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Data Scientist -Fraud

Klarna

Milano

In loco

EUR 50.000 - 70.000

Tempo pieno

Oggi
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Descrizione del lavoro

A global fintech company is seeking a Mid-Senior Data Scientist to build and deploy ML models aimed at preventing fraud. Candidates should have an advanced degree in a quantitative field and 2+ years in data science or ML roles. Strong skills in Python, SQL, and familiarity with AWS and ML modeling tools are essential. The position entails working collaboratively across time zones with potential travel. Employment type is full-time, located in Lombardy, Italy.

Competenze

  • 2+ years of experience as a Data Scientist or ML Engineer.
  • Strong Python and SQL skills, familiarity with ML modeling packages.
  • Ability to work collaboratively across different locations.

Mansioni

  • Build and deploy ML models to prevent fraud.
  • Independently drive data science projects from start to finish.
  • Maintain and retrain existing ML models in production.

Conoscenze

ML model deployment
Data science projects
Python
SQL
Stakeholder communication
AWS Cloud Computing

Formazione

Advanced degree in a quantitative field

Strumenti

scikit-learn
AWS Sagemaker
Docker
Descrizione del lavoro

Join to apply for the Data Scientist -Fraud role at Klarna

This range is provided by Klarna. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range
What you will do
  • Build and deploy ML models to protect Klarna’s customers from fraudulent activities (e.g. account takeover or identity theft fraud).
  • Independently drive data science projects, from problem definition until deployment.
  • Monitor, maintain, and retrain existing ML models in production.
  • Explore, engineer, and test new potential features to predict fraud or increase conversion.
  • Communicate with stakeholders on conceptual design, development, deployment, and risk control of the model, including writing documentation for external parties.
  • Maintain the engineering platform/system used by the team to stay compliant with the company’s requirements.
  • Explore novel ML/AI solutions to detect fraud.
Who you are
  • Have an advanced degree (Master or Doctorate) in a quantitative field (e.g. statistics, computer science, engineering, mathematics, physics, or related fields).
  • 2+ years of experience as a Data Scientist, ML Engineer, or related roles, preferably in the financial sector.
  • Proficiency in ML end-to-end process from conceptual design to model development, deployment, and monitoring.
  • Good understanding of business value to deliver: know when an ML solution is needed and when the model is good enough to be deployed for production.
  • Good understanding of what metrics to use for model monitoring.
  • Strong Python and SQL skills, including familiarity with ML modeling packages (e.g. scikit-klean, LGBM) and CI/CD or deployment tools (e.g. Docker, Jenkins, and uv).
  • Familiarity with Github and AWS Cloud Computing (Sagemaker, Lambda, S3, Athena, etc).
  • Ability to communicate effectively with Analysts, Engineers, and non-technical roles.
  • Willingness to collaborate across different locations and time‑zones (US and EU), but you will be working at common office hours in your time‑zone. Traveling for one or two weeks per year may be needed to meet in‑person with other group members.
  • Willingness to take ownership of a project and deliver results with minimal supervision.
  • Agile to adapt to new changes in technology or engineering platforms used by the company.
Awesome to have
  • Experience working in fraud‑related problem space, cyber security, and/or payment‑related business, e.g. BNPL, credit card, or P2P transfer.
  • Experience in handling large sizes of customer data (>100 millions transactions with a few hundred features).
  • Technical experience on utilizing Gen AI, Graph Network, Anomaly Detection, or Behavioral Biometrics into production (beyond just prompting, fine‑tuning, or proto‑typing solutions).
  • Familiarity with AI productivity tools for coding, e.g. Cursor or Github co‑pilot.
  • Familiarity with compliance and regulation around personal data privacy and model bias.
  • Experience in mentoring junior data scientists.

Seniority level: Mid‑Senior level

Employment type: Full‑time

Industry: Software Development

Referrals increase your chances of interviewing at Klarna by 2x

Pieve Emanuele, Lombardy, Italy 3 weeks ago

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