Marketing Data Analyst

Sphere Digital Recruitment
London
1 week ago
Create job alert

An exciting company in London is looking for a Marketing Data Analyst to join their growing Marketing & Growth team.

  • Based in: London (remote-first with cross-functional collaboration)
  • Hybrid: Up to 2-3 days a week in the office (flexible)
  • Contract: 3-month temp-to-perm
  • Start date: ASAP (can wait for up to a 3-month notice)

The Job

As the Marketing Data Analyst, your responsibilities will include:

  • Delivering advanced marketing performance analysis across multi-channel campaigns, including CPA, CAC, LTV, ROAS, and funnel conversion performance.
  • Conducting audience segmentation, cohort analysis, and predictive modelling to support acquisition and retention strategies.
  • Owning A/B testing and experimentation frameworks alongside product and growth teams.
  • Building dashboards and reporting tools (Looker, Power BI, Tableau) to improve visibility and enable self-serve analytics.
  • Running ETL processes, ensuring clean datasets, and partnering with data engineering on scalable pipelines.
  • Developing attribution models and privacy-first measurement frameworks suitable for a post-cookie landscape.
  • Translating data into clear, commercially focused insights for marketing, product, and senior stakeholders.

You

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