Data Scientist - Technical Pricing Manager

DATAHEAD
London
1 day ago
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Data Scientist - Technical Pricing Manager

Global Insurer

£85,000 - £95,000 base + 20% bonus

London – 3 days per week


DATAHEAD is partnering exclusively with a global reinsurance and specialty insurance group to hire a Technical Pricing Manager to drive pricing transformation across multiple specialty lines.

This is a hands-on role combining model development, underwriting partnership, and technical leadership.


What you’ll do:

  • Develop and enhance pricing models (Python & Excel)
  • Lead recalibration and rate adequacy work
  • Embed technical pricing into underwriting workflows
  • Identify inefficiencies and design scalable solutions
  • Mentor junior analysts and represent pricing in cross-functional forums


What we’re looking for:

  • 5+ years’ GI pricing experience
  • Strong Python capability (model build level)
  • SQL proficiency
  • Experience working closely with underwriters
  • Confident communicator with a commercial mindset


Actuarial background desirable but not essential.


This is a strong opportunity for a Senior Pricing Analyst or Pricing Manager ready to step into a broader transformation role with real visibility and impact.

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