Top Benefits
About the role
Role Overview As a Senior Credit Risk Modeling – Data Science, you will be an individual contributor responsible for developing, validating, and maintaining predictive credit risk models for our unsecured personal lending products. You will work closely with data science, risk, and business teams to optimize risk strategies and enhance the overall credit decisioning framework.
Key Responsibilities Lead the development of credit risk predictive models (e.g., PD, LGD, EAD, propensity to default, credit scoring models) for lending business. Conduct in-depth data analysis and feature engineering using internal and external data sources to improve model performance. Validate, back-test, and monitor existing credit risk models to ensure predictive accuracy and regulatory compliance. Partner with business and operations teams to integrate model outputs into lending strategies and decisioning processes. Develop and maintain documentation for model development, validation, and governance purposes in line with regulatory expectations. Provide insights on portfolio risk trends, early warning indicators, and potential loss drivers. Mentor junior analysts and contribute to building a strong modeling and analytical culture within the team.
Required Qualifications & Experience Bachelor’s or Master’s degree in Statistics, Mathematics, Economics, Data Science, or a related quantitative field. 5–7 years of experience in credit risk modeling within a lending environment. Strong expertise in statistical modeling, machine learning, and predictive analytics (e.g., logistic regression, decision trees, gradient boosting, neural networks). Proficiency in programming languages such as Python, R, or SAS; SQL experience essential. Solid understanding of credit risk concepts, portfolio management, and lending business processes. Excellent problem-solving, communication, and stakeholder management skills. Preferred Skills
Preferred Experience with cloud-based data platforms or modern analytics tools. Familiarity with alternative data usage in credit risk models. Exposure to model governance and audit processes in regulated financial institutions. Experience with model validation frameworks and regulatory compliance requirements in Canada (OSFI) or equivalent international standards.
What We Offer Competitive base salary + performance bonus + equity package. Fast-growth startup environment with direct impact on product and P&L. Flexible work model (hybrid/remote options). Learning budget, health benefits, and team culture focused on data and innovation.
Not the right fit? Search for Data Scientist jobs in Toronto, Ontario, Canada
About Qfin
Founded in 2016, Qfin is an AI-driven fintech platform. Guided by its mission to transform financial services through cutting-edge technology, the company focuses on creating user-centric value, empowering its partners, and energizing the broader financial ecosystem, all in support of the digital transformation of global financial industry.
Similar Jobs
Top Benefits
About the role
Role Overview As a Senior Credit Risk Modeling – Data Science, you will be an individual contributor responsible for developing, validating, and maintaining predictive credit risk models for our unsecured personal lending products. You will work closely with data science, risk, and business teams to optimize risk strategies and enhance the overall credit decisioning framework.
Key Responsibilities Lead the development of credit risk predictive models (e.g., PD, LGD, EAD, propensity to default, credit scoring models) for lending business. Conduct in-depth data analysis and feature engineering using internal and external data sources to improve model performance. Validate, back-test, and monitor existing credit risk models to ensure predictive accuracy and regulatory compliance. Partner with business and operations teams to integrate model outputs into lending strategies and decisioning processes. Develop and maintain documentation for model development, validation, and governance purposes in line with regulatory expectations. Provide insights on portfolio risk trends, early warning indicators, and potential loss drivers. Mentor junior analysts and contribute to building a strong modeling and analytical culture within the team.
Required Qualifications & Experience Bachelor’s or Master’s degree in Statistics, Mathematics, Economics, Data Science, or a related quantitative field. 5–7 years of experience in credit risk modeling within a lending environment. Strong expertise in statistical modeling, machine learning, and predictive analytics (e.g., logistic regression, decision trees, gradient boosting, neural networks). Proficiency in programming languages such as Python, R, or SAS; SQL experience essential. Solid understanding of credit risk concepts, portfolio management, and lending business processes. Excellent problem-solving, communication, and stakeholder management skills. Preferred Skills
Preferred Experience with cloud-based data platforms or modern analytics tools. Familiarity with alternative data usage in credit risk models. Exposure to model governance and audit processes in regulated financial institutions. Experience with model validation frameworks and regulatory compliance requirements in Canada (OSFI) or equivalent international standards.
What We Offer Competitive base salary + performance bonus + equity package. Fast-growth startup environment with direct impact on product and P&L. Flexible work model (hybrid/remote options). Learning budget, health benefits, and team culture focused on data and innovation.
Not the right fit? Search for Data Scientist jobs in Toronto, Ontario, Canada
About Qfin
Founded in 2016, Qfin is an AI-driven fintech platform. Guided by its mission to transform financial services through cutting-edge technology, the company focuses on creating user-centric value, empowering its partners, and energizing the broader financial ecosystem, all in support of the digital transformation of global financial industry.