All Supermarket Locations in France: Complete Geographic Dataset

All Supermarket Locations in France: Complete Geographic Dataset

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All Supermarkets locations in France - complete national dataset

This dataset contains a complete, geocoded collection of Supermarkets in France, including branded chains and independent locations. It provides a complete national coverage with 93,734 verified locations suitable for territory planning, market sizing and spatial analysis.

Last updated: 27 May 2026.

Dataset fields included in the CSV:

  • GUID
  • Title
  • Group
  • Latitude
  • Longitude
  • Street No
  • Street
  • City
  • Admin_level_1
  • Admin_level_2
  • Commune
  • Region
  • Population
  • Postal Code
  • Address
  • Wheelchair
  • Popularity Score
  • Phone
  • Website
  • Opening hours

Brand distribution

Supermarkets distribution by Region

  • Auvergne-Rhône-Alpes: 12,311 supermarkets
  • Bourgogne-Franche-Comté: 4,091 supermarkets
  • Bretagne: 4,478 supermarkets
  • Centre-Val De Loire: 3,517 supermarkets
  • Grand Est: 6,708 supermarkets
  • Hauts-De-France: 7,312 supermarkets
  • Normandie: 5,077 supermarkets
  • Nouvelle-Aquitaine: 9,114 supermarkets
  • Occitanie: 10,263 supermarkets
  • Pays De La Loire: 4,417 supermarkets
  • Provence-Alpes-Côte D'Azur: 8,942 supermarkets
  • Île-De-France: 16,544 supermarkets
  • Pop - Corse: 355,197 supermarkets
  • Corse: 950 supermarkets

Direct access after purchase of the complete locations dataset for France

Download the dataset immediately in a clean, analysis-ready CSV format. Ideal for geospatial analysis, competitor benchmarking, market studies, site planning, and retail location intelligence workflows.

Evaluate the dataset before purchase

A free sample is available for download, allowing you to inspect the structure, fields, and geospatial precision before purchasing the full dataset.

Need the data in another format?

We can deliver this dataset in alternative formats upon request (GeoJSON, Shapefile, Excel, PostgreSQL import files, etc.). Contact us at contact@geolocet.com.

Frequently Asked Questions

Q: Can I use this dataset for competitor benchmarking?

A: Yes. The dataset is frequently used to compare retail footprints, market density, and regional presence against competing brands.

Q: Can this data be combined with demographics datasets?

A: Yes. Many customers combine these locations with demographics, income, mobility, and administrative boundary datasets for deeper spatial analysis.

Q: What coordinate reference system is used?

A: Coordinates are provided in the global WGS84 geographic coordinate system (EPSG:4326).

Q: Can I use this dataset in GIS software?

A: Yes. The dataset is suitable for GIS platforms including QGIS, ArcGIS, GeoPandas, CARTO, and other spatial analysis environments.

Q: Are postal codes included for all locations?

A: Postal codes are included wherever available and validated as part of the standardization workflow.

Q: Can this dataset support territory optimization?

A: Yes. The dataset is suitable for defining service territories, balancing regional coverage, and optimizing operational footprints.

Q: Is this dataset useful for accessibility studies?

A: Yes. Analysts can combine the coordinates with mobility, transport, and demographics datasets to evaluate accessibility and service coverage.

Q: Does the dataset include all locations in the country?

A: The dataset is designed to provide a complete and standardized list of known all locations operating in France as of May 2026.

Analyze this data with AI

Use these prompts with ChatGPT, Claude, or Gemini to extract strategic insights from this dataset:

  • "Analyze this this multi-brand dataset to identify underserved regions in France for potential market expansion."
  • "Cross-reference these supermarkets with urban transit data to score each location's accessibility for non-driving customers."
  • "Assess the accessibility of this multi-brand locations in France based on proximity to population centers and public infrastructure."