Marketing Data Analyst / Scientist - Fintech

Client Server
London
1 day ago
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Marketing Data Analyst / Scientist - Fintech

Join to apply for the Marketing Data Analyst / Scientist - Fintech role at Client Server


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


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


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.


Location / WFH:

There's a hybrid model with two days a week work from home, when you are in the office you'll be based in the City with an upbeat team environment, casual dress code and a range of facilities including roof terrace, restaurant and break out areas.


About you:

  • You have strong marketing analytics or data analysis experience for complex campaigns with A/B testing and multiple versions to understand success metrics
  • You have SQL skills and the technical ability to debug and make configuration amendments within DBT data pipelines, Airflow experience is desirable
  • You have experience with GIT version control
  • You have a good knowledge of Google Analytics, GA4
  • You have a good understanding of marketing metrics, KPIs and attribution models
  • You can translate data into actionable marketing insights
  • You have advanced communication, collaboration and stakeholder management skills
  • You have a strong understanding of mathematics, statistics and data science principles / tools

Apply now to find out more about this Marketing Data Analyst / Scientist (GA4, DBT, SQL, GIT) opportunity.


At Client Server we believe in a diverse workplace that allows people to play to their strengths and continually learn. We're an equal opportunities employer whose people come from all walks of life and will never discriminate based on race, colour, religion, sex, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status. The clients we work with share our values.


Seniority level: Mid-Senior level


Employment type: Full-time


Job function: Information Technology


Industries: Software Development and IT Services and IT Consulting


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