How Geolid Cut Google Maps Data Costs by ~75% with lobstr.io

Shehriar Awan
5 Jan 2026

5 min read

Company intro

Geolid is a France-based local marketing platform operating at national scale, generating 8-figure annual revenue.
Company intro image1

The company works with national brands, franchises, and multi-location networks across France, helping them understand and improve their visibility in local searches.

Company intro image2

A core part of Geolid’s services depends on one thing… how brands actually show up in local search results — at the city and zip-code level.

If this data is wrong, the recommendations Geolid gives to brands are wrong, which directly affects trust in the platform and its outputs.

Accurate local search presence monitoring at scale

For Geolid, local search visibility is not uniform across a country. The same brand can appear very differently depending on the city, zip code, service area or typed query.

To deliver accurate insights to clients, Geolid evaluates how brands show up in local search results at the zip-code and city level, not as a national average.

This requires running the same brand searches across hundreds of distinct areas and comparing results area by area.

As of today, Geolid monitors 1,280 city and zip-code–level areas across France every month, each corresponding to a defined geographic zone where visibility directly impacts client decisions.

Accurate local search presence monitoring at scale image3

For each of these areas, Geolid runs a local brand search.

blog-not-found
We work with national brands and our clients need to understand how they’re really positioned locally, not just at a national level. With Yamaha, for example, we tracked two different realities. One was dealer visibility using searches like ‘Yamaha Concession’. The other was the rollout of Yamaha Rent, which had its own local footprint. Both were evaluated at the city and zip-code level, because results vary a lot depending on where the search is run. If you don’t look at each area independently, you miss where visibility is strong and where it’s breaking down.
blog-not-found
Charlyne Graveline,Head of Marketing and Product, Geolid

In the Yamaha Rent campaign, this zip-code–level approach directly supported measurable business outcomes:

Accurate local search presence monitoring at scale image4
  1. 75% of Yamaha dealers appeared in top Google search results
  2. 86% of digital leads came from Google listings
  3. 2.5× growth in Google reviews within one year

These results depend entirely on having clean, location-accurate data. Without that, local gaps are masked and optimization efforts are misdirected.

Each local search returns 50–100 listings.

Accurate local search presence monitoring at scale image5

That puts Geolid’s monthly data volume at:

  1. 1,280 areas × 50–100 listings
  2. ~64,000 to 128,000 Google Maps listings per month

At this volume, accuracy becomes the main constraint.

Google Maps often returns listings outside the intended zip code or city boundary. Nearby towns, adjacent postal zones, or overlapping service areas are frequently included in results.

Accurate local search presence monitoring at scale image6

In practice, this leads to:

  1. Out-of-scope listings mixed into zip-code–level datasets
  2. Inconsistent geographic boundaries across runs
  3. Extra verification work and reduced confidence in local-level insights

For a business that relies on this data to guide client strategy and reporting, even small inaccuracies compound quickly.

Addressing accuracy and cost at scale

As monitoring became more granular and recurring, Geolid ran into two structural constraints… accuracy and cost.

Existing approaches could handle volume, but struggled to consistently return zip-code-accurate results.

Out-of-scope listings remained a recurring issue, increasing validation effort and the risk of incorrect conclusions.

At the same time, costs scaled linearly with usage.

When Google Maps data is collected every month across hundreds of zip-code–level areas, per-listing pricing compounds quickly and becomes a limiting factor.

Addressing accuracy and cost at scale image7

To move forward, Geolid needed a setup designed specifically for recurring, geo-scoped local search monitoring, not one-off data collection.

This is where lobstr.io came in.

lobstr.io is built around location-aware crawling, with geo-matching applied at collection time rather than after the fact.

Addressing accuracy and cost at scale image8

This allows out-of-scope results to be skipped automatically, while keeping costs predictable for recurring runs.

Addressing accuracy and cost at scale image9

At Geolid’s scale, this reduced Google Maps data costs by ~75%, while significantly improving the accuracy of zip-code–level datasets.

blog-not-found
At our scale, the data provider we were using before was becoming quite expensive. Pricing was the main reason we switched to Lobstr.io. Our costs dropped by nearly 75%.
blog-not-found
Charlyne Graveline,Head of Marketing and Product, Geolid

The result was a monitoring pipeline that could run reliably every month without additional filtering or rework.

blog-not-found
What worked for us with lobstr.io is that accuracy is handled at the source. We don’t have to clean or reinterpret the data after collection. The searches are already scoped correctly, so what we get is usable straight away. That makes a big difference when you’re running the same monitoring every month.
blog-not-found
Charlyne Graveline,Head of Marketing and Product, Geolid

What changed after switching to lobstr.io

With accuracy stabilized and costs under control, local search monitoring shifted from a constrained workflow to a predictable system component.

blog-not-found
Once accuracy stopped being a variable, everything else became easier. We could expand coverage, run monitoring more frequently, and trust the outputs without second-guessing them. That stability is what allowed us to scale.
blog-not-found
Charlyne Graveline,Head of Marketing and Product, Geolid

After switching to lobstr.io, Geolid saw clear, measurable changes.

Outcomes at Geolid’s scale:

  1. ~70% improvement in zip-code–level accuracy
  2. ~4× reduction in Google Maps data costs
  3. ~3× expansion in monitored areas
  4. Predictable monthly monitoring costs
  5. Consistent accuracy across areas and runs
What changed after switching to lobstr.io

This allowed Geolid to expand coverage and frequency without revisiting tooling or workflows, supporting both internal analysis and client-facing insights.

Related Articles

Related Squids