Senior Data Analyst (£50k-£75k + Equity) at Boutique High-Growth Data Consultancy

Jack & Jill/External ATS
London
6 days ago
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Senior Data Analyst

Salary: £50k-£75k + Equity


Company Description

Boutique High-Growth Data Consultancy


Job Description

Join a high-impact team working directly with C‑suite executives at tier‑1 VC and PE‑backed scale‑ups. You will bridge the gap between business strategy and technical execution, building scalable data models and roadmaps that drive growth. This role offers an unparalleled learning curve within an elite, close‑knit team focused on excellence and efficiency.


Location

London, UK


Why this role is remarkable

  • Direct executive exposure, acting as a trusted advisor to founders and CEOs of fast‑growing international scale‑ups
  • Work alongside an elite team of experts in a high‑intensity but boundary‑respecting environment with no late nights
  • Exceptional professional development, with team members frequently gaining years of experience in just six months of work

What you will do

  • Conduct deep‑dive analyses on customer behavior and growth drivers to move executive leadership to action
  • Design and build scalable data models in SQL/dbt and develop automated pipelines for long‑term AI success
  • Lead end‑to‑end projects from ambiguous business briefs to delivered technical implementations and ROI‑focused roadmaps

The ideal candidate

  • 5+ years of experience turning complex data into actionable business impact with advanced SQL and modern analytics tools
  • Strong strategic thinker who can navigate ambiguity and present findings confidently to C‑suite stakeholders
  • Technically proficient in dbt, BigQuery/Snowflake, and dashboarding, with a focus on business outcomes over technical tasks


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