Media Data Analyst

Harnham
London
3 days ago
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Media Data Analyst
📍 London (Hybrid - 2 days in office)
đź’° Up to ÂŁ60,000 + benefits

A leading international media group is looking for aData Analystto join their growing data team within theAudiodivision - home to some of the UK's most well-known radio and digital content brands.

This is an exciting opportunity to work on high-visibility projects that combine audience insights, advertising strategy, and competition performance to shape how millions interact with digital media content.

What You'll Work On:

  • Analyse audience behaviour across digital and audio platforms - who's listening, how often, and through what channels

  • Support commercial teams in optimising advertising inventory and pricing decisions

  • Deep dive into competition data - helping identify trends, patterns, and smarter targeting strategies

  • Build dashboards, generate reports, and present clear, actionable insights to stakeholders

  • Collaborate with teams across product, marketing, legal, and planning to support data-informed decision making

What You'll Bring:

  • Experience withSQLand strong analytical tools (Excel, Python, or BI platforms)

  • Knowledge ofA/B testingand experimental design

  • Strong problem-solving mindset with a commercial lens

  • Ability to communicate findings in a clear, compelling way

  • Friendly, curious, and easy to work with - someone who enjoys collaboration

  • (Bonus) Background in product analytics, advertising, or competitions (e.g., gambling sector)

Join a team that operates like a boutique internal consultancy - using data to drive creativity and smarter business decisions across the UK and Europe.

Apply nowto play a key role in shaping the future of audio and digital media insights.

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