A dynamic Credit Monitoring System that lowers Loan-Loss Contingency
Client: Commercial Bank
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Objective
Create an automated system that helps a commercial bank proactively detect borrower stress before delinquency and take well-informed and timely actions for effective mitigation of credit risk.
CRISIL's Solution
Created EWS framework to strengthen credit risk infrastructure and provide triggers to credit officer for timely actions
Identified early warning indicators for transactional data, market data, financial data, industry data and other data
Enabled data sourcing from multiple sources using APIs and Python-based scripts; leveraged machine learning to incorporate news inputs
Cleaned data to ensure harmonization with internal data for further processing.
Ran the harmonized data through an EWS engine for validation against predefined rule-based triggers
Developed support for customizable rules at the user level to generate early warning alerts for timely actions
Client Impact
Dynamic risk classification of the corporate portfolio
Early and informed action for credit officers helped lower loan-loss contingency
Data-driven risk insights to pinpoint stress; information loopback to other functions
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