1: Histogram of genes per cell
axes[0].hist(adata.obs['n_genes'], bins=50, color='steelblue', edgecolor='black', alpha=0.7)
axes[0].axvline(adata.obs['n_genes'].median(), color='red', linestyle='--', label='Median')
axes[0].set_xlabel('Genes per Cell', fontsize=11)
axes[0].set_ylabel('Frequency', fontsize=11)
axes[0].set_title('Genes per Cell Distribution', fontsize=12, fontweight='bold')
axes[0].legend()
# Plot 2: Scatter UMI vs Genes
axes[1].scatter(adata.obs['n_counts'], adata.obs['n_genes'],
s=5, alpha=0.5, c='coral')
axes[1].set_xlabel('UMI Counts', fontsize=11)
axes[1].set_ylabel('Genes Detected', fontsize=11)
axes[1].set_title('UMIs vs Genes', fontsize=12, fontweight='bold')
# Plot 3: Violin plot of mitochondrial percentage
sns.violinplot(y=adata.obs['percent_mito'], ax=axes[2], color='lightgreen')
axes[2].axhline(y=20, color='red', linestyle='--', label='20% threshold')
axes[2].set_ylabel('Mitochondrial %', fontsize=11)
axes[2].set_title('Mitochondrial Content', fontsize=12, fontweight='bold')
axes[2].legend()
plt.tight_layout()
plt.savefig('qc_metrics.png', dpi=300, bbox_inches='tight')
plt.show()
```
### UMAP/tSNE Visualization
```python
# Assuming adata.obsm['X_umap'] exists and adata.obs['clusters'] exists
fig, ax = plt.subplots(figsize=(8, 7))
# Get unique clusters
clusters = adata.obs['clusters'].unique()
n_clusters = len(clusters)
# Generate colors
colors = plt.cm.tab20(np.linspace(0, 1, n_clusters))
# Plot each cluster
for i, cluster in enumerate(clusters):
mask = adata.obs['clusters'] == cluster
ax.scatter(
adata.obsm['X_umap'][mask, 0],
adata.obsm['X_umap'][mask, 1],
c=[colors[i]],
label=f'Cluster {cluster}',
s=10,
alpha=0.7,
edgecolors='none'
)
ax.set_xlabel('UMAP1', fontsize=12)
ax.set_ylabel('UMAP2', fontsize=12)
ax.set_title('UMAP Projection by Cluster', fontsize=14, fontweight='bold')
ax.legend(bbox_to_anchor=(1.05, 1), loc='upper left', frameon=True, fontsize=9)
plt.tight_layout()
plt.savefig('umap_clusters.png', dpi=300, bbox_inches='tight')
plt.show()
```
### Gene Expression Dot Plot
```python
# genes: list of gene names
# clusters: list of cluster IDs
# Create matrix: rows=genes, columns=clusters with mean expression and % expressing
fig, ax = plt.subplots(figsize=(10, 6))
# Prepare data
from matplotlib.colors import Normalize
# dot_size_matrix: % cells expressing (0-100)
# color_matrix: mean expression level
for i, gene in enumerate(genes):
for j, cluster in enumerate(clusters):
# Size proportional to % expressing
size = dot_size_matrix[i, j] * 5 # Scale factor
# Color by expression level
color_val = color_matrix[i, j]
ax.scatter(j, i, s=size, c=[color_val], cmap='Reds',
vmin=0, vmax=color_matrix.max(),
edgecolors='black', linewidths=0.5)
# Labels
ax.set_xticks(range(len(clusters)))
ax.set_xticklabels(clusters, rotation=45, ha='right')
ax.set_yticks(range(len(genes)))
ax.set_yticklabels(genes)
ax.set_xlabel('Cluster', fontsize=12)
ax.set_ylabel('Gene', fontsize=12)
ax.set_title('Marker Gene Expression', fontsize=14, fontweight='bold')
# Colorbar
norm = Normalize(vmin=0, vmax=color_matrix.max())
sm = plt.cm.ScalarMappable(cmap='Reds', norm=norm)
sm.set_array([])
cbar = plt.colorbar(sm, ax=ax, pad=0.02)
cbar.set_label('Mean Expression', rotation=270, labelpad=15)
plt.tight_layout()
plt.savefig('gene_dotplot.png', dpi=300, bbox_inches='tight')
plt.show()
```
### Volcano Plot (DEG Analysis)
```python
# Assuming deg_df has columns: gene, log2FC, pvalue
fig, ax = plt.subplots(figsize=(8, 7))
# Calculate -log10(pvalue)
deg_df['-log10_pvalue'] = -np.log10(deg_df['pvalue'])
# Classify genes
deg_df['significant'] = 'Not Significant'
deg_df.loc[(deg_df['log2FC'] > 1) & (deg_df['pvalue'] < 0.05), 'significant'] = 'Up-regulated'
deg_df.loc[(deg_df['log2FC'] < -1) & (deg_df['pvalue'] < 0.05), 'significant'] = 'Down-regulated'
# Plot
for category, color in zip(['Not Significant', 'Up-regulated', 'Down-regulated'],
['gray', 'red', 'blue']):
mask = deg_df['significant'] == category
ax.scatter(deg_df.loc[mask, 'log2FC'],
deg_df.loc[mask, '-log10_pvalue'],
c=color, label=category, s=20, alpha=0.6, edgecolors='none')
# Threshold lines
ax.axvline(x=1, color='black', linestyle='--', linewidth=1, alpha=0.5)
ax.axvline(x=-1, color='black', linestyle='--', linewidth=1, alpha=0.5)
ax.axhline(y=-np.log10(0.05), color='black', linestyle='--', linewidth=1, alpha=0.5)
# Labels
ax.set_xlabel('log2 Fold Change', fontsize=12)
ax.set_ylabel('-log10(p-value)', fontsize=12)
ax.set_title('Volcano Plot: Differential Expression', fontsize=14, fontweight='bold')
ax.legend(frameon=True, loc='upper right')
plt.tight_layout()
plt.savefig('volcano_plot.png', dpi=300, bbox_inches='tight')
plt.show()
```
## Best Practices
1. **Figure Size**: Use appropriate dimensions for target medium (papers: 6-8 inches wide, posters: larger)
2. **DPI**: Save at 300 DPI for publications, 150 DPI for presentations
3. **Colors**: Use colorblind-friendly palettes (e.g., `viridis`, `Set2`, `tab10`)
4. **Fonts**: Keep font sizes readable (titles: 12-14pt, labels: 10-12pt, ticks: 8-10pt)
5. **Transparency**: Use alpha for overlapping points to show density
6. **Layout**: Always call `plt.tight_layout()` before saving to prevent label clipping
7. **File Format**: PNG for general use, SVG for vector graphics (editable in Illustrator)
8. **Close Figures**: Call `plt.close()` after saving to free memory when generating many plots
## Troubleshooting
### Issue: "Figure too cluttered with many points"
**Solution**: Use transparency and smaller point sizes
```python
ax.scatter(x, y, s=5, alpha=0.3, edgecolors='none')
```
### Issue: "Legend overlaps with data"
**Solution**: Place legend outside the plot area
```python
ax.legend(bbox_to_anchor=(1.05, 1), loc='upper left')
```
### Issue: "Labels are cut off in saved figure"
**Solution**: Use `bbox_inches='tight'`
```python
plt.savefig('plot.png', dpi=300, bbox_inches='tight')
```
### Issue: "Colors don't match between plots"
**Solution**: Define color palette once and reuse
```python
PALETTE = {'Group A': '#E74C3C', 'Group B': '#3498DB'}
# Use PALETTE in all plots
```
### Issue: "Heatmap text too small"
**Solution**: Adjust figure size or font size
```python
fig, ax = plt.subplots(figsize=(12, 10))
sns.heatmap(data, ax=ax, annot_kws={'fontsize': 8})
```
## Technical Notes
- **Libraries**: Uses `matplotlib` and `seaborn` (widely supported, stable)
- **Execution**: Runs locally in the agent's sandbox
- **Compatibility**: Works with ALL LLM providers (GPT, Gemini, Claude, DeepSeek, Qwen, etc.)
- **File Formats**: Supports PNG, PDF, SVG, JPEG
- **Performance**: Typical plot generation takes <1 second for standard plots, 2-5 seconds for complex multi-panel figures
- **Memory**: Keep figure count reasonable; close figures after saving if generating many plots
## References
- Matplotlib documentation: https://matplotlib.org/stable/contents.html
- Seaborn documentation: https://seaborn.pydata.org/
- Matplotlib gallery: https://matplotlib.org/stable/gallery/index.html
- Seaborn gallery: https://seaborn.pydata.org/examples/index.htmlRelated Skills
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