Our Intelligence Is Built on Accuracy
Each valuation comes from deep within the data - refined, realigned and stripped of anything that doesn’t help. See how we fine-tune the data
Learn how transaction levels across Thomas Way in the CV23 district in Rugby stack up against other city districts.
Additionally, use these handy features to guide your property decisions.
How much is your home worth?
Get a personalised estimate based on recent local sales and property type.

Why Use M0VE?
Spot undervalued deals in any given area
Find the perfect home that matches your budget and lifestyle
Relocate smarter with side-by-side area comparisons
Take the guesswork out of making an offer
Access the UK's most accurate valuation tool
Get in-depth stats for any street in the UK
Visualise UK market data with interactive charts
Get smarter alerts that go way beyond new listings
Chat with AI trained on real property data
House Prices > Rugby > CV23 > Thomas Way
Market Trends and Property Values in Thomas Way
Thomas Way Costs vs Surrounding Areas Markets
Long Lawford
Fancy living in Long Lawford? It'll cost you 27% more than picking a home on Thomas Way. (£249,200 vs £196,900) Based on this, buyers could enjoy a saving of £52,400 by choosing Thomas Way over Long Lawford.
CV23 9
Thinking smart? Thomas Way properties come with about a 53% discount over sector rates. (£300,700 vs £196,900). Based on this pattern, choosing Thomas Way might leave you spending £103,900 less than for a comparable sector property.
i.e. CV23
A move to the CV23 district means waving goodbye to about 58% more cash than on Thomas Way. (£311,700 vs £196,900). A comparable home on Thomas Way could cost up to £114,900 less than one in another part of the same district based on average prices.
i.e. Rugby
In financial terms, Rugby properties typically cost 34% more than their Thomas Way counterparts. (£264,000 vs £196,900). This highlights that a like-for-like home on Thomas Way could be available for £66,900 less than in Rugby.
About the CV23 Area
Each valuation comes from deep within the data - refined, realigned and stripped of anything that doesn’t help. See how we fine-tune the data
×
Our site uses cookies. By using this site, you agree to the Privacy Policy and Terms of Use.