Vista Damai

Jln Tun Razak, Kampung Datuk Keramat, 55000 Kuala Lumpur, Wilayah Persekutuan Kuala Lumpur, Malaysia

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From
RM 600K
Size
800 sqft

Property Transactions

3 subsales grouped by size

Median
RM 505,000
PSF
RM 586
Price Size
850 sqft
Condo
RM 495,000
Level 9
850 sqft · RM 582 PSF
RM 505,000
Level 12
861 sqft · RM 586 PSF
950 sqft
Condo
RM 550,000
Level 6
926 sqft · RM 594 PSF
Legend Recent Highest Price Highest PSF

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Market Snapshot

Residential

RM 505,000

RM 586 psf

Median transaction price

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Vista Damai, Jln Tun Razak, Kampung Datuk Keramat, 55000 Kuala Lumpur, Wilayah Persekutuan Kuala Lumpur, Malaysia

Maps

Vista Damai in Kuala Lumpur, Kuala Lumpur recorded 3 subsale transactions in 2023, with a median price of RM 505K and a median price per square foot (PSF) of RM 586.

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 505K, with most transactions falling within a stable range of RM 495K to RM 529K, and a typical market range of RM 495K to RM 550K.

Most transactions involved condominium/apartment, with minimal variety in property types.

For price per square foot, the median is RM 586, with most transactions between RM 581 and RM 591. The usual range is RM 550.95 to RM 621.95, showing that most units are priced quite close to each other. With an IQR of RM 71.00 and MAD of RM 5, the PSF demonstrates reasonable consistency across the market.

Overall, the market in this area appears stable with consistent appreciation, making it an attractive option for both investors and homebuyers. Moderate price stability provides a balanced market for both buyers and sellers. Limited transaction history suggests carefully evaluating comparable sales data.