Skip to content
Aygul Aksyanova
← Executive profile

Banking

ML-driven credit-line optimisation: multi-million savings

$multi-M annual savingsmulti-fold response uplift
Problem
Rule-based credit-line allocation leaving capital dormant in low-response segments.
Scale
Annual credit-line increase budget; cross-functional initiative across risk, marketing and finance.
Action
Replaced rule-based allocation with propensity ML models and identified 'dead capital' tied up in dormant borrowers, redirecting it to high-propensity segments.
Result
Multi-million-dollar annual savings and a multi-fold uplift in response rates, maximising risk-adjusted return on deployed capital.

Turning analytics into capital allocation decisions is where data stops being reporting and starts moving the P&L.


Want results like these for your organisation?

Let’s talk