Data Scientist II
Indexed description
This is a role for someone ready to operate with limited guidance: scoping their own work, making sound technical calls, and being accountable for the systems they build.
What you'll do:
- Own statistical and machine learning models for problems like customer segmentation, credit scoring, and fraud detection, from framing through deployment
- Translate ambiguous business problems into well-scoped analytical solutions with measurable impact
- Take models into production yourself in partnership with data engineers, and stay accountable for them once they're live
- Dig into user behavior and transactional data to surface trends, patterns, and opportunities others miss
- Communicate findings and recommendations clearly to both technical and non-technical audiences
- Monitor model health after deployment and continuously improve performance over time
- Contribute to our internal data science frameworks, tooling, and engineering best practices
- 3+ years of hands-on data science or applied ML experience, including at least one model you took from problem framing through production
- Strong proficiency in Python (NumPy, pandas, scikit-learn) and SQL
- Solid grounding in statistics, probability, and core machine learning methods
- Experience working with large-scale datasets on cloud platforms (AWS preferred)
- Sound engineering judgment and the ability to work independently within a collaborative team
- Strong communication skills and a track record of working effectively across functions
- Experience in fintech or consumer finance, especially with regulated problems like credit or fraud
- Familiarity with MLOps tooling such as MLflow and Docker
- Experience with BI tools such as Looker or Tableau
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