Associate Director - Quantitative

Aspire
London
2 weeks ago
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THE COMPANY

Our client is a research consultancy, based in London. They are currently looking for an Associate Research Director to join to work on a range of quantitative projects within the technology sector. The company offers a highly competitive salary and benefits package, hybrid working, development and progression opportunities.

This role will suit someone who has strong quantitative research skills, is passionate about working with big tech clients.

The Role:-

In this role, you will be responsible for leading, managing and overseeing projects from inception through to completion. You will be working with a wide range of technology clients, utilising in-depth quantitative surveys across both B2C and B2B audiences.

Although this is a quantitative role, there will be opportunities to get involved with qualitative research on occasions.

Key Duties Include:-

  • Responding to briefs, writing proposals and pitching to win business
  • Designing robust and rigorous research methodologies, to ...

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