Lead Data Scientist

THE IDOLS GROUP LIMITED
London
2 months ago
Applications closed

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Lead Data Scientist


Lead Data Scientist



Salary: £120K - £140K + Equity



Location: London in office

Data Idols are working with a rapidly scaling technology company which is redefining how large, highly regulated organisations produce, validate, and deliver client-facing work.

They are now hiring a Lead Data Scientist to take full ownership of their data ecosystem and help shape how the company operates, measures success, and makes decisions. You will own the data stack end-to-end and work at the intersection of analytics, engineering, and applied machine learning.



The Opportunity

This is a high-impact, high-autonomy role where you will design, build, and scale the company's entire data capability from ingestion through to insight and prediction.

You'll work closely with senior leadership, product, engineering, and go-to-market teams, ensuring data is reliable, real-time, and genuinely useful. You'll turn messy, fast-moving problems into automated, production-grade systems that inform product strategy, customer behaviour, and operational decisions.

If you enjoy building from first principles, moving fast, and taking real ownership, this role offers an unusually broad scope and level of influence.



Skills and experience

  • Strong Python for pipelines and analysis
  • Advanced SQL and hands-on dbt experience
  • Experience building data platforms from scratch in...

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