SOLUTION BY INDUSTRY

Gas Stations & Convenience Stores

The physical world data layer your AI agents need to optimize every site, every route, every forecourt.

300M+
POIs globally indexed
98%
US parcel coverage
Hourly
Traffic data refresh
<60s
First agent query

High-stakes decisions.
Fragmented data.

Gas station and convenience store operators make decisions on new sites, forecourt optimization, product mix, and competitive response using fragmented data and slow research cycles. The operators who win in the next decade will have AI agents that reason over physical world data in real time.

Every layer your agent needs.

Structured, agent-ready data across every dimension that matters — composable, versioned, and built for tool calls.

📍
poi
Every gas station, C-store, QSR, and competitor location — structured with category, brand, hours, and attributes.
🚗
car_traffic
Vehicle flow counts on adjacent roads, peak hour patterns, direction of travel — at segment level, updated hourly.
📡
gps_mobility
Where do customers come from? Dwell time, trade area catchment, origin-destination patterns from mobile signals.
🏛
parcel_data
Ownership history, lot size, zoning classification, current lease rates — all addressable by parcel ID.
👥
demographics
Household income, vehicle ownership rates, commuter patterns, daytime population at block-group level.
🛒
competition
Branded competitor locations, catchment overlap, fuel price indexing — continuously monitored and updated.

What your agents can do.

01
Site Selection
Score candidate parcels against a custom site criteria model. What used to take a real estate team two weeks runs in 90 minutes.
  • Flag parcels on roads with >12,000 AADT
  • Model 3-minute drive-time catchment
  • Surface sites with no competitor within 800m
  • Rank by vehicle ownership and income tier
02
Network Optimization
Continuously monitor your estate against live traffic and mobility data, flagging underperformers and cannibalization risk.
  • Detect new competitor openings in trade areas
  • Flag volume decline before it hits P&L
  • Model remodel ROI by site
  • Prioritize estate rationalization decisions
03
Forecourt Intelligence
Cross-reference transaction data with daytime population and commuter flow to optimize pricing, product mix, and staffing.
  • Identify peak commuter windows by site
  • Optimize in-store product mix by demographic
  • Time fuel pricing to traffic patterns
  • Staff scheduling anchored to mobility data

A site evaluation in 90 minutes.

Watch the agent reason over a candidate parcel step by step, with a full data trace and decision at the end.

AGENT REASONING TRACE · 314 Bleecker St
parcel.query
C2-3 zoning · lot 3,200 sqft · 2 ownership transfers · ~$185/sqft/yr
traffic.flow
14,800 AADT · peak 79am and 57pm · eastbound dominant
mobility.catchment
3-min drive area · 28,400 daytime pop · 0.74 vehicle ownership index
poi.competition
2 branded competitors within 800m · nearest 620m · different brand tier
demographics.profile
Median HH $94k · age 2844 dominant · 68% commuter profile
agent.decision
PROCEED · confidence 0.81 · recommend lease negotiation
PROCEED

Works with your stack.

Five integration paths. Same data, same schemas, same response shapes regardless of how you connect.

MCP
MCP Server
Claude and any MCP-compatible agent queries xMap tools natively. Zero integration code. First query in under 60 seconds.
REST
REST + GraphQL
Drop into your existing data pipeline. Same method names, same response shapes across all layers. p95 latency under 200ms.
SQL
SQL / Warehouse
Versioned snapshots in Snowflake, BigQuery, and Databricks. Query directly against your own transaction data.
SDK
Python SDK
Five lines to your first site score. Full async support for batch processing thousands of parcels across your entire estate.
TOP-10 US FUEL RETAIL OPERATOR
14d 90min screening4,200+ parcels/wk+38% deal pipeline0.81 R²
xMap is the only data layer we found that actually ships with agent-ready schemas. We had a working prototype in a day and a production system in a week.
CTO, Top-10 US Fuel Retail Operator
Ready to build your site selection agent?
First query in under 60 seconds. No integration code required.

Get in Touch

Whatever your goal or project size, we will handle it.
We will ensure you 100% satisfication.

sales@xmap.ai
+1 (415) 800-3938
800 North King Street Wilmington, DE 19801, United States
1 Chome-17-1 Toranomon, Minato City, Tokyo 105-6415, Japan
"We focus on delivering quality data tailored to businesses needs from all around the world. Whether you are a restaurant, a hotel, or even a gym, you can empower your operations' decisions with geo-data.”
Mo Batran
CEO & Founder @ xMap
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