MMM Data Scientist Contractor

Harnham - Data & Analytics Recruitment
London
2 months ago
Applications closed

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£500-600pd Outside IR35

3 months

We are working with a leading consultancy that is looking for an experienced Marketing Mix Modelling (MMM) Data Scientist to join on a contract basis. This role will focus on delivering robust marketing effectiveness and ROI insights for high-profile clients across multiple sectors.

The Role

As an MMM Data Scientist, you will play a key role in designing, building, and validating marketing mix models to inform strategic marketing decisions. You will work closely with consultants, client stakeholders, and analytics teams to translate complex data into clear, actionable recommendations.

Key Responsibilities

  • Design and build Marketing Mix Models to measure marketing effectiveness and ROI

  • Analyse large, complex datasets covering media spend, sales, and external factors

  • Apply statistical and econometric techniques to model impact and attribution

  • Use Python and/or R to develop, test, and deploy models

  • Use SQL to extract, transform, and analyse data from multiple sources

  • Support scenario planning, forecasting, and budget optimisation

  • Present insights and recommendations clearly to non-technical stakeholders

  • Collaborate with consulting teams to deli...

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