Senior/Lead Data Scientist-Fraud

Klarna · Turbigo, Lombardia, Italia · · 70€ - 90€


Descrizione dell'offerta

Responsibilities

  • Build and deploy ML models to protect Klarna’s customers from fraudulent activities (e.g. account takeover or identity theft fraud).
  • Lead 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 help models in predicting fraud.
  • 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.
  • Proactive in exploring novel ML/AI products to detect fraud.

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).
  • Lead 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 help models in predicting fraud.
  • 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.
  • Proactive in exploring novel ML/AI products 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).
  • 5+ years of experience as a Data Scientist, ML Engineer, or related roles in the financial sector.
  • 2+ years of experience working in fraud-related problem space.
  • Experience in handling large sizes of customer data (e.g. >100 millions transactions with a few hundreds features).
  • Deep proficiency in ML end-to-end process: conceptual design, model development, deployment in production, and monitoring, including pitfalls and tradeoffs to make.
  • Deep 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 monitoring and when to retrain ML models.
  • 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.
  • Strong ability to translate business problems into analytical/technical solutions.
  • 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.
  • Eager 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 payment-related business, e.g. BNPL, credit card, or P2P transfer.
  • Technical experience on utilizing Gen AI, Graph Networks, 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.
  • Experience with inferring the outcome of rejected orders due to fraud suspicion or credit unworthiness.

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Approfondimento sul ruolo

Questa posizione di Senior/Lead Data Scientist specializzato in Fraud rappresenta un'opportunità per guidare progetti di machine learning ad alto impatto nel settore della protezione dai rischi finanziari. Sarai responsabile dello sviluppo e del deployment di modelli sofisticati per rilevare e prevenire attività fraudolente, dalla definizione del problema fino alla messa in produzione.

Il ruolo

Come Senior/Lead Data Scientist-Fraud, svilupperai e metterai in produzione modelli ML per proteggere i clienti da attività fraudolente come account takeover e furto d'identità. Guiderai progetti di data science dalla concettualizzazione fino al deployment, monitorando e mantenendo in produzione i modelli esistenti. Ti occuperai dell'ingegnerizzazione di nuove feature predittive, comunicherai con gli stakeholder su design concettuale e rischi associati ai modelli, e esplorerai continuamente soluzioni innovative nel campo dell'IA per la rilevazione di frodi.

Competenze valorizzate

  • Machine Learning e modelli predittivi
  • Ingegnerizzazione e selezione delle feature
  • Leadership di progetti data science
  • Monitoraggio e manutenzione di sistemi in produzione
  • Comunicazione tecnica con stakeholder e documentazione

Il mercato del lavoro a Turbigo

Turbigo, situata in Lombardia, si trova in una regione caratterizzata da una forte tradizione industriale e manifatturiera, con crescente interesse verso settori innovativi come fintech e tecnologie digitali. L'area rappresenta un polo attrattivo per professionisti del settore IT e data science, con prossimità a importanti centri economici della Lombardia.

Domande frequenti

Quali sono le responsabilità principali di un Senior/Lead Data Scientist-Fraud?
Le responsabilità includono la costruzione e il deployment di modelli ML per la rilevazione di frodi, la leadership di progetti da definizione del problema fino al deployment, il monitoraggio e il retraining di modelli in produzione, e la comunicazione con stakeholder su rischi e sviluppi dei modelli.
Quali competenze sono fondamentali per questa posizione?
Sono essenziali competenze avanzate in machine learning, feature engineering, leadership tecnica, conoscenza di sistemi di produzione e capacità di comunicare complessi concetti tecnici a stakeholder non tecnici.

Competenze rilevate

Candidatura e Ritorno (in fondo)