16. 12 Quantitative Insight Manager Filter-MARKET RESEARCH

Zealousagency
Leeds
2 months ago
Applications closed

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Are you looking for a Quantitative Insight Manager opportunity that will elevate your market research career?


Do you want to take ownership of quantitative research projects for a forward-thinking, award-winning insights agency?


One of the most reputable research agencies in the UK are looking for an enthusiastic Insight Manager to join their growing team. With focus to Quantitative methodologies, the Insight Manager will lead on full research project life cycles across a variety of sectors.
This is an excellent position for a passionate quantitative researcher who is eager for personal and professional development, working with industry experts and global brands.


Duties and responsibilities:



  • Managing research projects from start to finish; inclusive of proposal writing, research design, project management, data analysis, producing reports and presenting findings
  • Mentoring junior team members and supporting their professional development within the industry
  • Maintaining successful client relationships, creating innovative solutions and providing strategic advice for clients
  • Developing new business relationships to facilitate agency growth

Skills and experience:



  • Market research agency experience at Research or Insight Senior Exec level or higher
  • Have an excellent eye for detail and the ability to deliver high quality work
  • Demonstrate great organisational and time management skills
  • Flexible approach to research with the ability to work well under pressure
  • Self-motivated, driven and adaptable with the desire to learn new techniques
  • Be passionate about leading and supporting a team
  • Have a relevant degree in social sciences or market research related topics

Not only will you become part of a rewarding and supportive culture, you will receive a competitive salary, performance bonus, generous holiday allowance and plenty of social events.


This role can be worked flexibly from Leeds.


If you're interested in this rare insight opportunity, then please apply today!


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