Senior Data Scientist

Method-Resourcing
City of London
3 weeks ago
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Senior Data Scientist - £75,000 to £85,000 + 3 days a week onsite

Method Resourcing is supporting a high-growth data function in central London who are building out their Data Science capability and looking for an experienced Senior Data Scientist ready to progress into a leadership role.

You'll join a flat-structured team of five (scaling to seven), with full end-to-end ownership of modelling, deployment, and stakeholder delivery. This is a team that truly owns their products: hypothesis, modelling, deployment, monitoring. If you want breadth, autonomy, and strategic impact, this is one of the strongest environments in London.

They're looking for someone who can already operate at a senior level: confident presenting to senior leadership, able to mentor others, and capable of stepping into a Lead role within 1-2 years.

The Role

You'll act as the blend of:

  • Data & AI evangelist - educating stakeholders on possibilities and translating technical outcomes to business value.
  • Data specialist - shaping data science strategy, building production-ready ML models, and embedding best practice.
  • Fixer/problem-solver - helping teams refine requirements, diagnose issues, and drive real commercial outcomes.

Day-to-day you will:

  • Translate complex business problems into research questions with qua...

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