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Product Data Scientist

Harnham - Data & Analytics Recruitment
London
5 days ago
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? Product Data Scientist - Up to £65k + Benefits | London (Hybrid)

Join a fast-growing, community-driven marketplace on a mission to make fashion circular. We're looking for a Product Data Scientist who can turn complex data into actionable product insights, drive experimentation, and influence strategy across a major consumer platform.

What you'll do

  • Own analytics for a core product area

  • Shape product & commercial strategy with data-led insights

  • Design, run, and evaluate A/B tests end-to-end (3-5 per quarter)

  • Partner with Product, Engineering & ML teams

  • Help build self-serve analytical capabilities

What you'll bring

  • Strong SQL (day-to-day level)

  • Python exposure (nice to have)

  • Experience with BI tools (Looker/PowerBI/Tableau)

  • Comfort working with ETL workflows

  • Strong communicator with commercial awareness

  • Confident presenting to non-technical stakeholders

Why apply?

  • Up to £65k base

  • 1 day a week in a central London office

  • Exceptional benefits

If you're driven by experimentation, impact and product thinking, this is a brilliant ne...

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