Client had a fragmented credit decisioning process with multiple siloed systems, manual data aggregation, and offline policy checks. The process also had high levels of “non-decision” outcomes that required manual expert intervention for investigation leading to lengthy decisioning and loan disbursal times and subsequently lower customer satisfaction and lost potential revenue to competition.
Solytics solution allowed the client a singular, more relevant view of the credit worthiness of its customers by utilizing relevant customer attributes like utility bills, bank statements, statement of assets. The ML model also improved the effectiveness of the decisioning process by optimizing the alert ratio, and reducing the overall decisioning time. The final impact was in terms of improved user experience and lower total cost of operations.