Senior Decision Scientist

Love Finance Limited
Birmingham
1 week ago
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Senior Decision Scientist (Lending)

Lovey | Birmingham (Hybrid) | Up to £95,000

About Lovey

Lovey is a fast-growing fintech helping UK businesses access the funding they need to grow. Since 2016, we've supported thousands of companies through smarter, faster, and more transparent lending.

We're proud to be a Top 15 fastest-growing finance company, a Great Place to Work, and to hold a 4.9 Trustpilot rating, driven by our focus on innovation, trust, and real customer impact.

The Role

We're looking for a Senior Decision Scientist to lead the development of cutting-edge credit decisioning models across SME lending.

You'll own the end-to-end model lifecycle, from problem framing through to deployment and monitoring, while working at the intersection of data, risk, and product to shape the future of our lending strategy.

What You'll Do As Senior Decision Scientist

  • Build and deploy ML and statistical models for credit risk, affordability, and pricing
  • Own the full model lifecycle (data, features, modelling, validation, deployment, monitoring)
  • Develop monitoring frameworks and performance dashboards
  • Drive innovation through new...

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