Territory Mapper
by dkyazzentwatwa
Use when asked to visualize sales territories, coverage areas, service regions, or geographic boundaries on interactive maps.
Skill Details
Repository Files
3 files in this skill directory
name: territory-mapper description: Use when asked to visualize sales territories, coverage areas, service regions, or geographic boundaries on interactive maps.
Territory Mapper
Visualize sales territories, coverage areas, and service regions on interactive maps with customizable boundaries and styling.
Purpose
Territory visualization for:
- Sales territory assignment and planning
- Service area coverage mapping
- Market analysis and expansion
- Delivery zone visualization
- Regional performance tracking
Features
- Territory Polygons: Draw custom boundaries
- Color Coding: Color by performance, team, status
- Interactive Maps: Zoom, pan, tooltips
- Data Overlay: Add markers, heatmaps, routes
- Statistical Layers: Population, demographics
- Export: HTML, PNG, GeoJSON
Quick Start
from territory_mapper import TerritoryMapper
# Create territory map
mapper = TerritoryMapper()
mapper.add_territory(
name='West Coast',
coordinates=[(37.7, -122.4), (34.0, -118.2), ...],
color='blue',
data={'sales': 1000000, 'rep': 'Alice'}
)
mapper.save_html('territories.html')
CLI Usage
# Create map from GeoJSON
python territory_mapper.py --geojson territories.geojson --output map.html
# Color by column
python territory_mapper.py --geojson territories.geojson --color-by sales --output map.html
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