Senior Data Scientist

trg.recruitment
Liverpool
4 months ago
Applications closed

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Senior Data Scientist (Marketing Mix Modelling (MMM), A/B Tests, Causal Inference)

Employment Type: Contract (Outside IR35)

Length: 12 months

Contract Rate: 500 - 550


We’re looking for someone who enjoys solving complex problems at the intersection of data, marketing, and technology. You’ll play a key role in building models, experiments, and optimisation tools that help shape how marketing decisions are made.


What you’ll do


  • Develop analytical models to understand the impact of marketing activities.
  • Design experiments and frameworks to measure incremental value across channels.
  • Build optimisation tools to guide budget allocation and improve return on investment.
  • Apply advanced statistical and causal inference methods to separate organic performance from paid effects.
  • Work with relational and graph-based data to uncover links between audiences, campaigns, and outcomes.


What we’re looking for

  • Several years of experience in data science, econometrics, or marketing analytics.
  • Strong knowledge of statistical modelling and causal inference techniques.
  • Practical experience with optimisation methods and experimentation.
  • Hands-on experience with marketing mix modelling and media attribution models.
  • Proficiency in Python and common machine learning or statistical libraries.
  • Familiarity with graph databases or similar tools for complex data relationships.


If interested please apply directly or send me an email to

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