Facebook
Twitterhttps://data.gov.sg/open-data-licencehttps://data.gov.sg/open-data-licence
Dataset from Urban Redevelopment Authority. For more information, visit https://data.gov.sg/datasets/d_f65e490a8ad430f60a9a3d9df2bff2a0/view
Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Housing Index in Singapore increased to 210.70 points in the first quarter of 2025 from 209.40 points in the fourth quarter of 2024. This dataset provides the latest reported value for - Singapore Property Price Index - plus previous releases, historical high and low, short-term forecast and long-term prediction, economic calendar, survey consensus and news.
Facebook
TwitterAs of the last quarter of 2022, the residential non-landed property index value amounted to *****, which means that property prices increased by **** percent since the first quarter of 2009. The index shows how the property prices changed in those years, compared to the base value from the first quarter of 2009, when the index value was equal to 100.
Facebook
Twitterhttps://www.marketreportanalytics.com/privacy-policyhttps://www.marketreportanalytics.com/privacy-policy
The Singapore real estate market, valued at $46.58 billion in 2025, is projected to experience robust growth, exhibiting a Compound Annual Growth Rate (CAGR) of 6.57% from 2025 to 2033. This positive trajectory is driven by several key factors. Singapore's strong economic fundamentals, a stable political environment, and a consistently high demand for residential and commercial properties contribute significantly to market expansion. Furthermore, government initiatives aimed at improving infrastructure and attracting foreign investment fuel this growth. The increasing affluence of the population, coupled with limited land availability, continues to exert upward pressure on property prices, particularly in prime locations. However, the market is not without its challenges. Rising interest rates and potential regulatory changes could act as restraints, potentially moderating growth in the coming years. Nevertheless, the long-term outlook remains optimistic, particularly given the ongoing demand fueled by a growing population and a robust economy. The market is segmented into various property types, including residential (condominiums, apartments, landed properties), commercial (office spaces, retail malls), and industrial (warehouses, factories), each exhibiting its own growth dynamics. Key players such as UOL Group Limited, CapitaLand, GuocoLand Limited, and City Developments Limited, along with several others, compete within this dynamic landscape. The historical period (2019-2024) likely saw fluctuations influenced by global economic events and local policy adjustments. Considering the 2025 market value and projected CAGR, a reasonable estimation for market size progression would show consistent growth, potentially experiencing some year-on-year variance based on economic cycles and policy changes. While specific regional data is unavailable, Singapore's relatively compact geography suggests a less pronounced regional disparity in market share compared to larger countries. The continued emphasis on urban planning and development will likely see a sustained high demand for properties across different segments and locations throughout the forecast period. The competitive landscape, marked by both established giants and emerging developers, is likely to remain dynamic, influenced by mergers and acquisitions, and innovation in property development and management. Recent developments include: April 2024: Two historical buildings in the Pearl’s Hill vicinity are set to be demolished to make way for new housing developments. The government plans to build 6,000 new homes in the area over the next decade. The third housing site is located at the intersection of Chin Swee and Outram roads, while the white site sits primarily atop the underground Outram Park MRT station. The 2.9 ha white site, with a plot ratio of 6.3, has condominium units and long-term serviced apartments., March 2024: To meet the demand for homes, the government decided to launch a new housing area in Yishun and may develop a new residential neighborhood at Gillman Barracks. About 10,000 homes will be built in the new Yishun estate of Chencharu, situated near Khatib MRT station. At least 80% will be public housing, with the first Build-to-Order (BTO) project comprising 1,200 units of two-room Flexi to five-room flats to be launched in 2024.. Key drivers for this market are: Increasing Economic Growth, High Demand for Property Boosting the Market. Potential restraints include: Increasing Economic Growth, High Demand for Property Boosting the Market. Notable trends are: Rise in the Residential Segment of the Singapore Real Estate Market.
Facebook
Twitterhttps://data.gov.sg/open-data-licencehttps://data.gov.sg/open-data-licence
Dataset from Urban Redevelopment Authority. For more information, visit https://data.gov.sg/datasets/d_c0c26484c655113b0ab5abaa0a49952b/view
Facebook
Twitterhttps://www.mordorintelligence.com/privacy-policyhttps://www.mordorintelligence.com/privacy-policy
Singapore Luxury Residential Real Estate Market Report is Segmented by Property Type (Apartments & Condominiums, Villas & Landed Houses), by Business Model (Sales and Rental), by Mode of Sale (Primary (New-Build) and Secondary (Existing-Home Resale)), and by District (Central Business District (CBD), Orchard Road and More). The Report Offers Market Size and Forecasts in Value (USD) for all the Above Segments.
Facebook
Twitterhttps://www.technavio.com/content/privacy-noticehttps://www.technavio.com/content/privacy-notice
Singapore Real Estate Market Size 2025-2029
The singapore real estate market size is forecast to increase by USD 62.6 billion at a CAGR of 4.6% between 2024 and 2029.
The market is witnessing significant growth, driven primarily by the burgeoning demand for industrial infrastructure. This trend is fueled by the country's status as a global business hub, attracting numerous multinational corporations seeking to establish a presence. Concurrently, marketing initiatives in the real estate industry are gaining momentum, with developers increasingly adopting innovative strategies to differentiate their offerings and cater to diverse customer segments. However, this market landscape is not without challenges. Regulatory uncertainty looms large, with ongoing debates surrounding potential changes to property cooling measures and land use regulations. These uncertainties could deter investors and developers, potentially hindering market growth. As such, navigating the complex regulatory environment and staying abreast of policy developments will be crucial for companies looking to capitalize on opportunities and mitigate risks in the Singapore Real Estate market.
What will be the size of the Singapore Real Estate Market during the forecast period?
Explore in-depth regional segment analysis with market size data - historical 2019-2023 and forecasts 2025-2029 - in the full report.
Request Free Sample
The Singapore real estate market exhibits dynamic activity in various sectors. The sub-sale market experiences continuous fluctuations, influenced by property valuation models and market forecasting. Property law plays a crucial role in real estate financing and collective sales, including en bloc and strata title transactions. Property investment funds and real estate syndication provide financing options for freehold and leasehold properties. Real estate litigation arises from property disputes, necessitating ethical conduct in property management services. Proptech adoption streamlines property search engines and portfolio management, while property tax incentives stimulate investment. Rental management services and property insurance mitigate risks in the diverse real estate landscape. Property market trends encompass master plans, property crowdfunding, and real estate marketing strategies.
How is this market segmented?
The market research report provides comprehensive data (region-wise segment analysis), with forecasts and estimates in 'USD billion' for the period 2025-2029, as well as historical data from 2019-2023 for the following segments. AreaResidentialCommercialIndustrialMode Of BookingSalesRental and leaseTypeLanded houses and villasOffice spaceApartments and condominiumsStore spaceOthersPriceMid-tierEntry-levelLuxuryGeographyAPACSingapore
By Area Insights
The residential segment is estimated to witness significant growth during the forecast period.
The Singapore real estate market encompasses various sectors, including residential, commercial, and industrial properties. The residential segment, comprised of apartments, condominiums, single-family homes, and other living arrangements, experiences significant demand due to population growth and the country's robust economy. Urban renewal projects and sustainable development initiatives contribute to the transformation of the property market. Commercial real estate, including office buildings and retail spaces, benefit from the thriving economy and increasing business activities. Property management companies employ technology, such as virtual and augmented reality, to enhance the property buying and selling experience. Real estate investment trusts and funds provide opportunities for investors seeking capital appreciation and rental income. Property prices have been on an upward trend due to high demand and limited supply, with vacancy rates remaining relatively low. Property taxes, stamp duty, and government policies influence the market dynamics. Urban planning and infrastructure development are essential for economic growth and smart city initiatives. Real estate developers and proptech startups leverage technology, including artificial intelligence and big data, to streamline property transactions and enhance property management. The rental market, property valuation, and property development are shaped by various factors, including rental yield, housing affordability, and market sentiment. Land use planning and regulations play a crucial role in shaping the real estate landscape. Capital appreciation and rental income continue to attract investors to the market, with mortgage rates influencing affordability. Smart home technologies and green building standards add value to both residential and commercial properties.
Request Free Sample
The Residential segment was valued at USD 100.30 billion in 2019 and showed a gradual increase during the forecast period.
Market Dynamics
Ou
Facebook
TwitterMarket research data and analysis for 2024 Landed Report: Strong Upgrader Demand Drives Landed Home Transaction, Trend Expected to Continue in 2025
Facebook
Twitterhttps://data.gov.sg/open-data-licencehttps://data.gov.sg/open-data-licence
Dataset from Singapore Department of Statistics. For more information, visit https://data.gov.sg/datasets/d_da00b36ca8c831322fa0bb2a3378a476/view
Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Key information about House Prices Growth
Facebook
Twitterhttps://www.marketreportanalytics.com/privacy-policyhttps://www.marketreportanalytics.com/privacy-policy
Singapore real estate market analysis (2019-2033): Discover key trends, market size ($208.63B in 2025), CAGR, leading companies (CapitaLand, City Developments, Frasers Property), and investment opportunities in residential, commercial, and industrial sectors. Explore the projected growth and future outlook.
Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Singapore Property Rental Index: PR: Landed data was reported at 101.000 1Q2009=100 in Sep 2018. This records an increase from the previous number of 100.500 1Q2009=100 for Jun 2018. Singapore Property Rental Index: PR: Landed data is updated quarterly, averaging 103.400 1Q2009=100 from Mar 2004 (Median) to Sep 2018, with 59 observations. The data reached an all-time high of 120.000 1Q2009=100 in Sep 2013 and a record low of 66.100 1Q2009=100 in Jun 2004. Singapore Property Rental Index: PR: Landed data remains active status in CEIC and is reported by Urban Redevelopment Authority. The data is categorized under Global Database’s Singapore – Table SG.EB004: Property Rental Index.
Facebook
TwitterMarket research data and analysis for 3Q 2025 URA Private Residential Report: Private Home Demand Driven by Surge of New Launches
Facebook
TwitterOpen Database License (ODbL) v1.0https://www.opendatacommons.org/licenses/odbl/1.0/
License information was derived automatically
I've been sitting on this for quite a while and it's a project that I'm glad that I attempted because it forced me to learn new things through trial and error in order to enrich the dataset. Like mapping variables based on set/dict of values for the CPI, lease and GNI adjustment columns. Like trying to scrape Google Maps source code and getting blocked from their maps for a while before finding out how to use other geocoders responsibly. Like running multiple simulations of different linreg algorithms and analysing their variance contributions.
Anyway, this dataset can be used to create rich data visualisations or you can try using it for machine learning because of the large sample size in a small geographic area.
The largest file by far, ALL Prices 1990-2021 Mar.csv, contains over 800k rows of transactions of Singapore Housing Development Board (HDB) resale flats. As the name implies, BTO, SERS, HUDC and private housing are not included, though resale DBSS flat transactions are treated as ordinary HDB flat transactions. Many of the columns in the file are calculated columns or mapped columns (based on supplementary information) like the CPI index and lease percentage columns. For the full metadata/glossary of how I derived these terms, see the bottom of this description and/or the file and column descriptions.
Balas Table.csv contains the ratios of leasehold land value to freehold land value for each year of remaining lease, from 1 to 99. This table is used by Singapore Land Authority (SLA) in determining land valuations which affect property value since most land in Singapore is leasehold. As there are some mistakes/anomalies in the dataset with 100 and 101 years, I used the maximum values of 96% ratio when mapping in the 2nd version so please don't use the old version.
This file contains SIngapore's core CPI index value for each month from January 1990 to February 2021 as compiled by MAS. For March 2021 and subsequent future transactions, you have to make estimates and also update this table based on new releases by MAS. For this dataset, I used March 2021=100.4.
Contains all UNIQUE BLOCK addresses, along with their geocoder-supplied full address (inconsistent, many missing) and more importantly, their latitude and longitude coordinates. As there are 9000+ addresses, they were first geocoded using a mix of Photon and Google Maps source code scraping (more accurate but doesn't give full address for quick checking). Then, I manually looked through the addresses and coordinates to find and update all blatantly wrong (outside Singapore or wrong neighbourhood) and most slightly inaccurate (correct neighbourhood and/or street but tagged to wrong block number) for a total of around 1600 addresses, many in Whampoa/Boon Keng, Sengkang, Yishun and Woodlands.
As the name implies, this file contains Singapore's GNI per capita in nominal S$ for the years 1990-2020. For 2021, you have to make an estimate based on the projected economic recovery from COVID-19 until the actual value is released. For this dataset, I used 2021=75000.
This file is my own basic analysis of (numerical) variables that potentially help to determine the final resale price (measured by inflation-adjusted price per square metre). I used 5 linear regression algorithms and tested each variable individually as well as tried to maximise the R^2 using multiple linear regression with as many relevant variables as possible. I also included the correlation matrix between all the variables and that for relevant variables which helps in calculating the incremental contribution to variance for each variable.
As i've shown in the "HDB machine learning.xlsx" workbook, some variables are more influential than others but even the amount of variance contributed changes depending on the conditions applied. Various multiple linear regression models i've tried can only post up to 0.60+ in combined R^2, which means that up to 40% of variance in the inflation-adjusted price per square metre/foot flat prices is essentially just random noise or could have another hidden variable! Perhaps you can try to find another strongly related variable? Some ideas are proximity to MRTs/bus stops, ratio of HDB to private housing, average household size, other housing to population ratio indicators? It's important to consider whether correlated factors are causes or effects as well.
More importantly, do you think you can train a model to post much better numbers than multiple linear regression?
Original columns: `month, town, flat_type, block, street_name, storey_range, area_sqm, flat_model...
Facebook
TwitterMarket research data and analysis for 1H 2025 Landed Shophouse Report: Shophouse Market Slows Amid Higher Prices and Heightened Economic Uncertainty
Facebook
TwitterMarket research data and analysis for Chencharu Close – Government Land Sale Site Analysis
Not seeing a result you expected?
Learn how you can add new datasets to our index.
Facebook
Twitterhttps://data.gov.sg/open-data-licencehttps://data.gov.sg/open-data-licence
Dataset from Urban Redevelopment Authority. For more information, visit https://data.gov.sg/datasets/d_f65e490a8ad430f60a9a3d9df2bff2a0/view