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Senior Data Scientist Consumer Lending

ZipRecruiter
London
1 week ago
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Job Description

Senior Data Scientist – Consumer Lending

Hybrid – London | Up to £75,000 DOE + Benefits

Ref: J12979

We’re partnering with a consumer finance business reshaping credit, fairer, simpler, and powered by data.

Think challenger fintech with a strong focus on transparency and real world impact.

The Role

You’ll own model development end-to-end—building and deploying ML models that drive decisions across underwriting, fraud, and customer conversion. It’s a hands-on role, working with structured and unstructured data in a fast-paced, collaborative team.

What We’re Looking For

  • Strong Python (pandas, sklearn, etc.) and advanced SQL
  • Experience in behavioural or credit models
  • Good understanding of ML algorithms
  • Clear communicator across technical and non-technical teams
  • Knowledge of data drift and model monitoring
  • Excellent data visualisation—ideas that land
  • Degree in Computer Science, Maths, Stats, or similar

Bonus Points For

  • Experience in credit cards or consumer lending
  • Deep learning (Keras, TensorFlow)
  • Git, Tableau, Bitbucket
  • Master’s in Data Science or related field

What’s on Offer

  • Up to £75k depending on experience
  • Bonus + private medical
  • 25–30 days holiday + birthday off
  • Hybrid working (London)
  • Family-friendly policies
  • Great culture and chance to make a real impact

Please note: sponsorship is not available.

#datascience #fintechjobs #creditrisk #consumerfinance #ml #ethicalfintech #hiring #behaviouralmodelling #pythonjobs #datatechjobs


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