Credit Data Scientist (Credit Analytics) - Bengaluru
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About the role
Role purpose As a Credit Data Scientist, you'll use data, feature engineering and experimentation to improve credit decisioning and portfolio performance across our lending products and markets. You'll work end-to-end from data exploration through to production-aligned features, monitoring and impact measurement. Key responsibilities - Analyse customer, bureau, transactional and repayment data to identify drivers of risk, loss, approval rates and customer outcomes. - Build and iterate credit risk features and model inputs (behavioural signals, affordability proxies, stability-tested transformations), partnering closely with senior modellers and engineering. - Contribute to development and improvement of predictive models using modern machine learning approaches, with a focus on robustness, stability and deployability. - Design, run and evaluate credit policy experiments (cut-offs, limits, pricing/risk trade-offs, segment strategies), including post-implementation reviews. - Develop monitoring for model/policy performance and feature health (drift, stability, segment performance, data quality checks). - Support portfolio analytics: vintage analysis, roll-rates, migration, early warning indicators, collections funnel analytics, and loss driver deep-dives. - Work with Data/Engineering to improve data definitions, quality, lineage and reproducible pipelines; document feature logic and assumptions. - Contribute to governance documentation (model inputs, feature catalogues, monitoring evidence, change logs). Required experience and qualifications - 2-4 years in credit analytics / credit risk / lending data science (bank, fintech, lender, bureau, consulting). - Strong Python and/or SQL skills and experience working with large datasets. - Proficiency in Python or R for analysis and modelling. - Solid grounding in statistics and predictive model evaluation (ranking performance, calibration, stability) and business impact measurement. - Exposure to advanced machine learning concepts (e.g., ensemble methods, cross-validation, hyperparameter tuning) and an understanding of how to apply them responsibly in production settings. - Clear communication skills with technical and non-technical stakeholders. Nice to have - Experience with bureau data, open banking/transactional data, device/behavioural signals, or alternative data. - Familiarity with model monitoring, governance, and documentation practices in regulated environments. - Exposure to cloud analytics stacks (e.g., BigQuery/Snowflake/Databricks) and version control (Git based). Personal attributes - Curious and pragmatic; focused on measurable outcomes. - Comfortable working in detail and iterating quickly while maintaining quality. - Collaborative and able to work across markets and time zones. Reporting line and location - Reports into credit analytics center of excelence. - Location: Bengaluru, India. With collaboration with in-country lending and credit risk teams.
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