The Tech-Driven Revolution: AI's Transformative Journey in Commercial Real Estate
This episode of the Commercial Real Estate Daily podcast is brought to you by CRE Launch Pro. If you’re looking to take your investing skills to the next level with online courses, group coaching calls, and a community of other investors, head on over to www.CreLaunchPro.com
Episode Transcript:
In the realm of commercial real estate, a technological wave is surging, ushering in an era dominated by artificial intelligence and machine learning. The AI/machine learning sector is poised for a staggering 40% growth this year, projecting a global revenue of $16 trillion by 2030, a monumental leap from the $51 billion recorded in 2022.
The commercial real estate landscape thrives on precise data for informed investment decisions. Analytics, whether applied to mitigate risks, assess pricing models, or enhance tenant experiences, stand as a cornerstone for the industry. The incorporation of machine learning and artificial intelligence into commercial real estate data is heralded as a transformative game-changer.
While the infusion of machine learning tools into daily CRE operations promises innovation, the challenge lies in how CRE firms navigate through a burgeoning array of options and approaches in the market while staying true to their key performance indicators.
Mike Sobolik, North American strategist at Invesco Real Estate, highlights that while dealing with data in CRE is not new, the contemporary availability of data science tools presents a plethora of options that could potentially distract data teams and executive leaders. In this rapidly evolving domain of data science, Sobolik emphasizes the importance of aligning technology development with the overarching goals and purpose of the business.
For Invesco, the North Star guiding their endeavors is improved investment performance. However, Sobolik notes that different CRE businesses, such as brokerages or development firms, guided by distinct purposes and missions, will have different North Stars. Key performance indicators then become the navigational tools steering the firm toward its overall objectives.
According to Sobolik, data projects should be meticulously designed to align with the firm's main purpose. Extraneous data projects that lack alignment with the firm's core objectives, except those dedicated to research and development, can be counterproductive.
Nicholas Buss, managing director of strategic analytics at Invesco Real Estate, underscores the significance of fostering a collaborative, "no silos" data environment where data scientists and business practitioners work in tandem. Effective communication, mutual respect, and shared goals are pivotal for the success and actionability of data tools within a company.
In a field where data scientists may be well-versed in analytics while others are more inclined toward sales or operations, Buss advocates for maintaining an open channel for feedback. This "keeping humans in the loop" approach ensures that data models are not only effective but also align with the needs and understanding of actual users.
While Sobolik emphasizes the role of key performance indicators in rendering data usable, he underscores the importance of making data digestible for executive teams focused on the big picture. Data scientists, according to Sobolik, need to distill their work into simple and visually comprehensible decision metrics, steering clear of excessive technical output.
Sobolik acknowledges the inherent limitations of CRE data models, shaped by the distinct characteristics of each business cycle. At Invesco Real Estate, a probabilistic framework is favored over forecasts, with the data science team focused on relative correctness rather than absolute precision. The aim is to estimate a range of outcomes, recognizing that human judgment will always play a pivotal role.
In essence, the fusion of AI and machine learning with commercial real estate data promises a transformative journey. As the industry charts this path, aligning technology with purpose, fostering collaboration, and distilling data into actionable insights emerge as the guiding principles for a robust and practical approach to navigating the dynamic landscape of commercial real estate.
This is Tyler Cauble, Signing off