Associate Director – Quantitative Research

Elizabeth Norman
Manchester
1 month ago
Create job alert

We’re hiring an Associate Director to join a fast-growing, award-winning research agency consultancy who work with some of the world’s most exciting brands across entertainment, tech, retail and more.

ána Director
Manchester, hybrid working (2-3 days a week in the office)

What you’ll be doing:
  • Leading ad hoc and tracking research projects
  • Applying a range of quantitative methodologies
  • Translating data into meaningful, commercial insight
  • Building strong, long-term client relationships
  • Contributing ideas and helping shape strategic thinking
What we’re looking for:
  • A few years’ experience in a market research agency
  • Strong quantitative research skills (mixed methods a plus)
  • Confident storyteller with great attention to detail
  • Comfortable owning projects from start to finish
  • Curious, proactive, and keen to progress

You’ll join a supportive, high-performing team that prioritises development, mentorship and clear career progression.

🔸 Please apply for next steps. We encourage applications from individuals of all backgrounds and actively seek to embrace diversity across age, gender identity, sexual orientation, disability, race, religion, and sex. For successful applicants, a recruitment consultant will be in touch via email to schedule a briefing call. We will explain the role in more detail and share the company details before creating a formal application. Note: Due to the high volume of applications we receive, only shortlisted candidates will be contacted.


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