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We tune housing data like a piano, balancing over- and underpricing until the result is remarkably in key. Follow the logic behind our numbers
Take a sharp look at First Avenue in the ST16 district in Stafford, and see how it compares with the broader area.
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House Prices > Stafford > ST16 > First Avenue
Quick Look at Property Prices in First Avenue
First Avenue’s Prices Stacked Against Surrounding Areas
ST16 1
If you're buying a home in First Avenue, you could pay approximately 43% less than in the ST16 1 sector. (£254,100 vs £177,600). Based on these figures, securing a comparable home on First Avenue instead of another street in the sector could save you approximately £76,500.
i.e. ST16
Moving to the ST16 district is a vibe - a vibe that costs around 22% extra compared to First Avenue. (£216,000 vs £177,600). When cost matters, a comparable home on First Avenue could set you back £38,400 less than elsewhere.
i.e. Stafford
Property values in Stafford outstrip those in First Avenue by 68% on average. (£298,000 vs £177,600). In practical terms, this means that buying on First Avenue instead of Stafford could save you roughly £119,900.
Unpacking ST16: Insights & Info
ST16 encourages reflection about life’s duality of urban allure and pastoral beauty. Here, open skies and green expanses counterbalance urban infrastructure: a philosophical ponder on existent harmonies within Stafford’s confines, where contrasts converge yet exist in satisfying equilibrium.
We tune housing data like a piano, balancing over- and underpricing until the result is remarkably in key. Follow the logic behind our numbers