Quantitative Senior Research Executive (FMCG)

MrWeb Ltd.
City of London
1 month ago
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Quantitative Senior Research Executive (FMCG) Central London / hybrid

GBP 35-40,000 - (posted Jun 17 2025)


Company: Hannelius Recruitment Advertisers Ref: N/A MrWeb Ref: 162305


About Our Client

Our client is on the lookout for a talented Senior Research Executive to join their dynamic and ambitious quantitative team in London. You'll be part of a vibrant, supportive environment, delivering tailored research solutions for a diverse range of high-profile clients.


About You

You'll have already demonstrated strong career momentum and experience from UK-based market research agencies and are eager to continue your growth. You're ready to make an immediate impact and hit the ground running.


Key Responsibilities

  • Support the team from initial brief through to final delivery
  • Design well-structured questionnaires
  • Analyse data using a variety of tools, translating findings into clear, actionable recommendations
  • Deliver compelling, insightful presentations that effectively communicate results to clients.

What our client offers

  • Flexible hybrid working model, with around three days a week in the office
  • Excellent employee benefits
  • Opportunities to progress quickly.

Who to contact: In order to apply please send your CV to Maarit Yli-Korpula at


IMPORTANT - PLEASE INCLUDE YOUR NAME AND EITHER YOUR RETURN E-MAIL ADDRESS OR TELEPHONE NUMBER IN THE MESSAGE. Please say that you found the vacancy on MrWeb! Thanks for your interest.


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