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Lead Data Scientist

Harnham
united kingdom of great britain and northern ireland, uk
19 hours ago
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Lead Data Scientist

London – Hybrid

£90,000 – £100,000 + Benefits


About the Role

We’re working with a fast-growing fintech that is redefining the credit industry through fair, accessible, and innovative digital finance products. They’re looking for a Lead Data Scientist to drive their AI adoption strategy, evolve modelling capabilities, and lead a small team of data scientists. This is a chance to shape the company’s AI roadmap, leading from the front and ensuring they stay ahead of the market.


Key Responsibilities

  • Lead a team of data scientists, delivering high-quality models and analysis.
  • Own the full model lifecycle, from data sourcing to deployment and monitoring.
  • Explore advanced ML techniques while ensuring compliance in a regulated industry.
  • Partner with stakeholders across Risk, Pricing, Product, and Engineering to embed data-driven decision making.
  • Develop and oversee frameworks for model monitoring, performance tracking, and testing.
  • Communicate complex analytics into clear, actionable recommendations for senior leadership.
  • Champion best practice in coding, documentation, version control, and automation.
  • Act as the AI expert, staying ahead of emerging trends, tools, and regulatory developments.


What We’re Looking For

  • Proven experience as a Senior or Lead Data Scientist in financial services, consumer lending, or fintech.
  • Strong background in managing and developing analytics teams.
  • Advanced proficiency in Python, SQL, and modern ML frameworks.
  • Expertise in credit and fraud modelling, pricing models, and lending analytics.
  • Track record of researching, prototyping, and deploying AI/ML solutions in production.
  • Ability to set AI strategy and influence senior leadership.
  • Strong understanding of model governance, monitoring, and explainability in a regulated environment.
  • Excellent communication skills, able to bridge technical and commercial priorities.

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