7 Ways Data Analytics Powers Real Estate

Data analytics enables real estate companies to identify trends and make more informed decisions. Here are seven ways data can benefit agents, developers, and buyers.

Data collection and analysis affect almost every aspect of the real estate industry. Traditional business models are evolving as more companies use predictive analytics and algorithms to identify trends and make more informed decisions.  

Let’s take a closer look at how data can help real estate companies analyze and understand the industry. 

1: Geographic Information Systems

Real estate managers can collect, store, and visually display location intelligence, making property hunting easier for buyers and investors. They can quickly assess a location’s profitability using data analytics and machine learning algorithms, taking into account ratings, traffic, occupancy, rental income, and ROI. 

2: Competitor Analysis

In any industry, you should be aware of what your competitors are doing. Real estate investors can use data analytics to research their major competitors and identify the factors that contribute to their success. Big data analysis can provide insight into competitors’ products, services, sales, and marketing tactics, allowing them to identify a unique value proposition and differentiate their products. 

3: Predicting Property Potential

When making a real estate investment, it is critical to have reliable information. Real-time analysis of financial and market data, combined with local building regulations, can provide developers with a more complete picture of the land they wish to purchase. Automating preliminary property analysis with AI can assist developers in determining the potential ROI of a plot of land.

Data can also reveal trends that indicate a higher return on investment and areas that have appreciated significantly in value.

4: Building Management

The Internet of Things (IoT) can be a valuable tool in real estate management. Data from sensors in home appliances and heating and cooling systems can be used for preventative maintenance, alerting property managers to failures and scheduled maintenance requirements before they become an issue. This type of prescriptive analytics improves tenant experience while lowering costs. 

5: Advanced Search

Customers must have specific and accurate information when purchasing real estate. When purchasing a property, data analytics enables realtors and customers to conduct advanced searches using criteria such as location, neighborhood, and crime rate. Before making an offer, users can obtain detailed information on nearby grocery stores, shopping malls, restaurants, and schools, as well as the general safety of the area.

6: Predicting Consumer Behavior

Data analytics can also predict customer behavior. Agents can predict when someone is ready to sell by analyzing data such as mortgage payments, home equity, property age, and length of ownership. Such predictive analytics can provide actionable insights into trends indicating property potential and higher-quality leads. 

7: Modeling Building Performance

To make sound purchasing decisions, investors require detailed information on rental rates, vacancy rates, energy consumption, and maintenance costs. They also need trend data on employment rates and consumer behavior to make commercial investment decisions. Using this information, developers and investors can create 3D models that help them maximize and use space more efficiently.

Powerful Unstructured real estate data analytics

Investing in the right storage solutions is critical for real estate, a dynamic industry that relies on quick analysis of unstructured data like images, videos, and social media content. Traditional storage solutions cannot efficiently categorize and manage this type of data in real estate data analytics Systems must be more powerful to leverage complex housing market data, particularly on a national scale and at the speeds that consumers expect.

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