The Challenge
A consumer finance company needed better default prediction without sacrificing regulatory transparency. We deployed an explainable ML credit risk model on Databricks — improving default prediction by 15% with full model interpretability. The organization faced mounting pressure from leadership to modernize. Existing systems and processes had reached their limits — manual workarounds consumed staff time, data quality was unreliable, and decision-makers lacked the visibility they needed.
The finance industry added specific complexity: regulatory requirements (SOX, PCI-DSS, GLBA, Basel III) demanded auditable processes and governance. Any technology change needed to maintain compliance continuity while delivering measurable improvement.
Previous attempts had stalled — either the technology was too complex for the internal team to maintain, the vendor didn't understand finance industry requirements, or the project scope expanded until timelines became unrealistic. This time, the sponsor demanded a phased approach with measurable results within one quarter.