Senior Pricing Data Scientist

OneFamily
Brighton
1 month ago
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We’re looking for a Senior Pricing Data Scientist to design and deploy advanced pricing and predictive models across OneFamily and Beagle Street products. In this high‑impact role, you’ll shape pricing strategy, support trading performance and drive great customer outcomes through data‑driven insight.


What you’ll do

  • Build and deploy retail pricing, demand, lapse, cross‑sell and optimisation models.
  • Lead strategic pricing initiatives and fast-turnaround tactical solutions.
  • Collaborate with Product, Protection and Distribution teams to deliver commercial pricing improvements.
  • Communicate insights clearly to technical and non‑technical audiences.
  • Ensure rigorous QA, governance and best‑practice modelling standards.

What you’ll bring

  • Strong understanding of retail pricing, elasticity, price testing and customer behaviour drivers.
  • Advanced skills in machine learning, modelling, evaluation and optimisation techniques.
  • Solid mathematical and statistical knowledge (GLMs, regression, PCA, time-series, hypothesis testing, etc.).
  • Experience with Protection products (Term Assurance, Critical Illness, Income Protection) and pricing assumptions.
  • A track record of mentoring analysts and data scientists.
  • Commercial awareness, integrity and excellent communication skills.

Who you are

Ambitious, analytical and collaborative — someone who combines technical expertise with commercial insight. You’re principled, courageous and effective; aligned with our values and committed to doing the right thing for our customers.


Ready to make a real impact?

Apply now and help shape the future of Protection pricing at OneFamily.


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