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Marketing Data Analyst - Hybrid Working

Harrington Starr
London
1 month ago
Applications closed

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Senior Marketing Data Analyst Fast-Growing Global FinTech Love finding patterns in data that drive smarter marketing?
With hundreds of thousands of active users worldwide, theyre scaling fast and theyre looking for a Senior Marketing Data Analyst to help fuel that growth.

Youll be the marketing teams 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, youll ensure marketing decisions are grounded in data, not guesswork.

Analyse campaign performance across multiple digital channels
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

5+ years experience in data analytics, ideally with a marketing or growth focus
~ Strong SQL skills and experience building robust data pipelines (DBT, Airflow)
~ 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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