Data Scientist - Credit & Risk
Divine builds unsecured, stablecoin-based lending products for the 1.4 billion people worldwide who lack access to credit. Its flagship product, Credit, uses progressive trust-building to let borrowers in underserved markets like Nigeria, Colombia, and Argentina access small loans that grow over time, serving everyday borrowers who lack traditional credit history.
Funding
Projects
About Divine
Divine develops financial infrastructure aimed at expanding global access to credit for the 1.4 billion people excluded from traditional finance due to lack of credit history, collateral, or access to affordable underwriting. Its core product, Credit, is an unsecured lending system built on stablecoins that uses progressive trust-building, starting borrowers with small loans that can grow up to $1,000 as they build a repayment history, driving default rates toward zero. Since December 2024, Credit has issued hundreds of thousands of loans to over half a million unique borrowers, who use the funds for essentials like groceries, medicine, and transportation. Borrowers access Credit through a World MiniApp for fast fund requests and disbursement, while liquidity providers supply capital via credit.cash, with funds allocated programmatically and interest rates set algorithmically in real time. Divine's clients are primarily underbanked individuals in emerging markets such as Nigeria, Colombia, and Argentina.
Skills
About the Role
You'll own portfolio monitoring and reporting, research emerging risk trends, and transform borrower behavioral data into actionable guidance that shapes credit strategy and roadmap. While the engineering and research teams own the underlying models, you'll be the person who makes sense of what they're telling us, tracking portfolio health, identifying issues early, and turning insights into clear recommendations for risk strategy and underwriting policy. Over time, this role may expand to drive broader product analytics across the suite of products. You'll work in a hybrid model, in office 3 days per week in San Francisco.
Requirements
- 4+ years of experience in decision science, credit risk analytics, or a closely related quantitative role within fintech or consumer lending
- Deep proficiency in Python and SQL; comfortable owning analyses end-to-end from raw data to recommendation
- Strong understanding of credit risk modeling concepts, including PD/LGD modeling, scorecard development, reject inference, vintage analysis, and risk segmentation
- Demonstrated experience monitoring credit risk metrics and portfolio performance, including loss forecasting and underwriting model improvement
- Proven ability to influence and collaborate with cross-functional teams and senior stakeholders, with a track record of translating analytical findings into accessible, actionable insights
- Experience designing and evaluating experiments (A/B tests, holdout groups, or causal inference frameworks) in a consumer product context
- Comfortable with ambiguity and biased toward action; thrives with minimal oversight and brings strong problem-solving skills and sharp attention to detail
- Experience building or maintaining large-scale data pipelines supporting B2C financial products
- Familiarity with credit bureau data, cash flow underwriting, or alternative data sources in credit model development
- Experience working in emerging markets, ideally on financial products serving everyday consumer needs (microfinance, BNPL, digital lending)
- Strong understanding of DeFi protocol mechanics (lending, yield vaults, ERC4626) and experience with onchain data tooling (Dune, Shovel, Ponder, Goldsky or similar)
- Exposure to regulatory frameworks relevant to consumer credit (FCRA, ECOA, or equivalent)
Responsibilities
- Monitor credit risk models, including underwriting, loss forecasting, and fraud detection, and iterate based on observed portfolio performance
- Design, build, and maintain scalable data pipelines, monitoring infrastructure, and dashboards to track portfolio health, user behavior, and key risk indicators
- Partner with product, research, and engineering teams to define north star metrics and translate them into measurable, actionable credit and growth strategies
- Design and analyze A/B tests, quasi-experiments, and causal inference studies to evaluate the impact of product and policy changes
- Produce portfolio monitoring and investigative analyses, making recommendations based on findings
- Translate complex quantitative findings into clear, compelling narratives for product, leadership, and cross-functional stakeholders
