Senior Data Scientist

Kinarden Search
London
3 days ago
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The Company

A growing fintech lender is looking to hire a Senior Data Scientist to help expand its data science and machine learning capability. The role sits within a collaborative analytics function focused on building models that support lending decisions, fraud prevention and commercial optimisation.


The Role

You will design, build and deploy machine learning models that solve real business problems. Working closely with product, engineering and analytics teams, you’ll help translate data into practical insights and scalable modelling solutions.


What You’ll Do

  • Build and implement machine learning models used in credit decisioning and fraud
  • Work with large datasets to develop predictive models and analytical insights
  • Partner with technical and non-technical stakeholders to deliver data-led improvements
  • Contribute to model validation, monitoring and governance processes
  • Support the development of data science standards and mentor junior team members


Background

  • Experience working in data science within financial services, fintech or lending
  • Proficiency in Python and SQL
  • Experience developing ML models used in production environments
  • Familiarity with regulated modelling environments (credit risk, fraud, pricing etc.)
  • Comfortable communicating technical concepts to broader business teams

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