Transforming the Generational Opportunity in Real Estate Investing
Transforming the Generational Opportunity in Real Estate Investing
To some savvy investors, the current real-estate market represents a generational investment opportunity. The persistence of remote and hybrid work arrangements, coupled with a higher interest rate environment, has fundamentally altered the demand and financing for traditional office space, creating a ripple effect throughout the commercial real estate sector.
The shift is illustrated by a current national office vacancy rate of 19.4%, with several major metropolitan areas reporting even more dramatic figures in the mid to upper 20% range. In-office occupancy continues to hover around 50% in most major cities, with some falling well below this mark, underscoring the fact that many companies simply don’t need – or utilize – the space they once did. As lease renewals come up, we should therefore expect to see a marked reduction in conventional office floor space, giving way to hoteling and hot-desk facilities that can accommodate an oversubscribed hybrid workforce.
For commercial property owners, this softening demand is likely to exert downward pressure on rents and, of course, property values. The quality of maintenance and services at underutilized properties is also likely to take a hit as owners seek to cut expenses, further reducing the appeal of these properties to prospective tenants. In this environment, I would anticipate an increasing number of distressed sales and foreclosures, especially as variable-rate mortgages reset over the next two years from the historical lows of 2019-2021.
Yet, amidst these challenges lie unprecedented opportunities.
The oversupply of commercial properties stands in stark contrast to an undersupply of residential and affordable housing units in many regions: a dichotomy that sets the stage for a reshaping of our urban and suburban landscapes. Despite recent price softening in some locations, the residential market continues to trade at a significant premium compared to pre-pandemic levels. This disparity opens the door for innovative investors to explore rezoning and conversion of underutilized, or flat out underwater commercial properties into much-needed residential spaces.
Additionally, the rise of new technologies like AI is driving expansion into infrastructure sectors like data centers with proximal access to reliable, cheap, and possibly green sources of power. Further, ecommerce continues to expand and complement, if not supplant brick-and-mortar storefronts. This secular shift in consumer behavior demands an increase in warehouses and logistics centers near transportation hubs.
Let’s pull on that thread a bit more…
Once we get past the clear demand for such infrastructure projects, we must further appreciate that we are in the midst of the next Industrial Revolution and that the full impact of these tectonic shifts on the workforce has yet to be realized. For example, as certain jobs are replaced by AI, where will displaced personnel land in terms of career, wages, and location, and how will that reverberate throughout the real-estate sector?
Simply put, the pace of change, complex economic relationships, and information overload demands a more data-driven approach to modern real estate investing. Stale, infrequent valuations based on gut instinct and backwards-looking appraisals are simply not enough to effectively manage a real estate portfolio in today’s dynamic landscape.
Here, I believe the convergence of alternative data sources and artificial intelligence (AI), in particular, is poised to revolutionize every aspect of the real estate investment process, from property identification to exit strategies. This transformation promises to unlock unprecedented value, mitigate risks, and optimize returns across various property types and markets.
PROPERTY IDENTIFICATION AND PURCHASE
The first step in any real estate investment, of course, is to identify and acquire the right properties. Traditionally, this process relied heavily on local market knowledge, personal networks, and gut instinct. While these factors still play a role, the introduction of alternative data sources and AI has dramatically expanded the scope and precision of property identification.
Here, AI enables investors to analyze a wealth of data previously unavailable or difficult to access. Satellite imagery, foot traffic patterns, and social media sentiment can now be processed to identify patterns and opportunities that might escape human analysis.
For global diversification strategies, AI can help to identify investment opportunities and trends outside of one’s own backyard. This global perspective enables investors to identify emerging real estate hotspots, compare neighborhoods across different cities, and consider multicultural sensitivities, all while navigating the complexities of cross-border investments by analyzing legal and regulatory frameworks, tax implications, and currency risks.
Perhaps the most pressing immediate concern in the current market is the aforementioned impact of rising interest rates on underutilized commercial real estate investments.
Many properties, particularly those with low occupancy rates, face the prospect of lower rent-rolls and higher mortgage payments as rates reset over the next two years. This is surely not a recipe for success! AI models can analyze loan terms, occupancy trends, and market conditions to identify properties that may be at risk of default or distressed sales, highlighting attractive opportunities for investors with patient capital.
Moreover, AI algorithms can help predict property value appreciation (or depreciation) by combining visual data with local economic indicators and demographic trends. This technology can also be used to identify undervalued properties or off-market opportunities, while optimizing bidding strategies and streamlining due diligence processes.
REZONING AND DEVELOPMENT: UNLOCKING HIDDEN POTENTIAL
As cities evolve and adapt to changing demographics and economic conditions, the ability to repurpose existing properties becomes increasingly valuable.
AI algorithms can be developed to analyze zoning regulations, historical rezoning patterns, political landscapes, and community sentiments to predict the likelihood of successful rezoning applications. This is particularly relevant in the context of converting underutilized commercial properties, such as aging office buildings or struggling shopping malls, into much-needed residential spaces.
For example, machine learning models can assess the potential for converting a low-occupancy office building into a mixed-use development with residential units. These models can evaluate factors such as local housing demand, proximity to public transportation, existing infrastructure, and even the architectural feasibility of the conversion.
Moreover, AI can help investors navigate the complex regulatory landscape associated with rezoning. By analyzing successful rezoning applications and their associated documentation, AI systems can assist in preparing compelling proposals that address likely concerns and highlight community benefits.
The potential for AI in this area extends well beyond just identifying opportunities, however. Once a rezoning project is underway, AI can be used to optimize the development process by forecasting construction costs, predicting potential delays, and even suggesting design modifications that could increase the project’s profitability or sustainability.
CONSTRUCTION AND RENOVATION: OPTIMIZING COSTS AND TIMELINES
In the realm of construction and renovation, AI and data-driven processes can be game changers. From cost estimation to project management, these technologies can help investors minimize risks and maximize returns on their development projects. AI can also be used to analyze market trends, tenant preferences, and property-specific data, helping to drive design decisions and improvements that will maximize the property’s value and appeal to potential buyers or tenants.
Machine learning algorithms can also analyze historical construction data, current material prices, labor market conditions, supply pipelines, and even weather patterns to provide highly accurate cost estimates and timeline projections. These models can be continuously updated with real-time data, allowing for dynamic adjustments as conditions change.
AI-powered project management tools can optimize construction schedules, allocate resources efficiently, and identify potential bottlenecks before they occur. By simulating thousands of possible scenarios, these systems can suggest the most efficient path to project completion, potentially saving millions in large-scale developments.
Furthermore, computer vision technology can be used to monitor construction progress in real-time, comparing actual progress to planned timelines and identifying deviations early. This allows for prompt interventions and helps keep projects on track.
OWNER AND TENANT ACQUISITION: MATCHING PROPERTIES WITH PEOPLE
Once a property is ready for occupancy, the next challenge is finding the right owners or tenants. Here, too, AI and alternative data will revolutionize traditional approaches.
AI algorithms can analyze vast amounts of demographic data, employment trends, and lifestyle preferences to identify potential buyers or renters most likely to be interested in a specific residential property. This goes beyond simple factors like income and family size to include nuanced preferences such as commute patterns, school district preferences, and even social values.
In the commercial sector, AI can match businesses with optimal locations based on factors such as foot traffic patterns, nearby amenities, and the presence of complementary businesses. For instance, a retail AI model might identify that a particular location is ideal for a boutique coffee shop based on the demographics of local residents, the lack of similar offerings in the area, and the presence of complementary businesses that could drive foot traffic.
For large-scale multi-family or commercial properties, AI can help to identify an optimal tenant mix to maximize overall property value and minimize vacancy rates. By analyzing the interplay between different types of tenants, these systems can suggest combinations that create vibrant, stable communities in residential settings or synergistic business ecosystems in commercial properties. Of course, It’s crucial to emphasize that AI models used for such functions must be continuously monitored and evaluated for potential unfair biases, as these could perpetuate or exacerbate existing inequalities in housing and property markets if left unchecked.
Finally, AI-powered platforms can help to streamline the leasing or sales process by automating paperwork, conducting initial screenings, and even providing virtual property tours.
ONGOING PROPERTY MANAGEMENT AND MAINTENANCE: PROACTIVE AND PREDICTIVE APPROACHES
The application of AI and new data sets in real estate doesn’t end with acquisition and occupancy. In fact, some of the most impactful current applications are in the day-to-day management and maintenance of so-called “smart buildings.”
Predictive maintenance, powered by AI analysis of IoT sensor data and historical records, can anticipate when equipment is likely to fail or require servicing. This proactive approach reduces downtime and repair costs while enhancing tenant satisfaction.
AI can also be used to optimize energy consumption in large multi-unit properties by learning occupancy patterns and adjusting systems accordingly. For property managers, AI-powered platforms can automate many routine tasks, freeing up time for more complex issues and strategic planning.
Moreover, AI can provide valuable insights into tenant behavior and satisfaction. For example, by analyzing patterns in maintenance requests, rent payment history, and even social media sentiment, AI can help identify at-risk tenants early, allowing for proactive interventions to improve retention rates.
RISK MANAGEMENT: NAVIGATING UNCERTAINTY WITH DATA
Risk management is another critical area where AI and alternative data are providing unprecedented insights. From macro-economic and market-level risks to property-specific challenges, AI is helping investors navigate uncertainty with greater confidence.
Beyond standard property-specific financial measures, AI models can be used to assess the potential impact of various scenarios, such as continued remote work trends, new governance, or changes in consumer behavior, on different property types and locations.
In the realm of climate change, AI can predict the likelihood and potential impact of natural disasters on specific properties, informing investment decisions, resilience planning, and insurance coverage. By simulating thousands of potential outcomes, investors can stress-test their portfolios and develop more robust risk mitigation strategies.
NLP algorithms can also be used to monitor changes in local, state, and federal regulations that might introduce new risks and expenses that may impact real estate investments. By analyzing legislative documents, news articles, and regulatory filings, these systems can provide early warnings of potential regulatory challenges or opportunities.
EXIT STRATEGIES: TIMING THE MARKET WITH PRECISION
Finally, knowing when to exit an investment is just as crucial as knowing when to enter. Here, too, AI is providing investors with powerful tools to optimize their exit strategies.
Machine learning models can analyze a wide range of factors – from macroeconomic indicators and local market trends to property-specific performance metrics – to predict optimal selling windows. These models can incorporate factors such as seasonal variations in demand, upcoming infrastructure projects that might impact property values, employment concentration and structural changes in associated sectors, and even political events that could influence market conditions.
For large portfolios, AI can optimize the sequencing of property sales to maximize overall returns. By considering factors such as tax implications, market correlations, and liquidity needs, these systems can suggest strategies for unwinding positions in a way that balances risk and return.
Moreover, AI can assist in the actual sales process by identifying potential buyers, optimizing pricing strategies, and even predicting which property features are likely to be most appealing to different buyer segments. This targeted approach can help reduce time on market and maximize sale prices.
CONCLUSION
As AI continues to evolve, its impact on real estate investing is likely to grow, potentially leading to new investment strategies, more accurate valuations, and a more transparent and efficient market overall. I believe this represents a significant paradigm shift in how we will approach an age-old asset class. From property identification and acquisition to management and exit strategies, these technologies will provide investors with unprecedented insights and capabilities.
However, it’s important to note that while AI provides powerful tools and insights, successful real estate investing still requires human judgment, local market knowledge, creativity, and a deep understanding of broader economic and social trends.
In this new era of real estate investing, the convergence of human insight and artificial intelligence may well be the key to unlocking unprecedented value and shaping the cities of tomorrow. Ultimately, investors who can effectively leverage AI and alternative data while combining these insights with traditional real estate expertise are likely to have a significant advantage in the years to come.
About Author
Gary Maier is Managing Partner and Chief Executive Officer of Fintova Partners, a consultancy specializing in digital transformation and business-technology strategy, architecture, and delivery within financial services. Gary has served as Head of Asset Management Technology at UBS; as Chief Information Officer of Investment Management at BNY Mellon; and as Head of Global Application Engineering at Blackrock. At Blackrock, Gary was instrumental in the original concept, architecture, and development of Aladdin, an industry-leading portfolio management platform. He has additionally served as CTO at several prominent hedge funds and as an advisor to fintech companies.