Data Science Engineer Global Digital Media/MarTech

Robert Walters
London
1 week ago
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We're looking for a Data Science Engineer to join a high-performing data team within one of the world's most recognised digital technology companies. This is a true hybrid role combining Data Science and Data Engineering, working on data-driven models that directly influence sales strategy, customer segmentation, and revenue growth.

Data Science Engineer (Data Science + Data Engineering)

£500/day | Initial 3-month contract (likely extension)London or Reading | Hybrid (2 days onsite)

You'll collaborate with senior stakeholders to explore complex datasets, engineer features, and develop predictive models that identify growth opportunities and improve customer engagement strategies.

Key Responsibilities

  • Develop and maintain revenue opportunity (rSAM) models to identify growth opportunities across the customer base.

  • Build and deploy predictive models including propensity models, customer segmentation, forecasting, and customer lifetime value modelling.

  • Conduct business analysis to identify performance gaps and recommend improvements.

  • Deliver customer and channel segmentation to optimise engagement strategies and sales campaigns.

  • Partner with data...

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