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Quantitative Research Manager – Tech & AI Empowered Research Agency

SPALDING GOOBEY ASSOCIATES
London
1 week ago
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This Tech & AI-enabled agency has created a dynamic platform and data products to enable a range of clients to acquire powerful data about what we think and do as consumers and citizens.

They are on a mission to close the knowledge gap on public opinion and offer clients deep insight at the speed of software.

Their superstar research team is the cornerstone of achieving this and they are looking to expand the team. This will be a varied role — one day you may be working with some of the largest media or consumer goods companies another day you may be helping a smaller non-for-profit organisation achieve their own mission.

In this role, you will work closely with clients, running projects end-to-end, and helping clients get the most out of the platform and the research. To do this you will:

  • Independently own and deliver quantitative research projects across a range of sectors and audiences including political, consumer and B2B
  • Lead client calls and comms to scope out projects, provide updates during projects and briefings on findings and results.
  • Be ultra responsive to client needs and requests
  • Partner with consulting and analytics teams to deliver large-scale insight projects.
  • Manage, coach and help to develop researchers in your team
  • Own and expand client accounts.

This is a great role for someone who has built great foundations in their knowledge of qua...

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