Senior Data Scientist - Fraud Model Validation

  • Klarna
  • Stockholm, Maine
  • Full Time

What you will do

  • Perform independent end-to-end validation of fraud detection ML models, including conceptual soundness, data integrity, feature engineering, model development, deployment design, and monitoring frameworks. Develop challenger models.

  • Review and challenge first-line fraud model methodologies, assumptions, and implementation choices (e.g., scikit-learn, LightGBM, graph models, anomaly detection techniques, GenAI components).

  • Build and deploy agentic AI tools to support model validation workflows - automating review of model documentation and code, surfacing risks and inconsistencies.

  • Assess model performance using appropriate fraud metrics (e.g., precision/recall, ROC-AUC, PR-AUC, cost-sensitive metrics, fraud rate capture, business impact trade-offs).

  • Evaluate model stability, drift detection, retraining strategies, and production monitoring practices.

  • Independently replicate model results where necessary and conduct challenger analyses to assess model robustness and limitations.

  • Review large-scale transaction datasets and feature pipelines (e.g., u0026gt;100M transactions, hundreds of features) to assess data representativeness, leakage risks, and bias.

  • Evaluate model governance documentation, explainability approaches, and transparency - including regulatory compliance related to model risk, fairness, and data privacy.

  • Validate new technologies applied in fraud detection, such as Graph Networks, Behavioral Biometrics, Anomaly Detection, and GenAI-based systems.

  • Assess controls around CI/CD pipelines, deployment processes (e.g., Docker, Jenkins), and cloud environments (e.g., AWS SageMaker, S3, Athena, Lambda).

  • Develop and maintain validation frameworks, testing standards, and model performance monitoring tools (e.g., SQL, PySpark, Python-based validation libraries).

  • Collaborate closely with first-line fraud data scientists, ML engineers, product, and business stakeholders to ensure transparent communication of model risks and validation findings.

  • Provide actionable recommendations and formally document validation outcomes in line with internal model governance standards and external regulatory expectations.

  • Stay up to date with evolving fraud typologies, emerging ML/AI techniques, and regulatory developments in model risk management.

Who you are

  • Advanced degree (Master's or PhD) in a quantitative field such as Data Science, Statistics, Mathematics, Computer Science, Physics, or Engineering.

  • 3+ years of hands-on experience in fraud-related modeling (e.g., transaction fraud, account takeover, identity fraud, payments fraud etc).

  • Strong expertise in machine learning methods used in fraud detection, including tree-based models (e.g., LightGBM), anomaly detection, graph/network models, and advanced ML techniques.

  • Deep understanding of the end-to-end ML lifecycle - from conceptual design and feature engineering to production deployment and monitoring - with the ability to critically challenge each stage.

  • Strong programming skills in Python and SQL; experience with PySpark/Spark and large-scale data processing.

  • Experience building agentic AI workflows.

  • Familiarity with cloud-based ML platforms (e.g., AWS SageMaker, Lambda, S3, Athena) and production deployment workflows.

  • Strong knowledge of model validation principles, model risk governance frameworks, and regulatory expectations.

  • Experience assessing model bias, fairness, explainability, and privacy risks.

  • Excellent analytical thinking and structured problem-solving skills, with the ability to assess complex models and clearly articulate risks and limitations.

  • Strong communication skills, capable of translating technical findings into clear, actionable insights for senior stakeholders and non-technical audiences.

  • Ability to work independently while constructively challenging first-line teams in a collaborative manner.

Awesome to have

  • Experience in BNPL, credit cards, payments, or other transaction-heavy financial products.

  • Experience validating models in highly regulated environments.

  • Experience mentoring junior validators or leading validation reviews.

  • Exposure to inference of rejected transactions and understanding of fraud/credit overlap.

  • Familiarity with AI governance frameworks and emerging AI regulatory requirements.

Job ID: 518381728
Originally Posted on: 4/23/2026

Want to find more Technology opportunities?

Check out the 165,520 verified Technology jobs on iHireTechnology