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Nelson Realty Group | Kiara Nelson | Keller Williams Ann Arbor — 18 websites ranked by shared content topics, category and on-page relevance.

Each result shows its full tech stack, contacts and AI-policy — not just a name · Browse all sites in Real Estate Buying And Selling →

DomainMatchTitleCountry/LangCategoryAI filesContactAI-protection
placevegas.com 84 match
2 shared topics
Bush Realty Group | Michelle Bush | Keller Williams VIP US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
caryteamrealty.com 83 match
2 shared topics
Cary Team Realty | Keller Williams Realty Group | PLACE US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
platzplace.com 83 match
2 shared topics
Joe Platz | The Platz Group | Keller Williams Realty Boise US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
nancybergeron.com 82 match
2 shared topics
Nancy Bergeron | The Bergeron Group | Keller Williams Realty US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
placepartneratlanta.com 81 match
2 shared topics
Chatel Group | Sarah Chatel | Keller Williams Atlanta Midtown US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
joeplatz.com 81 match
2 shared topics
The Platz Group | Joe Platz | Keller Williams | PLACE US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
samboghigianrealty.com 81 match
2 shared topics
Sam Boghigian Realty | Keller Williams Gateway Realty en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
cascadiahometeam.com 80 match
2 shared topics
Cascadia Home Team | Keller Williams Realty en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
platinumexperiencegroup.com 80 match
2 shared topics
Platinum Experience Group | Keller Williams Professionals US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
deluca-group.com 80 match
2 shared topics
The DeLuca Group | Nicholas DeLuca | Keller Williams US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
switzerrealestategroup.com 80 match
2 shared topics
Switzer Real Estate Group | Amanda Switzer | Keller Williams Realty Eugene & Springfield US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
harberhomegroup.com 80 match
2 shared topics
Harber Home Group | Matt Harber | Keller Williams Tacoma US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
dreamdoorstn.com 80 match
2 shared topics
Beth Torrence Shearon | Dream Doors Real Estate Group | Keller Williams Franklin US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
upstategarnergroup.com 79 match
2 shared topics
The Upstate Garner Group | Rita Garner | Keller Williams Western Upstate US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
luxurybuffalohomes.com 79 match
2 shared topics
Joe Saccone Team | Keller Williams Realty WNY | PLACE US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
johnpaulushomes.com 79 match
2 shared topics
John Paulus Real Estate | Keller Williams Realty Metro Atlanta US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
nancymatt.com 79 match
2 shared topics
Nancy Matt Team | Keller Williams Real Estate US~ en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10
saltydogrealtyteam.com 79 match
2 shared topics
Torres Team | Keller Williams Coastal en real-estate-buying-and-selling robotsllmsaihumans emailphone partial · 10

How the match score works

Each match is a 0–100 similarity score — the higher it is, the more two sites resemble one another. It’s computed automatically from our own crawl data (never from what a site says about itself) by combining several independent signals, so a high score means several of them point the same way:

No single signal decides the result — they’re blended together. Treat the score as a way to rank candidates rather than an absolute percentage; the chips on each result show which signals contributed.