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Mapbox Search Patterns

by Mapbox · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install mapbox-search-patterns
Description
Expert guidance on choosing the right Mapbox search tool and parameters for geocoding, POI search, and location discovery
README (SKILL.md)

Mapbox Search Patterns Skill

Expert guidance for AI assistants on using Mapbox search tools effectively. Covers tool selection, parameter optimization, and best practices for geocoding, POI search, and location discovery.

Available Search Tools

1. search_and_geocode_tool

Best for: Specific places, addresses, brands, named locations

Use when query contains:

  • Specific names: "Starbucks on 5th Avenue", "Empire State Building"
  • Brand names: "McDonald's", "Whole Foods"
  • Addresses: "123 Main Street, Seattle", "1 Times Square"
  • Chain stores: "Target"
  • Cities/places: "San Francisco", "Portland"

Don't use for: Generic categories ("coffee shops", "museums")

2. category_search_tool

Best for: Generic place types, categories, plural queries

Use when query contains:

  • Generic types: "coffee shops", "restaurants", "gas stations"
  • Plural forms: "museums", "hotels", "parks"
  • Is-a phrases: "any coffee shop", "all restaurants", "nearby pharmacies"
  • Industry terms: "electric vehicle chargers", "ATMs"

Don't use for: Specific names or brands

3. reverse_geocode_tool

Best for: Converting coordinates to addresses, cities, towns, postcodes

Use when:

  • Have GPS coordinates, need human-readable address
  • Need to identify what's at a specific location
  • Converting user location to address

Tool Selection Decision Matrix

User Query Tool Reasoning
"Find Starbucks on Main Street" search_and_geocode_tool Specific brand name
"Find coffee shops nearby" category_search_tool Generic category, plural
"What's at 37.7749, -122.4194?" reverse_geocode_tool Coordinates to address
"Empire State Building" search_and_geocode_tool Specific named POI
"hotels in downtown Seattle" category_search_tool Generic type + location
"Target store locations" search_and_geocode_tool Brand name (even plural)
"any restaurant near me" category_search_tool Generic + "any" phrase
"123 Main St, Boston, MA" search_and_geocode_tool Specific address
"electric vehicle chargers" category_search_tool Industry category
"McDonald's" search_and_geocode_tool Brand name

Parameter Guidance

Proximity vs Bbox vs Country

Three ways to spatially constrain search results:

1. proximity (STRONGLY RECOMMENDED)

What it does: Biases results toward a location, but doesn't exclude distant matches

Use when:

  • User says "near me", "nearby", "close to"
  • Have a reference point but want some flexibility
  • Want results sorted by relevance to a point

Example:

{
  "q": "pizza",
  "proximity": {
    "longitude": -122.4194,
    "latitude": 37.7749
  }
}

Why this works: API returns SF pizza places first, but might include famous NYC pizzerias if highly relevant

Critical: Always set proximity when you have a reference location! Without it, results are IP-based or global.

2. bbox (Bounding Box)

What it does: Hard constraint - ONLY returns results within the box

Use when:

  • User specifies an area: "in downtown", "within this neighborhood"
  • Have a defined service area
  • Need to guarantee results are within bounds

Example:

{
  "q": "hotel",
  "bbox": [-122.51, 37.7, -122.35, 37.83] // [minLon, minLat, maxLon, maxLat]
}

Why this works: Guarantees all hotels are within SF's downtown area

Watch out: Too small = no results; too large = irrelevant results

3. country

What it does: Limits results to specific countries

Use when:

  • User specifies country: "restaurants in France"
  • Building country-specific features
  • Need to respect regional boundaries
  • Or it is otherwise clear they want results within a specific country

Example:

{
  "q": "Paris",
  "country": ["FR"] // ISO 3166 alpha-2 codes
}

Why this works: Finds Paris, France (not Paris, Texas)

Can combine: proximity + country + bbox or any combination of the three

Decision Matrix: Spatial Filters

Scenario Use Why
"Find coffee near me" proximity Bias toward user location
"Coffee shops in downtown Seattle" proximity + bbox Center on downtown, limit to area
"Hotels in France" country Hard country boundary
"Best pizza in San Francisco" proximity + country ["US"] Bias to SF, limit to US
"Gas stations along this route" bbox around route Hard constraint to route corridor
"Restaurants within 5 miles" proximity (then filter by distance) Bias nearby, filter results

Setting limit Parameter

category_search_tool only (1-25, default 10)

Use Case Limit Reasoning
Quick suggestions 5 Fast, focused results
Standard list 10 Default, good balance
Comprehensive search 25 Maximum allowed
Map visualization 25 Show all nearby options
Dropdown/autocomplete 5 Don't overwhelm UI

Performance tip: Lower limits = faster responses

types Parameter (search_and_geocode_tool)

Filter by feature type:

Type What It Includes Use When
poi Points of interest (businesses, landmarks) Looking for POIs, not addresses
address Street addresses Need specific address
place Cities, neighborhoods, regions Looking for area/region
street Street names without numbers Need street, not specific address
postcode Postal codes Searching by ZIP/postal code
district Districts, neighborhoods Area-based search
locality Towns, villages Municipality search
country Country names Country-level search

Example combinations:

// Only POIs and addresses, no cities
{"q": "Paris", "types": ["poi", "address"]}
// Returns Paris Hotel, Paris Street, not Paris, France

// Only places (cities)
{"q": "Paris", "types": ["place"]}
// Returns Paris, France; Paris, Texas; etc.

Default behavior: All types included (usually what you want)

auto_complete Parameter (search_and_geocode_tool)

What it does: Enables partial/fuzzy matching

Setting Behavior Use When
true Matches partial words, typos User typing in real-time
false (default) Exact matching Final query, not autocomplete

Example:

\x3C!-- cspell:disable -->

// User types "starb"
{ "q": "starb", "auto_complete": true }
// Returns: Starbucks, Starboard Tavern, etc.

Use for:

  • Search-as-you-type interfaces
  • Handling typos ("mcdonalds" -> McDonald's) \x3C!-- cspell:enable -->
  • Incomplete queries

Don't use for:

  • Final/submitted queries (less precise)
  • When you need exact matches

Anti-Patterns to Avoid

Don't: Use category_search for brands

// BAD
category_search_tool({ category: 'starbucks' });
// "starbucks" is not a category, returns error

// GOOD
search_and_geocode_tool({ q: 'Starbucks' });

Don't: Use search_and_geocode for generic categories

// BAD
search_and_geocode_tool({ q: 'coffee shops' });
// Less precise, may return unrelated results

// GOOD
category_search_tool({ category: 'coffee_shop' });

Don't: Forget proximity for local searches

// BAD - Results may be anywhere globally
category_search_tool({ category: 'restaurant' });

// GOOD - Biased to user location
category_search_tool({
  category: 'restaurant',
  proximity: { longitude: -122.4194, latitude: 37.7749 }
});

Don't: Use bbox when you mean proximity

// BAD - Hard boundary may exclude good nearby results
search_and_geocode_tool({
  q: 'pizza',
  bbox: [-122.42, 37.77, -122.41, 37.78] // Tiny box
});

// GOOD - Bias toward point, but flexible
search_and_geocode_tool({
  q: 'pizza',
  proximity: { longitude: -122.4194, latitude: 37.7749 }
});

Don't: Request ETA unnecessarily

// BAD - Costs API quota for routing calculations
search_and_geocode_tool({
  q: 'museums',
  eta_type: 'navigation',
  navigation_profile: 'driving'
});
// User didn't ask for travel time!

// GOOD - Only add ETA when needed
search_and_geocode_tool({ q: 'museums' });
// If user asks "how long to get there?", then add ETA

Don't: Set limit too high for UI display

// BAD - Overwhelming for simple dropdown
category_search_tool({
  category: 'restaurant',
  limit: 25
});
// Returns 25 restaurants for a 5-item dropdown

// GOOD - Match UI needs
category_search_tool({
  category: 'restaurant',
  limit: 5
});

Quick Reference

Tool Selection Flowchart

User query contains...

-> Specific name/brand (Starbucks, Empire State Building)
  -> search_and_geocode_tool

-> Generic category/plural (coffee shops, museums, any restaurant)
  -> category_search_tool

-> Coordinates -> Address
  -> reverse_geocode_tool

-> Address -> Coordinates
  -> search_and_geocode_tool with types: ["address"]

Essential Parameters Checklist

For local searches, ALWAYS set:

  • proximity (or bbox if strict boundary needed)

For category searches, consider:

  • limit (match UI needs)
  • format (json_string if plotting on map)

For disambiguation, use:

  • country (when geographic context matters)
  • types (when feature type matters)

For travel-time ranking:

  • eta_type, navigation_profile, origin (costs API quota)

Common Mistakes

  1. Forgetting proximity -> Results are global/IP-based
  2. Using wrong tool -> category_search for "Starbucks" (use search_and_geocode)
  3. Invalid category -> Check category_list first
  4. Bbox too small -> No results; use proximity instead
  5. Requesting ETA unnecessarily -> Adds API cost
  6. Limit too high for UI -> Overwhelming user
  7. Not filtering types -> Get cities when you want POIs

Reference Files

Load these for deeper guidance on specific topics:

  • references/advanced-params.md — poi_category, ETA, format, and language parameters
  • references/workflows.md — Common patterns: Near Me, Branded, Geocoding, Category+Area, Reverse, Route-Based, Multilingual
  • references/optimization-combining.md — Performance optimization, combining tools, handling no results, category list resource
Usage Guidance
This skill is a documentation-style guidance pack (no code, no installs, no secrets requested) and appears internally consistent. Before enabling for an agent, confirm: (1) any Mapbox access tokens the agent will use are properly scoped and stored securely elsewhere (this skill won't manage them), (2) the agent's use of user location data follows your privacy requirements (examples assume the app/browser supplies coordinates), and (3) if you allow autonomous agent invocation, the agent could make Mapbox API calls using whatever tokens are available — ensure tokens and quotas are acceptable. If you need the skill to actually perform API calls, verify that another skill or configuration supplies a least-privilege Mapbox token.
Capability Analysis
Type: OpenClaw Skill Name: mapbox-search-patterns Version: 1.0.0 The skill bundle provides comprehensive documentation and logic for an AI agent to use Mapbox search tools (geocoding, POI search, and reverse geocoding). It includes tool selection matrices, parameter guidance, and common workflows in files like SKILL.md and references/workflows.md without any evidence of malicious intent, data exfiltration, or harmful prompt injection. All content is strictly aligned with the stated purpose of optimizing Mapbox API usage.
Capability Assessment
Purpose & Capability
Name/description match the content: the files provide patterns and parameter guidance for Mapbox search, and nothing in the bundle asks for unrelated resources or privileges.
Instruction Scope
SKILL.md and reference docs restrict actions to selecting Mapbox search tools, choosing spatial filters, limits, and common workflows. It references obtaining user location and using Mapbox-specific helper tools (distance_tool, directions_tool, resource_reader_tool), which is appropriate for geospatial search guidance and not out-of-scope.
Install Mechanism
No install spec and no code files — instruction-only content — so nothing is written to disk or downloaded during install.
Credentials
The skill declares no required environment variables or credentials. It does mention using Mapbox tokens and user location in examples, which is expected for Mapbox integration but the skill itself does not request them.
Persistence & Privilege
always is false and the skill does not request persistent/system-wide privileges or modify other skills; autonomous invocation is allowed by default but there is no evidence this skill needs elevated persistence.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install mapbox-search-patterns
  3. After installation, invoke the skill by name or use /mapbox-search-patterns
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release providing expert guidance for using Mapbox search tools. - Details tool selection for search_and_geocode_tool, category_search_tool, and reverse_geocode_tool. - Includes decision matrices for choosing tools and spatial filters. - Explains how and when to use `proximity`, `bbox`, and `country` parameters. - Provides parameter recommendations for `limit`, `types`, and `auto_complete`. - Offers examples and best practices for geocoding, POI search, and location discovery.
Metadata
Slug mapbox-search-patterns
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Mapbox Search Patterns?

Expert guidance on choosing the right Mapbox search tool and parameters for geocoding, POI search, and location discovery. It is an AI Agent Skill for Claude Code / OpenClaw, with 100 downloads so far.

How do I install Mapbox Search Patterns?

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

Is Mapbox Search Patterns free?

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

Which platforms does Mapbox Search Patterns support?

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

Who created Mapbox Search Patterns?

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

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