Traditional credit models rely on limited, historical data like FICO scores, creating a significant thin-file problem that excludes millions of creditworthy individuals and small businesses. This results in lost revenue from declined applicants and systemic bias. Furthermore, static models fail to adapt to real-time economic shifts, increasing default risk and capital reserve requirements. Manual underwriting processes are slow, costly, and struggle to scale, creating a major bottleneck for growth.













