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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, color scales, and performance optimization.
// Patterns for visualizing data on maps including choropleth maps, heat maps, 3D visualizations, data-driven styling, and animated data. Covers layer types, color scales, and performance optimization.
Official integration patterns for Mapbox Maps SDK on iOS. Covers installation, adding markers, user location, custom data, styles, camera control, and featureset interactions. Based on official Mapbox documentation.
Official integration patterns for the Mapbox Maps Flutter SDK. Covers installation, iOS/Android platform setup, access token configuration, MapWidget initialization, camera control, annotations with tap handling, user location, and loading GeoJSON. Based on official Mapbox documentation.
Official integration patterns for Mapbox Maps SDK on Android. Covers installation, adding markers, user location, custom data, styles, camera control, and featureset interactions. Based on official Mapbox documentation.
Compose Mapbox MCP tools to produce grounded, cited location-aware responses from live data instead of training data
Expert guidance on choosing the right Mapbox search tool and parameters for geocoding, POI search, and location discovery
Integration patterns for Mapbox MCP Server in AI applications and agent frameworks. Covers runtime integration with pydantic-ai, mastra, LangChain, and custom agents. Use when building AI-powered applications that need geospatial capabilities.
| name | 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, color scales, and performance optimization. |
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.
Use this skill when:
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(
`
<h3>${feature.properties.name}</h3>
<p>Population: ${feature.properties.population.toLocaleString()}</p>
`
)
.addTo(map);
}
});
map.on('mouseleave', 'states-layer', () => {
map.getCanvas().style.cursor = '';
popup.remove();
});
});
stepvsinterpolate: The example above usesinterpolatefor smooth color gradients. For discrete color buckets (e.g., "low / medium / high"), use['step', ['get', 'population'], '#f0f0f0', 500000, '#fee0d2', 2000000, '#fc9272', 10000000, '#de2d26']instead. Preferstepwhen 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
]
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
}
});
});
// 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
// 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);
});
});
See references/performance.md for implementation details.
For additional visualization patterns, load the relevant reference file: