Description
Key Responsibilities
Credit Strategy & Underwriting
- Develop and optimize credit policies, underwriting rules, approval thresholds, credit limits, and pricing for personal loans.
- Conduct deep dive analysis on application fraud, firstparty risk, and early delinquency signals.
- Review complex manual underwriting cases and set escalation frameworks.
Portfolio Monitoring & Risk Analytics
- Perform vintage analysis, roll rate analysis, and cohort forecasting to predict credit losses.
- Track core risk KPIs including but not limited to: approval rate, default rates, day past due, roll rates, and loss given default.
- Build automated dashboards and weekly/monthly risk MI for leadership and investors.
- Identify emerging risks, early warning indicators, and portfolio concentration; recommend mitigation actions.
- Conduct stress testing and scenario analysis under changing economic conditions.
Testing & Optimization
- Design and measure A/B tests for credit rules, data sources, and customer segments.
- Evaluate new alternative data to improve predictiveness.
Compliance & Governance
- Ensure alignment with local lending regulations, fair lending, and responsible lending standards.
- Support internal audit, risk reviews, and investor due diligence on credit policies and performance.
- Document policies, decision logs, and model governance materials.
CrossFunctional Partnership
- Advise product and engineering on credit risk features and decision engine logic.
- Partner with operations to streamline verification and reduce friction.
- Support funding partners and capital markets with portfolio risk reporting.
Required Qualifications & Experience
- Bachelor’s degree in Finance, Economics, Statistics, Mathematics, Business, or a quantitative field.
- 5–7 years of handson credit risk experience in personal loans, consumer finance, fintech, or NBFC/bank retail lending.
- Proven track record building credit strategies, or underwriting policies for lending business.
- Strong SQL and Excel proficiency; experience with Python/R or analytical tools (SAS, Tableau, Power BI) is required.
- Deep understanding of risk metrics: PD, LGD, EAD, vintage analysis, roll rates, loss forecasting.
- Experience with A/B testing, decision engines, and credit bureau data.
- Knowledge of regulatory compliance in consumer lending (local laws, data privacy, fair lending).
Preferred Skills
- Exposure to alternative data and machine learning in credit decisioning.
- Strong stakeholder management and presentation skills.
- Experience in an Ontario fintech startup or high-growth alternative lender.





