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Timestamps are as accurate as they can be but may be slightly off. We encourage you to listen to the full context.
This episode explores the $13 trillion U.S. mortgage market and examines why the industry has been slow to adopt new technology despite its massive scale. The discussion features a16z general partner Angela Strange interviewing Tim Myopoulos (former CEO of Fannie Mae and president of Blend), Mike Yu (CEO of Vesta), and Andrew Wang (CEO of Valid) about the structural challenges facing mortgage technology and how new infrastructure could transform the experience for both consumers and lenders. (01:24)
Former CEO of Fannie Mae and president of Blend, Tim has unique insights from leading one of the largest government-sponsored enterprises in housing finance and later working at a mortgage technology company. He oversaw the launch of innovative products like Day One Certainty during his tenure at Fannie Mae.
CEO of Vesta, a company building modern loan origination systems for mortgage lenders. Previously worked at Blend alongside Tim, where he gained deep experience in mortgage technology and identified the critical need for updated core infrastructure in the industry.
CEO of Valid, which provides mortgage servicing technology and operates as a subservicer. Previously worked as a mortgage investor, giving him firsthand experience with the data and operational challenges in mortgage servicing that led him to start his company.
The U.S. housing finance system is backed by the government through GSEs like Fannie Mae and Freddie Mac, making it highly regulated and standardized. Tim explains that this structure, while successful at attracting global capital, limits innovation because "if you try to even change one word of the loan documents when you go to a mortgage closing, you're not going to get the loan." (05:25) This standardization requirement means there's little room for the product innovation seen in other consumer credit markets like credit cards or auto loans.
Legacy software systems running on decades-old technology drive up origination costs, which get passed directly to consumers through higher mortgage rates. Andrew emphasizes that "when the cost to originate goes up, that fundamentally gets passed through in the form of higher mortgage rates, which means conversely, if you can lower that cost to originate, then you've also made homeownership a little bit more affordable." (08:26) The inefficiency also creates stressful experiences where borrowers don't know their application status.
Both Mike and Andrew chose to rebuild entire systems rather than build on top of existing infrastructure. Mike learned from his experience at Blend that you "couldn't drive the fundamental change in the back office that you wanted to change without going in and replacing the whole LOS." (29:43) Many existing systems have database-level constraints, such as only allowing one person to work in a loan file at a time, which requires complete architectural overhauls to fix.
Modern technology enables lenders to access real financial data rather than relying on proxies. Tim describes how "it's possible to actually deliver people's digital bank account statements to lenders" allowing them to "see exactly how much money is coming into someone's account every month and how much money is leaving their account." (25:33) This approach could expand credit access to nontraditional borrowers like gig workers and independent contractors while reducing risk.
Rather than competing with AI research companies, mortgage lenders should focus on positioning themselves to benefit from AI advances. Mike advises that lenders should ask "would someone who can make $100 million from Meta really be in the mortgage industry at all" when considering building their own AI capabilities. (43:35) The key is partnering with technology providers who will continuously improve their AI offerings while focusing on having clean data and proper infrastructure to leverage these tools effectively.