Principal Marketing Science Manager - Data Science

MBN Solutions
London
1 year ago
Applications closed

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Principal Data Scientist

Principal Data Scientist and Machine Learning Researcher

Marketing Science Manager - Data Science

£60,000-£65,000

Role based in either London, Manchester or Leeds Locations (flexible working working options available)


MBNs client, a leading Marketing Effectiveness and Decision Science consultancy, is in search of a Principal consultant to join and lead their team.


Great opportunity for an experienced Econometrician/Marketing Science professional looking to move into a dynamic consultancy that offers flexible working options.


This is an opportunity to lead measurement projects and work with key accounts, specialising in a specific industry, allowing for in-depth expertise development.


Key Responsibilities

  • Lead measurement projects and develop key accounts
  • Ensure quality control output and perform statistical modelling
  • Integrate research insights from various sources to build compelling insight stories
  • Training, mentoring, and supporting analysts in developing modelling expertise
  • Specialising in a particular industry vertical and collaborate with sector experts
  • Translating analytics results into actionable recommendations
  • Supporting new business efforts to generate revenue, including identifying opportunities, writing proposals, and participating in pitches


Skills & Experience

  • Several years plus in MMM with project leadership skills to guide and mentor analysts.
  • Proficiency in statistical modelling techniques such as Market Mix modeling
  • Experience in integrating and analysing data from various sources to derive actionable insights
  • Strong understanding of marketing principles and competitive strategy
  • Strong business acumen and strategic thinking to drive revenue efforts
  • Relationship-building skills
  • Excellent presentation abilities to communicate complex insights effectively

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