Data Scientist - Credit

Harnham - Data & Analytics Recruitment
London
3 days ago
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Data Scientist - Credit Risk £55-65,000 London

THE COMPANY

This business are a dynamic and fast-paced lender and are seeking a driven and experienced individual to join their team in building out their predictive models using cutting-edge Machine Learning techniques. This role is an opportunity for someone to be part of a successful company which is continuing to grow whilst driving impact in your work at the forefront of the market.

THE ROLE

  • Work across a range of credit models within the business, predominantly scorecards and broader decisioning models
  • Using innovative machine learning techniques to further enhance the model suite and drive profitability across the business
  • Own the deployment and implementation of predictive models across the product suite
  • Working closely with the Credit and Product teams to enhance performance and profitability across the business by collaborating on strategies and model enhancements

YOUR SKILLS AND EXPERIENCE:

  • Essential to have experience developing predictive models, ideally within credit risk
  • SQL and Python experience is essential
  • Essential to have experience using Machine Learning techniques to develop non-linear models
  • Experience in a fast-paced environment and ability to work across multiple projects, in a FinTech

...

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