Taman Permai (SP)

Bandar Sungai Petani, 08000, Kuala Muda, Kedah, Malaysia

Property Transactions

5 subsales grouped by size

Median
RM 100,000
PSF
RM 84
Price Size
Period
transactions middle 50% (P25–P75)
1,200 sqft
LC House
RM 185,000
Lorong 98
1,195 sqft · RM 155 PSF
RM 115,000
Lorong 2
1,195 sqft · RM 96 PSF
RM 60,000
Lorong.3
1,195 sqft · RM 50 PSF
RM 80,000
Lorong 2
1,195 sqft · RM 67 PSF
RM 100,000
Lorong 9 C
1,195 sqft · RM 84 PSF
Legend Recent Highest Price Highest PSF

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Market Snapshot

Residential

RM 100,000

RM 84 psf

Median transaction price

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TAMAN PERMAI (SP), Bandar Sungai Petani, 08000, Kuala Muda, Kedah, Malaysia

Taman Permai (SP) in Kuala Muda, Kedah recorded 5 subsale transactions in 2022, with a median price of RM 100K and a median price per square foot (PSF) of RM 84.

This area consists exclusively of residential properties, with no commercial listings recorded.

Price remained flat, and PSF growth was PSF remained flat. The median price is RM 100K, with most transactions falling within a stable range of RM 60K to RM 143K, and a typical market range of RM 60K to RM 149K.

Most transactions involved low-cost house, with minimal variety in property types.

Price per square foot shows a median of RM 84, though individual units vary from RM 48 to RM 119 in the core range. The broader market spans RM 42.45 to RM 124.95, indicating diverse property characteristics. A wider spread (IQR: RM 82.50) and deviation (MAD: RM 36) indicate significant PSF variations, likely due to diverse property types or conditions.

While the area has shown positive growth trends, price variations suggest a more dynamic market. This presents opportunities for investors comfortable with moderate volatility. Significant price variations suggest comparing multiple properties and timing the market carefully. Limited transaction history suggests carefully evaluating comparable sales data.