Senior Data Analyst

Formula Recruitment
City of London
1 month ago
Applications closed

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Location: London Hybrid - 3 days a week onsite

Salary: £75,000-£85,000 + bonus + benefits


Do you want to join a fast-growing tech-for-good company that’s redefining how data, automation, and smart integrations power the digital world. Their intelligent platform transforms real-time operations and helps users make smarter, faster decisions that improve lives and infrastructure globally.


We’re looking for a Senior Data Analyst who’s passionate about turning complex data into clear insights that shape strategy, improve customer journeys and drive meaningful change.


What You’ll Do as a Senior Data Analyst

  • Partner with teams across the business to uncover data-driven opportunities and solve real problems.
  • Collect, analyse, and interpret large datasets to support strategic decisions and operational excellence.
  • Build and maintain scalable data models in DBT and Snowflake.
  • Develop impactful dashboards and self-service tools in Power BI, Tableau, or similar platforms.
  • Promote data literacy across the company by communicating insights clearly and confidently.
  • Utilise AI in all workflows as a key driver for data.


What You Bring

  • 5+ years of hands-on experience in data analytics.
  • Commercial experience with DBT and Snowflake.
  • A very keen interest and experience in AI.
  • Proficiency in SQL, Python, and Excel.
  • Experience with version control tools (e.g. Git).
  • A passion for using data to make things better—for people, products, and processes.


Why You’ll Love It Here

  • Competitive salary + annual bonus
  • Hybrid working model (3 days onsite in London)
  • Private health insurance & pension scheme
  • Life assurance (4x salary)
  • A chance to make a measurable impact in a purpose-driven tech company


If you are ready to shape the future with data, then apply now for this Senior Data Analyst role and be part of a mission-led company where your insights will truly make a difference.


** Unfortunately, due to the volume of applications, not all submissions will receive feedback**

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