Lead Data Scientist

IO Associates
Leicester
2 days ago
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Lead Data Scientist

Salary: Up to £75,000 + competitive benefits
Location: Leicester. 2 days onsite per week

A major UK retailer is hiring a Lead Data Scientist to shape how £160M of digital marketing spend is measured, optimised and scaled.

This role sits at the centre of marketing, data and commercial strategy. You will lead a small team and own the analytical frameworks used to measure performance across paid media, CRM and digital channels.

You will work on attribution, experimentation, incrementality and customer insight to ensure marketing investment is driving measurable business impact.

This is a strong opportunity for an experienced Data Scientist or Senior Data Scientist ready to step into their first Lead role. You will have real ownership, exposure to senior stakeholders and the opportunity to shape how data science supports marketing decisions at scale. The organisation offers excellent opportunities to develop leadership capability and progress within a growing data function.

Key responsibilities

Lead and develop a small team of data scientists and analysts focused on marketing performance and optimisation.

Own the analytical strategy used to evaluate a £160M digital marketing budget across multiple channels including paid media, CRM and onsite marketing.

Design and implement robust experimentation framewo...

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