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Mapbox Data Visualization Patterns

by Mapbox · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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/install mapbox-data-visualization-patterns
Description
Patterns for visualizing data on maps including choropleth maps, heat maps, 3D visualizations, data-driven styling, and animated data. Covers layer types, co...
README (SKILL.md)

Data Visualization Patterns Skill

Comprehensive patterns for visualizing data on Mapbox maps. Covers choropleth maps, heat maps, 3D extrusions, data-driven styling, animated visualizations, and performance optimization for data-heavy applications.

When to Use This Skill

Use this skill when:

  • Visualizing statistical data on maps (population, sales, demographics)
  • Creating choropleth maps with color-coded regions
  • Building heat maps or clustering for density visualization
  • Adding 3D visualizations (building heights, terrain elevation)
  • Implementing data-driven styling based on properties
  • Animating time-series data
  • Working with large datasets that require optimization

Visualization Types

Choropleth Maps

Best for: Regional data (states, counties, zip codes), statistical comparisons

Pattern: Color-code polygons based on data values

map.on('load', () => {
  // Add data source (GeoJSON with properties)
  map.addSource('states', {
    type: 'geojson',
    data: 'https://example.com/states.geojson' // Features with population property
  });

  // Add fill layer with data-driven color
  map.addLayer({
    id: 'states-layer',
    type: 'fill',
    source: 'states',
    paint: {
      'fill-color': [
        'interpolate',
        ['linear'],
        ['get', 'population'],
        0,
        '#f0f9ff', // Light blue for low population
        500000,
        '#7fcdff',
        1000000,
        '#0080ff',
        5000000,
        '#0040bf', // Dark blue for high population
        10000000,
        '#001f5c'
      ],
      'fill-opacity': 0.75
    }
  });

  // Add border layer
  map.addLayer({
    id: 'states-border',
    type: 'line',
    source: 'states',
    paint: {
      'line-color': '#ffffff',
      'line-width': 1
    }
  });

  // Add hover effect with reusable popup
  const popup = new mapboxgl.Popup({
    closeButton: false,
    closeOnClick: false
  });

  map.on('mousemove', 'states-layer', (e) => {
    if (e.features.length > 0) {
      map.getCanvas().style.cursor = 'pointer';

      const feature = e.features[0];
      popup
        .setLngLat(e.lngLat)
        .setHTML(
          `
          \x3Ch3>${feature.properties.name}\x3C/h3>
          \x3Cp>Population: ${feature.properties.population.toLocaleString()}\x3C/p>
        `
        )
        .addTo(map);
    }
  });

  map.on('mouseleave', 'states-layer', () => {
    map.getCanvas().style.cursor = '';
    popup.remove();
  });
});

step vs interpolate: The example above uses interpolate for smooth color gradients. For discrete color buckets (e.g., "low / medium / high"), use ['step', ['get', 'population'], '#f0f0f0', 500000, '#fee0d2', 2000000, '#fc9272', 10000000, '#de2d26'] instead. Prefer step when data has natural categories or when exact boundary values matter.

Color Scale Strategies:

// Linear interpolation (continuous scale)
'fill-color': [
  'interpolate',
  ['linear'],
  ['get', 'value'],
  0, '#ffffcc',
  25, '#78c679',
  50, '#31a354',
  100, '#006837'
]

// Step intervals (discrete buckets)
'fill-color': [
  'step',
  ['get', 'value'],
  '#ffffcc',  // Default color
  25, '#c7e9b4',
  50, '#7fcdbb',
  75, '#41b6c4',
  100, '#2c7fb8'
]

// Case-based (categorical data)
'fill-color': [
  'match',
  ['get', 'category'],
  'residential', '#ffd700',
  'commercial', '#ff6b6b',
  'industrial', '#4ecdc4',
  'park', '#45b7d1',
  '#cccccc'  // Default
]

Heat Maps

Best for: Point density, event locations, incident clustering

Pattern: Visualize density of points

map.on('load', () => {
  // Add data source (points)
  map.addSource('incidents', {
    type: 'geojson',
    data: {
      type: 'FeatureCollection',
      features: [
        {
          type: 'Feature',
          geometry: {
            type: 'Point',
            coordinates: [-122.4194, 37.7749]
          },
          properties: {
            intensity: 1
          }
        }
        // ... more points
      ]
    }
  });

  // Add heatmap layer
  map.addLayer({
    id: 'incidents-heat',
    type: 'heatmap',
    source: 'incidents',
    maxzoom: 15,
    paint: {
      // Increase weight based on intensity property
      'heatmap-weight': ['interpolate', ['linear'], ['get', 'intensity'], 0, 0, 6, 1],
      // Increase intensity as zoom level increases
      'heatmap-intensity': ['interpolate', ['linear'], ['zoom'], 0, 1, 15, 3],
      // Color ramp for heatmap
      'heatmap-color': [
        'interpolate',
        ['linear'],
        ['heatmap-density'],
        0,
        'rgba(33,102,172,0)',
        0.2,
        'rgb(103,169,207)',
        0.4,
        'rgb(209,229,240)',
        0.6,
        'rgb(253,219,199)',
        0.8,
        'rgb(239,138,98)',
        1,
        'rgb(178,24,43)'
      ],
      // Adjust radius by zoom level
      'heatmap-radius': ['interpolate', ['linear'], ['zoom'], 0, 2, 15, 20],
      // Decrease opacity at higher zoom levels
      'heatmap-opacity': ['interpolate', ['linear'], ['zoom'], 7, 1, 15, 0]
    }
  });

  // Add circle layer for individual points at high zoom
  map.addLayer({
    id: 'incidents-point',
    type: 'circle',
    source: 'incidents',
    minzoom: 14,
    paint: {
      'circle-radius': ['interpolate', ['linear'], ['zoom'], 14, 4, 22, 30],
      'circle-color': '#ff4444',
      'circle-opacity': 0.8,
      'circle-stroke-color': '#fff',
      'circle-stroke-width': 1
    }
  });
});

Best Practices

Color Accessibility

// Use ColorBrewer scales for accessibility
// https://colorbrewer2.org/

// Good: Sequential (single hue)
const sequentialScale = ['#f0f9ff', '#bae4ff', '#7fcdff', '#0080ff', '#001f5c'];

// Good: Diverging (two hues)
const divergingScale = ['#d73027', '#fc8d59', '#fee08b', '#d9ef8b', '#91cf60', '#1a9850'];

// Good: Qualitative (distinct categories)
const qualitativeScale = ['#e41a1c', '#377eb8', '#4daf4a', '#984ea3', '#ff7f00'];

// Avoid: Red-green for color-blind accessibility
// Use: Blue-orange or purple-green instead

Error Handling

// Handle missing or invalid data
map.on('load', () => {
  map.addSource('data', {
    type: 'geojson',
    data: dataUrl
  });

  map.addLayer({
    id: 'data-viz',
    type: 'fill',
    source: 'data',
    paint: {
      'fill-color': [
        'case',
        ['has', 'value'], // Check if property exists
        ['interpolate', ['linear'], ['get', 'value'], 0, '#f0f0f0', 100, '#0080ff'],
        '#cccccc' // Default color for missing data
      ]
    }
  });

  // Handle map errors
  map.on('error', (e) => {
    console.error('Map error:', e.error);
  });
});

Data Size Rule

  • \x3C 1 MB: Use GeoJSON directly
  • 1–10 MB: Consider either GeoJSON or vector tiles depending on complexity
  • > 10 MB: Use vector tiles (upload to Mapbox as tileset)

See references/performance.md for implementation details.

Reference Files

For additional visualization patterns, load the relevant reference file:

Resources

Usage Guidance
This skill appears coherent and low-risk: it's a documentation/instruction pack for Mapbox visualizations and requires no credentials or installs. Before using: replace placeholder endpoints (example.com, api.example.com) with your own trusted data sources; do not point examples at private endpoints unless you understand the data flow and CORS implications; if you use Mapbox services you will need a Mapbox access token in your app (the skill doesn't request one) — store that token securely and avoid pasting it into untrusted places; when running examples that fetch live data or open WebSockets, verify the remote service's trustworthiness to avoid inadvertently sending sensitive data. If you want higher assurance, request the author/source and any licensing/usage terms for included patterns or assets.
Capability Analysis
Type: OpenClaw Skill Name: mapbox-data-visualization-patterns Version: 1.0.0 The skill bundle provides comprehensive and legitimate documentation, code patterns, and reference materials for Mapbox GL JS data visualization. It covers standard mapping techniques such as choropleth maps, heat maps, clustering, and 3D extrusions using the official Mapbox API. No evidence of malicious intent, data exfiltration, or prompt injection was found; all external URLs are placeholders (e.g., example.com), and the instructions are strictly aligned with the stated purpose of assisting developers with map styling and performance optimization.
Capability Assessment
Purpose & Capability
Name/description match the content: examples, patterns, and guidance all relate to Mapbox GL JS visualizations. There are no unrelated environment variables, binaries, or config paths requested.
Instruction Scope
SKILL.md contains many concrete code examples that fetch or reference external data URLs (https://example.com, /api/live-data, wss://api.example.com) and demonstrates client-side data updates and WebSocket polling. This is expected for a visualization patterns skill, but users should replace the placeholder endpoints and validate any real endpoints they connect to.
Install Mechanism
No install spec and no code files are executed by the platform — lowest-risk pattern. A snippet references 'npm install classybrew' for preprocessing, but that's an optional example and not an installer declared by the skill.
Credentials
Skill declares no environment variables, credentials, or config paths. The examples do not attempt to access system secrets. No disproportionate credential requests are present.
Persistence & Privilege
always is false and the skill does not request persistent system presence or modify other skills. Autonomous invocation is allowed (platform default) but the skill has no elevated privileges.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install mapbox-data-visualization-patterns
  3. After installation, invoke the skill by name or use /mapbox-data-visualization-patterns
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
- Initial release providing best-practice patterns for data visualization on Mapbox maps. - Includes step-by-step guides for choropleth maps, heat maps, and 3D visualizations. - Covers color scale strategies for continuous and categorical data. - Offers tips for accessibility, error handling, and large dataset performance. - Reference files for advanced topics like clustering, animation, and optimization are linked.
Metadata
Slug mapbox-data-visualization-patterns
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Mapbox Data Visualization Patterns?

Patterns for visualizing data on maps including choropleth maps, heat maps, 3D visualizations, data-driven styling, and animated data. Covers layer types, co... It is an AI Agent Skill for Claude Code / OpenClaw, with 149 downloads so far.

How do I install Mapbox Data Visualization Patterns?

Run "/install mapbox-data-visualization-patterns" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Mapbox Data Visualization Patterns free?

Yes, Mapbox Data Visualization Patterns is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Mapbox Data Visualization Patterns support?

Mapbox Data Visualization Patterns is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Mapbox Data Visualization Patterns?

It is built and maintained by Mapbox (@mapbox); the current version is v1.0.0.

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