Senior Product Data Scientist

Harnham
London
1 month ago
Applications closed

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Job Description

Senior Product Data Scientist - Up to £85k + Benefits | London (Hybrid)

A major consumer marketplace is hiring a Senior Product Data Scientist to lead analytics and experimentation across a high-impact product area. You'll work closely with Product, Engineering and ML teams, owning technical discovery, shaping strategy, and driving experimentation at scale.

What you'll do

  • Lead analytics for a core product vertical

  • Own technical discovery and experimentation frameworks

  • Design, run and deeply analyse A/B tests (3-5 per quarter)

  • Mentor other analysts (no line management)

  • Influence product & business strategy end-to-end

  • Enable scalable, self-serve analytics

What you'll bring

  • Strong SQL (daily use)

  • Python experience (nice to have)

  • BI tools (Looker/PowerBI/Tableau)

  • Experience with Optimizely or similar testing platforms

  • Excellent communication + stakeholder influence

  • Hands-on, highly technical, commercially minded

Why apply?

  • Up to £85k base

  • 1 day a week in a modern London office

  • Outstanding benefits

Perfect for someo...

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