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Data Visualization Skill

Chart selection guidance, Python visualization code patterns, design principles, and accessibility considerations for creating effective data visualizations.

Chart Selection Guide

Choose by Data Relationship

What You're ShowingBest ChartAlternatives
Trend over timeLine chartArea chart (if showing cumulative or composition)
Comparison across categoriesVertical bar chartHorizontal bar (many categories), lollipop chart
RankingHorizontal bar chartDot plot, slope chart (comparing two periods)
Part-to-whole compositionStacked bar chartTreemap (hierarchical), waffle chart
Composition over timeStacked area chart100% stacked bar (for proportion focus)
DistributionHistogramBox plot (comparing groups), violin plot, strip plot
Correlation (2 variables)Scatter plotBubble chart (add 3rd variable as size)
Correlation (many variables)Heatmap (correlation matrix)Pair plot
Geographic patternsChoropleth mapBubble map, hex map
Flow / processSankey diagramFunnel chart (sequential stages)
Relationship networkNetwork graphChord diagram
Performance vs. targetBullet chartGauge (single KPI only)
Multiple KPIs at onceSmall multiplesDashboard with separate charts

When NOT to Use Certain Charts

  • Pie charts: Avoid unless <6 categories and exact proportions matter less than rough comparison. Humans are bad at comparing angles. Use bar charts instead.
  • 3D charts: Never. They distort perception and add no information.
  • Dual-axis charts: Use cautiously. They can mislead by implying correlation. Clearly label both axes if used.
  • Stacked bar (many categories): Hard to compare middle segments. Use small multiples or grouped bars instead.
  • Donut charts: Slightly better than pie charts but same fundamental issues. Use for single KPI display at most.

Python Visualization Code Patterns

Setup and Style

import matplotlib.pyplot as plt
import matplotlib.ticker as mticker
import seaborn as sns
import pandas as pd
import numpy as np

# Professional style setup
plt.style.use('seaborn-v0_8-whitegrid')
plt.rcParams.update({
    'figure.figsize': (10, 6),
    'figure.dpi': 150,
    'font.size': 11,
    'axes.titlesize': 14,
    'axes.titleweight': 'bold',
    'axes.labelsize': 11,
    'xtick.labelsize': 10,
    'ytick.labelsize': 10,
    'legend.fontsize': 10,
    'figure.titlesize': 16,
})

# Colorblind-friendly palettes
PALETTE_CATEGORICAL = ['#4C72B0', '#DD8452', '#55A868', '#C44E52', '#8172B3', '#937860']
PALETTE_SEQUENTIAL = 'YlOrRd'
PALETTE_DIVERGING = 'RdBu_r'

Line Chart (Time Series)

fig, ax = plt.subplots(figsize=(10, 6))

for label, group in df.groupby('category'):
    ax.plot(group['date'], group['value'], label=label, linewidth=2)

ax.set_title('Metric Trend by Category', fontweight='bold')
ax.set_xlabel('Date')
ax.set_ylabel('Value')
ax.legend(loc='upper left', frameon=True)
ax.spines['top'].set_visible(False)
ax.spines['right'].set_visible(False)

# Format dates on x-axis
fig.autofmt_xdate()

plt.tight_layout()
plt.savefig('trend_chart.png', dpi=150, bbox_inches='tight')

Bar Chart (Comparison)

fig, ax = plt.subplots(figsize=(10, 6))

# Sort by value for easy reading
df_sorted = df.sort_values('metric', ascending=True)

bars = ax.barh(df_sorted['category'], df_sorted['metric'], color=PALETTE_CATEGORICAL[0])

# Add value labels
for bar in bars:
    width = bar.get_width()
    ax.text(width + 0.5, bar.get_y() + bar.get_height()/2,
            f'{width:,.0f}', ha='left', va='center', fontsize=10)

ax.set_title('Metric by Category (Ranked)', fontweight='bold')
ax.set_xlabel('Metric Value')
ax.spines['top'].set_visible(False)
ax.spines['right'].set_visible(False)

plt.tight_layout()
plt.savefig('bar_chart.png', dpi=150, bbox_inches='tight')

Histogram (Distribution)

fig, ax = plt.subplots(figsize=(10, 6))

ax.hist(df['value'], bins=30, color=PALETTE_CATEGORICAL[0], edgecolor='white', alpha=0.8)

# Add mean and median lines
mean_val = df['value'].mean()
median_val = df['value'].median()
ax.axvline(mean_val, color='red', linestyle='--', linewidth=1.5, label=f'Mean: {mean_val:,.1f}')
ax.axvline(median_val, color='green', linestyle='--', linewidth=1.5, label=f'Median: {median_val:,.1f}')

ax.set_title('Distribution of Values', fontweight='bold')
ax.set_xlabel('Value')
ax.set_ylabel('Frequency')
ax.legend()
ax.spines['top'].set_visible(False)
ax.spines['right'].set_visible(False)

plt.tight_layout()
plt.savefig('histogram.png', dpi=150, bbox_inches='tight')

Heatmap

fig, ax = plt.subplots(figsize=(10, 8))

# Pivot data for heatmap format
pivot = df.pivot_table(index='row_dim', columns='col_dim', values='metric', aggfunc='sum')

sns.heatmap(pivot, annot=True, fmt=',.0f', cmap='YlOrRd',
            linewidths=0.5, ax=ax, cbar_kws={'label': 'Metric Value'})

ax.set_title('Metric by Row Dimension and Column Dimension', fontweight='bold')
ax.set_xlabel('Column Dimension')
ax.set_ylabel('Row Dimension')

plt.tight_layout()
plt.savefig('heatmap.png', dpi=150, bbox_inches='tight')

Small Multiples

categories = df['category'].unique()
n_cats = len(categories)
n_cols = min(3, n_cats)
n_rows = (n_cats + n_cols - 1) // n_cols

fig, axes = plt.subplots(n_rows, n_cols, figsize=(5*n_cols, 4*n_rows), sharex=True, sharey=True)
axes = axes.flatten() if n_cats > 1 else [axes]

for i, cat in enumerate(categories):
    ax = axes[i]
    subset = df[df['category'] == cat]
    ax.plot(subset['date'], subset['value'], color=PALETTE_CATEGORICAL[i % len(PALETTE_CATEGORICAL)])
    ax.set_title(cat, fontsize=12)
    ax.spines['top'].set_visible(False)
    ax.spines['right'].set_visible(False)

# Hide empty subplots
for j in range(i+1, len(axes)):
    axes[j].set_visible(False)

fig.suptitle('Trends by Category', fontsize=14, fontweight='bold', y=1.02)
plt.tight_layout()
plt.savefig('small_multiples.png', dpi=150, bbox_inches='tight')

Number Formatting Helpers

def format_number(val, format_type='number'):
    """Format numbers for chart labels."""
    if format_type == 'currency':
        if abs(val) >= 1e9:
            return f'${val/1e9:.1f}B'
        elif abs(val) >= 1e6:
            return f'${val/1e6:.1f}M'
        elif abs(val) >= 1e3:
            return f'${val/1e3:.1f}K'
        else:
            return f'${val:,.0f}'
    elif format_type == 'percent':
        return f'{val:.1f}%'
    elif format_type == 'number':
        if abs(val) >= 1e9:
            return f'{val/1e9:.1f}B'
        elif abs(val) >= 1e6:
            return f'{val/1e6:.1f}M'
        elif abs(val) >= 1e3:
            return f'{val/1e3:.1f}K'
        else:
            return f'{val:,.0f}'
    return str(val)

# Usage with axis formatter
ax.yaxis.set_major_formatter(mticker.FuncFormatter(lambda x, p: format_number(x, 'currency')))

Interactive Charts with Plotly

import plotly.express as px
import plotly.graph_objects as go

# Simple interactive line chart
fig = px.line(df, x='date', y='value', color='category',
              title='Interactive Metric Trend',
              labels={'value': 'Metric Value', 'date': 'Date'})
fig.update_layout(hovermode='x unified')
fig.write_html('interactive_chart.html')
fig.show()

# Interactive scatter with hover data
fig = px.scatter(df, x='metric_a', y='metric_b', color='category',
                 size='size_metric', hover_data=['name', 'detail_field'],
                 title='Correlation Analysis')
fig.show()

Design Principles

Color

  • Use color purposefully: Color should encode data, not decorate
  • Highlight the story: Use a bright accent color for the key insight; grey everything else
  • Sequential data: Use a single-hue gradient (light to dark) for ordered values
  • Diverging data: Use a two-hue gradient with neutral midpoint for data with a meaningful center
  • Categorical data: Use distinct hues, maximum 6-8 before it gets confusing
  • Avoid red/green only: 8% of men are red-green colorblind. Use blue/orange as primary pair

Typography

  • Title states the insight: "Revenue grew 23% YoY" beats "Revenue by Month"
  • Subtitle adds context: Date range, filters applied, data source
  • Axis labels are readable: Never rotated 90 degrees if avoidable. Shorten or wrap instead
  • Data labels add precision: Use on key points, not every single bar
  • Annotation highlights: Call out specific points with text annotations

Layout

  • Reduce chart junk: Remove gridlines, borders, backgrounds that don't carry information
  • Sort meaningfully: Categories sorted by value (not alphabetically) unless there's a natural order (months, stages)
  • Appropriate aspect ratio: Time series wider than tall (3:1 to 2:1); comparisons can be squarer
  • White space is good: Don't cram charts together. Give each visualization room to breathe

Accuracy

  • Bar charts start at zero: Always. A bar from 95 to 100 exaggerates a 5% difference
  • Line charts can have non-zero baselines: When the range of variation is meaningful
  • Consistent scales across panels: When comparing multiple charts, use the same axis range
  • Show uncertainty: Error bars, confidence intervals, or ranges when data is uncertain
  • Label your axes: Never make the reader guess what the numbers mean

Accessibility Considerations

Color Blindness

  • Never rely on color alone to distinguish data series
  • Add pattern fills, different line styles (solid, dashed, dotted), or direct labels
  • Test with a colorblind simulator (e.g., Coblis, Sim Daltonism)
  • Use the colorblind-friendly palette: sns.color_palette("colorblind")

Screen Readers

  • Include alt text describing the chart's key finding
  • Provide a data table alternative alongside the visualization
  • Use semantic titles and labels

General Accessibility

  • Sufficient contrast between data elements and background
  • Text size minimum 10pt for labels, 12pt for titles
  • Avoid conveying information only through spatial position (add labels)
  • Consider printing: does the chart work in black and white?

Accessibility Checklist

Before sharing a visualization:

  • Chart works without color (patterns, labels, or line styles differentiate series)
  • Text is readable at standard zoom level
  • Title describes the insight, not just the data
  • Axes are labeled with units
  • Legend is clear and positioned without obscuring data
  • Data source and date range are noted

Source

git clone https://github.com/anthropics/knowledge-work-plugins/blob/main/data/skills/data-visualization/SKILL.mdView on GitHub

Overview

Data-visualization helps you craft effective Python visuals using matplotlib, seaborn, and plotly. It guides chart selection based on data relationships, styling for publication-quality figures, and applying accessibility and color theory principles.

How This Skill Works

The skill maps data relationships to chart types via a Chart Selection Guide and provides Python code patterns for setup, styling, and common charts (line, bar, histogram, scatter, heatmap). It emphasizes consistent styling and accessible palettes to produce publication-ready visuals.

When to Use It

  • Trend over time (line chart)
  • Comparison across categories (vertical bar chart)
  • Part-to-whole composition (stacked bar chart)
  • Distribution (histogram)
  • Correlation (2 variables) (scatter plot)

Quick Start

  1. Step 1: Import libraries (matplotlib, seaborn, pandas, numpy) and load data.
  2. Step 2: Apply professional styling and color palettes as shown.
  3. Step 3: Create the chart (line/bar/hist/etc), customize, and save the figure.

Best Practices

  • Choose chart type by data relationship using the Chart Selection Guide.
  • Use colorblind-friendly palettes and consistent styling.
  • Label axes, include units, and provide clear titles and legends.
  • Avoid misleading visuals: skip 3D charts and dubious dual-axis setups.
  • Ensure accessibility: readable fonts, sufficient contrast, and alt text where possible.

Example Use Cases

  • Line chart showing metric trend by category over time.
  • Vertical bar chart comparing category sales in a single period.
  • Histogram of test scores with overlaid KDE for distribution shape.
  • Scatter plot illustrating correlation between temperature and energy use.
  • Correlation heatmap across multiple features to spot relationships.

Frequently Asked Questions

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