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Senior Data Scientist – Credit Underwriting
Company | Clair |
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Location | New York, NY, USA |
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Salary | $195000 – $200000 |
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Type | Full-Time |
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Degrees | Bachelor’s, Master’s |
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Experience Level | Senior |
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Requirements
- 5+ years as a Data Scientist, with a strong focus on credit underwriting in the B2C fintech product space
- Proven experience with rules-based modeling, transaction labeling, and cash flow predictors
- Deep understanding of credit risk, including familiarity with relevant regulatory limits and compliance requirements
- Worked on a product that successfully went to market
- Proficient in Python, SQL, and data analysis tools
- Experience with financial data APIs like Plaid and handling unconventional datasets
- Strong background in statistical modeling, machine learning, and data visualization
- Ability to work with obscure data and deliver actionable insights
- Excellent communication skills to collaborate with cross-functional teams and present findings to non-technical stakeholders
- Bachelor’s or Master’s degree in Data Science, Statistics, Computer Science, Finance, or a related field
Responsibilities
- Develop and refine rules-based models for transaction labeling (e.g., categorizing income buckets, expenses)
- Build and optimize cash flow prediction models to assess user behavior and financial stability
- Conduct wage and hour assessments to ensure accurate and compliant financial modeling
- Analyze and interpret complex credit risk data, aligning models with regulatory requirements and limits
- Leverage Plaid and other financial APIs to process and analyze unconventional or obscure datasets
- Partner with engineering and product teams to bring data-driven insights into our product, ensuring scalability and reliability
- Collaborate across departments to align credit underwriting strategies with business goals
- Monitor and validate the performance of credit models post-launch, iterating as needed to optimize outcomes
- Stay current on regulatory changes and industry best practices in credit risk and financial modeling
Preferred Qualifications
No preferred qualifications provided.