
Data Scientist
at Klarna
Posted 19 hours ago
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- Compensation
- Not specified
- City
- Not specified
- Country
- Not specified
Currency: Not specified
Build, deploy, and maintain forecasting and analytics models covering full P&L and balance sheet. Own the end-to-end model lifecycle from problem framing and feature engineering to validation, documentation, and monitoring. Productionize solutions in the cloud using Python/SQL, Airflow, Docker and collaborate with cross-functional teams to translate business questions into measurable models and dashboards. Communicate model outputs and support scenario, sensitivity and stress testing for planning and forecasting.
What you will do
• Build, deploy, and maintain forecasting and analytics models. The scope includes the full P&L and balance sheet (e.g., transactions, revenue, receivables).
• Own the end-to-end model lifecycle: problem framing, data sourcing, feature engineering, modeling, validation, documentation, versioning, and monitoring.
• Design driver-based and hierarchical forecasts, and reconcile outputs across markets and products to ensure consistency between the P&L, balance sheet, and cash flow.
• Develop scenario, sensitivity, and stress-testing tools to support the annual plan, monthly forecasts, and in-month outlooks.
• Partner with teams across the company to translate business questions into measurable models and decisions.
• Productionize solutions in Klarna’s cloud environment (Python/SQL), automating reliable, reproducible pipelines with Airflow and Docker.
• Create clear narratives, dashboards, and variance bridges that explain model outputs and drivers to • finance leadership.
• Champion best practices in clean, maintainable code, data governance, and model risk controls.
Who you are
• A data scientist with an ML background, proficient in Python and SQL, and comfortable shipping production code in the cloud (AWS) with Git/CI.
• Skilled in forecasting methods – both classical and ML-based forecasting with experience tuning.
• Structured and execution-oriented; able to define problems, prioritize, and deliver end-to-end with high autonomy.
• A clear communicator who can simplify complex topics for non-technical stakeholders.
• Excited to learn from and contribute to a team experimenting with cutting-edge tools and AI agents, motivated to explore how such innovations enhance finance and analytics work.
• An academic background in a quantitative field (e.g., Mathematics, Physics, Engineering).
Awesome to have
• Experience in fintech/e-commerce or consumer finance; familiarity with payments, receivables, and funding mechanics.
• AWS experience (e.g., Batch, Lambda, Step Functions, EC2, S3) and workflow orchestration (e.g., Airflow); containers (Docker).
• MLOps practices for monitoring/backtesting, drift detection, and alerting; and experimentation design.
Please include a CV in English.
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