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Data Scientist with PyMC & Marketing Mixed Modelling experience

Lorien
City of London
3 days ago
Create job alert
Data Scientist with PyMC & Marketing Mixed Modelling experience

Job Type: Contract/Temporary


Location: London


Negotiable


Job Ref: BBBH160520_1762165166


Date Added: November 3rd, 2025


Consultant: Louis Poynter


Data Scientist with PyMc & Marketing Mixed Modelling experience

6 Months Contract

Inside IR35

Remote/1 day onsite a month

Bankside


My client a top Global company are currently looking to recruit a Data Scientist with PyMc & MMM experience to join their team on a 6-month contract basis. Please note if successful this position will need to set up via an Umbrella Company/PAYE. This Senior Data scientist required to work with our clients Data Science team to drive Marketing Effectiveness using Marketing Mix Modelling, Multi‑Touch Attribution, and other models.


Responsibilities

  • Oversee and be responsible for data collection including data extraction and manipulation, data analysis and validation.
  • Analyse all datasets to ensure that each KPI is understood, and data is ready for modelling.
  • Proficiency in using Excel/SQL/Python/Pandas to process, transform, create variables, and build models.
  • Build base models according to the project specification, incorporating all drivers of KPIs, providing rationale for variables selection, understanding coefficients and contributions.
  • Taking base models, oversee or build in additional improvements and progress the model towards finalisation
  • Create sales effect/ ROI workbook,
  • Create response curves and optimisation charts
  • Budget allocation. Run scenarios required to answer client objectives for the purpose of forward looking optimization,
  • Validate models, identify areas of weakness, suggest and test possible improvements and ensure robustness and validity.

Requirements

  • Proven experience in developing and implementing Marketing Mix Models
  • Be an expert in PyMc, Python and familiar with R programming for MMM Models
  • Have in depth understanding of statistical modelling / ML techniques
  • Experience with Regression based models applied to the context of MMM modelling
  • Solid experience with Probabilistic Programming and Bayesian Methods
  • Be an expert in mining large & very complex data sets using SQL and Spark
  • Have in depth understanding of statistical modelling techniques and their mathematical foundations,
  • Have a good working knowledge of Pymc and cloud-based data science frameworks and toolkits. Working knowledge of Azure is preferred
  • Have a deep knowledge of a sufficiently broad area of technical specialism (Optimisation, Applied Mathematics, Simulation)

MS or PhD degree in Data Science, Computer science, applied mathematics, statistics, or another relevant discipline with a foundation in modelling and computer science is highly desirable


Carbon60, Lorien & SRG - The Impellam Group STEM Portfolio are acting as an Employment Business in relation to this vacancy.


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