With so much talk of how generative AI is set to make an impact across industries, it is easy to understand why some will take these promises with a pinch of salt. The noise surrounding AI and its potential can be deafening, as firms adopt the badge to bolster their marketing efforts, making it difficult to separate hype from reality. However, when applied thoughtfully and to a well-defined problem, AI has the potential to transform the credit and loans industry by revolutionising how it reads, comprehends and summarizes vast swathes of data.
Credit generates a constant stream of data and requires close management at every point in its lifecycle. This applies to banks and credit issuers looking to lend, borrowers requiring tools and information to keep on top of their payments, managers ensuring loan books are stable, and investors mitigating portfolio risks. Digitisation and the rise of online banking have been vital in improving the availability of data. However, without an army of people extracting, processing, and analysing this data, much of it has historically gone to waste.
Despite its potential, according to US mortgage lender Fannie Mae’s Mortgage Lender Sentiment Survey 2023, only 7% of businesses in the mortgage space deployed AI last year, which leaves a huge amount of room for improvement. However, while transformative, on its own, AI is a blunt instrument. Credit market participants must think intelligently about how to apply the technology. The question all firms should be asking is: how can the technology add concrete value to our stakeholders?
Due to the complexity of the market and variety of stakeholders, it is impossible to single out an individual transformative impact of AI. The technology’s potential lies in applying it alongside large language models to the universe of mortgage industry data in ways that serve specific groups. By taking a step back to understand these groups’ fundamental needs and challenges, we can identify four key areas in which AI can change the industry for the better.
The drive to leverage AI is only going to grow alongside the hype. The McKinsey Global Institute recently estimated that across the global banking sector, generative AI could add between $240 and $340 billion in value annually, driven primarily by increased productivity. The credit space is set to reap the same benefits, not just for managers but also for customers and investors.
These sentiments are backed by more than just words. The median size for AI-driven investments has more than tripled since Q1 2023 according to data from Pitchbook, with the average deal in Q1 2024 reaching $8 million as more companies invest in the technology. Knowledge is power in any industry, and attention to detail essential. This is especially true in credit, where individuals’ debts are highly consequential, and risks need to be carefully managed against a challenging economic backdrop.
Carefully implementing AI in specific areas has the potential to meaningfully change the sector by improving the scale and accuracy with which data is analyzed, automating cumbersome processes, and enhancing how stakeholders access information. For example, Pepper Advantage’s operations team has embedded GenAI into its LoanGuard product workflow, which allows them to assess policies specific to various customer groups at speed, helping reduce the turnaround time for loan applications.
This is just one small use case among many, but it demonstrates the value the industry can derive from intelligent and thoughtful use of GenAI technology. This technology is clearly going to evolve further, and it is incumbent on the industry to proactively look for, identify, evaluate how this evolution can be used to advance better outcomes for borrowers. Those who fail to do so risk falling short of their stakeholders’ expectations and, ultimately, falling behind.