Develop and validate credit risk models for the retail mortgage portfolio using statistical and machine learning techniques to assess borrower creditworthiness and forecast defaults. Collaborate with product, risk, and engineering teams to implement models, inform policy decisions, and ensure model governance and regulatory compliance.
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