MMM Data Scientist

Xcede
London
3 days ago
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MMM Data Scientist (Staff Level)
?? Remote (UK)
?? 12-Month Contract
?? Outside IR35
Were partnering with a boutique analytics consultancy supporting Private Equity-backed businesses on high-impact marketing and growth strategy. Theyre looking for a Staff-Level MMM Data Scientist to lead advanced marketing measurement initiatives in a hands-on, end-to-end capacity.
Youll deliver Marketing Mix Modelling (MMM) alongside attribution, experimentation, causal inference, geo-testing, and LTV analysis owning projects from problem framing through to executive presentation. The role involves direct exposure to senior stakeholders, translating complex analytics into clear commercial recommendations that influence budget allocation and growth strategy.
Requirements:

  • Proven MMM experience in commercial environments
  • Strong Python, SQL, dbt, and data visualisation skills
  • Background in marketing science / growth analytics
  • Comfortable operating as a senior individual contributor with high autonomy
  • Strong communication skills with non-technical stakeholders

A high-impact contract role offering real ownership and executive visibility.

AMRT1_UKTJ

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