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Marketing Data Analyst

Harrington Starr
City of London
1 week ago
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Senior Marketing Data Analyst – Fast-Growing Global FinTech

Love finding patterns in data that drive smarter marketing?

We’re partnering with a global FinTech that’s transforming how people trade and invest. With hundreds of thousands of active users worldwide, they’re scaling fast — and they’re looking for a Senior Marketing Data Analyst to help fuel that growth.


The Opportunity

You’ll be the marketing team’s data powerhouse — connecting insights to strategy, spotting opportunities, and helping shape decisions that directly impact acquisition, retention, and revenue. Working cross-functionally with product, engineering, and growth teams, you’ll ensure marketing decisions are grounded in data, not guesswork.


What You’ll Be Doing

  • Analyse campaign performance across multiple digital channels
  • Create insights on customer journeys, lifetime value, attribution, and engagement
  • Support segmentation, targeting, and experimentation strategies
  • Build and automate dashboards and data pipelines to enable self-serve analytics
  • Own the marketing analytics function — becoming the trusted expert for performance data


What You’ll Need

  • 5+ years’ experience in data analytics, ideally with a marketing or growth focus
  • Strong SQL skills and experience building robust data pipelines (DBT, Airflow)
  • Confident using tools like Looker, Amplitude, GA, and Optimizely
  • A/B testing expertise and deep understanding of marketing KPIs and attribution models
  • Great communication skills — able to turn data into stories and influence senior stakeholders

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