Customer Data Scientist

Harnham
Manchester
8 months ago
Applications closed

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???? Customer Data Scientists

???? Manchester (Hybrid – 2 days in office)

???? Full-Time | Permanent

???? Up to £90,000 + benefits


Join one of the world’s largestindependent media and entertainment groups, home to iconic brands across audio, publishing, and digital.


They’re now hiringCustomer Data Scientiststo help unlock deeper audience insights, optimise engagement, and drive smarter decision-making across theirAudio Division.


???? What you’ll be doing:

  • Build and deploypredictive modelsto understand customer behaviour, loyalty, and segmentation
  • Analyse user journeys across digital and audio platforms to improve engagement
  • Support optimisation of ad inventory and revenue through data-driven pricing models
  • Work on growth areas like competitions and targeting, identifying who to engage—and why
  • Partner closely with teams across product, marketing, and analytics
  • Present findings to technical and non-technical stakeholders to influence business strategy


????️ What you’ll need:

  • Proficiency inSQLandPython
  • Strong experience inproduct or customer analytics
  • Hands-on withA/B testing, experimentation, and uplift modelling
  • Excellent problem-solving skills and the ability to turn complex data into clear insight
  • Experience in media, gambling, or digital B2C industries is a plus
  • Comfortable working cross-functionally and explaining your work to diverse teams


HOW TO APPLY

Please register your interest by sending your CV to Lauren McAlister via the Apply link on this page.

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