Senior Data Analyst | SQL Expert | Python | Remote Europe | Up to £100k

Maze
Leigh
3 months ago
Applications closed

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Senior Data Analyst | SQL | Python | Amplitude | Remote Europe | Up to £100K


Maze is partnering exclusively with a rapidly scaling, AI-powered technology company in the digital economy to hire a Senior Data Analyst.


This is a high-impact role for a data professional who thrives on uncovering insights, driving experimentation, and shaping strategy through data.


Key Requirements


  • 5+ years of experience in data analytics
  • Advanced SQL and Python skills for data analysis, modelling, and automation.
  • Proven experience designing, running, and interpreting A/B tests and experiments.
  • Strong understanding of growth, engagement, and retention metrics across digital products.
  • Skilled in dashboarding and visualisation using tools such as Amplitude, Looker, Tableau, or QuickSight.
  • Excellent communicator who can translate data into actionable insights and influence decision-making.
  • Bonus: exposure to AI-driven analytics, LLMs, or cloud-based data infrastructure (AWS/GCP).


Why Join?


  • Drive impact at a fast-scaling, data-led company shaping the digital economy.
  • Own the full analytics lifecycle - from data modelling to insight generation.
  • Collaborate with a world-class team of engineers, product managers, and growth leaders.
  • Work in a culture that values autonomy, curiosity, and experimentation.
  • Fully remote across Europe with competitive pay - up to £90K base + benefits.


This role does not provide sponsorship and you must be legally authorised to work in the country you currently reside in.


If you match these requirements, please apply within!

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