Marketing Data Analyst / Scientist - Fintech

Client Server
Greater London
1 month ago
Applications closed

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Marketing Data Analyst / Scientist (GA4 DBT SQL GIT) London / WFH to £90k

Do you have expertise with analysing marketing data combined with excellent stakeholder management and communication skills?

You could be progressing your career in an impactful Marketing Data Analyst at a global FinTech / CFD trading company that has been consistently voted as one of the UKs top employers.

As a Marketing Data Analyst / Scientist you will analyse marketing campaign performance across digital channels to drive insights, optimise campaigns and improve marketing effectiveness, collaborating with Product Managers and cross functional teams to provide insights that make a significant commercial impact.

You'll support the marketing team with segmentation and targeting strategies using data analysis, conduct thorough A / B testing to identify trends and opportunities and make statistical, data driven recommendations to improve marketing effectiveness. You'll be working with immature datasets with lots of changes and variables, experimenting and trying new things including modifying data pipelines.

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