House Flipping Report
Neighborhood Data
London, OH 43140
Print
Successfully flipping a house depends on a number of different factors including population growth, increasing housing prices and cheap houses for sale. We are analyzing thousands of data points for London, OH . If these factors exist, there is a good chance that a successful flip is possible.
By looking at recent sales data in Madison County , we've been able to rank it against its peer counties within Ohio. To provide an even fuller picture, we also ranked Ohio against all other US states.
Region
Rank in # of Flips
Rank in Flip Profit
Ohio
#8th in US
#33rd in US
Madison County
#40th in OH
#6th in OH
Number of Flips: We identify house flips as houses that are bought and sold within 12 months excluding forclosures, REOs and multi-parcel sales.
Flip Profit: The profit is the gross margin calculated by subtracting the original purchase price from the new resale price.
Latest Monthly Sales Count
63
List Price /sqft
$125
0.09% from last quarter
Reduced Listings /Month
8
-0.33% from last quarter
Average Home Sqft
$1,977
0.03% from last year
In order to successfully flip houses, you need the population of the area to be trending northward, which appears to be the case with Madison County . This is a good sign that flipping a house here will be successful.
Region
Population
Change YoY
Rank
Ohio
11,689,442
0.22%
#7th in US
Madison County
44,413
0.83%
#53rd in OH
43140
24,066
#51st in OH
FlipMarket is the industry standard for providing you the exact data needed to see if flipping a house will be successful. To find properties for sale that may fit your budget and be house flipping candidates, check this list of popular searches.
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