Product Data Analyst

Harnham
City of London
1 day ago
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Job Description

PRODUCT DATA ANALYST

Up to £55,000 + benefits

LONDON – HYBRID (2 DAYS A WEEK IN OFFICE)


Please note: you must be a UK resident with full right to work


ABOUT THE BUSINESS

This is a large, global media organisation operating across North America, Europe, and the Middle East, with a strong presence in London. The business combines proprietary technology with large-scale media and publishing operations, reaching millions of users every month across multiple platforms.


The organisation operates across two core areas:

  • Technology, providing the infrastructure required to run high-traffic content platforms, including content management systems and advertising technology.
  • Media & Publishing, which focuses on producing and monetising premium sports and fan-focused content across a portfolio of major digital brands.

This role sits firmly within the Media & Publishing arm, supporting high-traffic websites and content networks monetised primarily through advertising, sponsorship, and emerging subscription models. As the business continues to explore registration walls, premium content, and audience monetisation strategies, analytics plays a central role in shaping commercial and pro...

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