Real Estate Analytics
Full Guide
Since 1989 in data analytics, ScienceSoft builds custom real estate analytics systems that provide a 360-degree view of business performance and drive accurate insights for property evaluation and management, service personalization, informed investment decisions, market analysis, and more.
Real Estate Analytics: The Essence
Real estate analytics is needed to drive insights from property, customer, and market data and use these insights to make informed decisions on buying, selling, developing, and managing property. Custom real estate analytics solutions allow companies to provide their clients with highly relevant property options, identify profitable investment opportunities, oversee construction and property management, and stress-test business strategies using what-if models.
Who can benefit from real estate data analytics
Real estate brokerages, property investors and insurers, real estate appraisal firms, property management companies, real estate developers, urban planners and government agencies.
Essential integrations
Real estate database software, property research and internet listing services, CRM, accounting software, marketing management software, social media and customer review platforms.
Costs
$100,000–$600,000, depending on analytics complexity and data sources.
Annual ROI
Up to 440%.
Key Features of Real Estate Analytics
Below, our experts list analytics features that our customers from different areas of real estate request. The actual capabilities will differ depending on your business specifics and analytics needs.
A Sample Real Estate Analytics Dashboard
See how business intelligence and analytics solutions can help navigate the variety of real estate data in a single interactive dashboard. Multiple filters make it easy to find property that corresponds to the required parameters, while clear graphs allow for insightful comparison of the chosen items. The sample also demonstrates the convenience of visualizing property objects on the map.
Essential Integrations for Real Estate Analytics
Integrations for real estate analytics largely depend on the business type. Below, we provide examples of both universal and business-specific systems that can be integrated with analytics software.
Property research and internet listing services
E.g., Zillow, local MLS services.
- To enable property value analysis.
- To get insights into competitor activity and enable comparative market analysis.
- To build and adjust pricing and investment strategies.
Geographic information systems (GIS) and public agencies
E.g., Google Maps, Esri, USGS, OpenStreetMap.
- To get location-specific insights and enable their visualization on maps.
- To support spatial analysis.
- To enable customer segmentation and analyze customer preferences.
- To get AI-powered recommendations on customer experience personalization.
Social media and customer review platforms
- To analyze customer sentiment towards own and competitor services.
- To get insights into revenue generation and cash flow management.
- To enable accurate revenue and expense recording in the general ledger.
Property management system
- To get insights into rental property performance.
- To enable predictive property maintenance.
Regulatory agencies databases
- To support compliance with zoning, land use, environment, and accessibility standards regulations (e.g., Clean Air Act, ADA for the US).
Construction management platform
- To enable continuous project performance monitoring.
- To track adherence to the defined budget and timeline.
What Can Increase the Efficiency of Real Estate Analytics
Advanced customer-property matching
To offer customers highly relevant property options, an analytics solution should have matching mechanisms supported by data from multiple customer touchpoints. This data includes communication logs, website behavior and search history, historical matching results for same-type customer segments, and more.
Visualization of location-specific data
Since most real estate data is closely bound to a specific location, a good practice is to reflect location-related insights right on the maps. E.g., visualizing crime rates and natural hazard levels to quickly estimate risk factors or representing neighborhood demographics data to get a clear idea of the target audience in the area.
User-centric dashboards
An analytics solution should feature dashboards tailored to the unique responsibilities of different employees. For example, real estate agents are likely to appreciate capabilities for listing, sales, and lead tracking to facilitate pipeline management, while property managers may need lease expiration alerts and features for maintenance request monitoring.
Costs and ROI of Real Estate Analytics Implementation
The cost of real estate analytics implementation can vary from $100,000 to $600,000+ and depends on the complexity of analytics features, the quality and amount of data to be integrated, the need for big data and ML/AI techs, and other factors.
Data analytics in real estate can bring the annual ROI of up to 440%, with some of the drivers including capabilities for predictive property maintenance, market analysis, analytics of location-specific factors, and risk estimation.
$100,000–$150,000
A basic solution that enables:
- KPI monitoring across 1–2 analytics areas, e.g., finance.
- Integration with 1–2 key data sources, e.g., a real estate database.
- Batch data processing (e.g., every 24 hours).
- Scheduled and ad hoc reporting.
$150,000–$300,000
A solution of medium complexity that enables:
- KPI monitoring across multiple business areas, e.g., customer management, construction management, etc.
- Integration with 3–7 data sources.
- Batch and real-time data processing.
- Root-cause detection and forecasts based on non-neural-network ML models.
- Automated reporting to regulators.
$300,000–$600+
An advanced solution that enables:
- KPI monitoring across all business areas.
- Integration with multiple internal and external systems, including blockchain-based software.
- Real-time big data analytics (e.g., for dynamic marketing content optimization).
- Root-cause analysis and forecasting based on advanced ML models.
- AI-powered personalization recommendations.
- Custom reporting in regulatory-compliant formats.
Want to know a more precise figure?
Use our free online calculator to describe your case and get a custom quote.
Benefits of Real Estate Analytics
Up to a 460% lead capture increase
due to customer segmentation and offer personalization.
Successful identification of up to 70% of customers
who are ready to buy property due to historical data analytics.
Up to a 90% reduction in building repair costs
due to preventive maintenance.
Up to 6% savings in construction costs
due to AI-powered financial modeling.
Up to 35% savings in cooling and heating costs
due to sensor data analytics.
Consider ScienceSoft for Real Estate Analytics Implementation
ScienceSoft's #1 priority is to drive projects to their goals. With an in-house PMO and established project management practices, we achieve project success regardless of time and budget constraints, as well as changing requirements.
About ScienceSoft
ScienceSoft is an IT consulting and software development company headquartered in McKinney, Texas. Since 1989, we help companies across 30+ domains build tailored analytics solutions to get reliable insights on customer acquisition and management, business growth opportunities, and risk mitigation. Being ISO 9001- and ISO 27001-certified, we can guarantee top software quality and complete security of our customers' data.