Akasia apartment
Bandar Botanik, 41200 Klang, Selangor, Malaysia
Bandar Botanik, 41200 Klang, Selangor, Malaysia
New Condo in PJ Damansara
Pet friendly condo. 10mins to 1Utama
| Road | Price | PSF | Size | Date | Type |
|---|
|
Level 1
|
RM 250,000
|
RM 306
|
818 sqft
|
|
|
|
Level 3
|
RM 265,000
|
RM 324
|
818 sqft
|
|
|
Level 3
|
RM 330,000
|
RM 378
|
872 sqft
|
|
|
|
Level 11
|
RM 295,000
|
RM 343
|
861 sqft
|
|
|
|
Level 7
|
RM 290,000
|
RM 333
|
872 sqft
|
|
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New Condo in PJ Damansara
Pet friendly condo. 10mins to 1Utama
New Condo in PJ Damansara
From RM 600,000 · 800 sqft
Pet friendly condo. 10mins to 1Utama
Market Snapshot
ResidentialRM 290,000
RM 333 psfMedian transaction price
Akasia apartment, Bandar Botanik, 41200 Klang, Selangor, Malaysia
MapsAkasia apartment in Klang, Selangor recorded 5 subsale transactions in 2022, with a median price of RM 290K and a median price per square foot (PSF) of RM 333.
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 290K, with most transactions falling within a stable range of RM 263K to RM 317K, and a typical market range of RM 273K to RM 308K.
Most transactions involved condominium/apartment, with minimal variety in property types.
For price per square foot, the median is RM 333, with most transactions between RM 308 and RM 357. The usual range is RM 316.61 to RM 348.61, showing that most units are priced quite close to each other. A typical spread (IQR) of RM 32.00 and an average deviation (MAD) of RM 24 indicate a highly stable PSF trend across properties.
Overall, the market in this area appears stable with consistent appreciation, making it an attractive option for both investors and homebuyers. The consistent property type and stable pricing make it easier to assess value and compare trends. Limited transaction history suggests carefully evaluating comparable sales data.