Product Data Scientist

Harnham
City of London
1 month ago
Applications closed

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Job Description

DATA SCIENTIST (PRODUCT ANALYTICS)

UP TO £65,000

HYBRID – 1X A WEEK IN LONDON


*Please note, you must be a UK resident to apply and hold full right to work*


JOB DESCRIPTION

My client is looking for a Product Data Scientist to join a growing Insights team. In this role, you’ll partner closely with product, engineering, and machine learning teams to deliver insight, drive experimentation, and shape the future of a consumer-facing product ecosystem.


This position sits at the intersection of technical depth and strategic impact. You’ll dive into data, pipelines, and experimentation frameworks while also influencing product direction, user experience, and commercial outcomes.


WHAT YOU’LL DO

Product Analytics Ownership

  • Act as the go-to data scientist for a core product area.
  • Develop a deep understanding of user behaviour and product performance.
  • Identify opportunities to improve user outcomes and business results.

Influence Product & Business Strategy

  • Connect analysis to broader company goals and strategic priorities.
  • Help product teams understand trade-offs, challenge assumptions, and make evidence-based decisi...

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