Quantitative Research Manager - Tech and AI Empowered Research Agency

MrWeb Ltd.
City of London
1 month ago
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Quantitative Research Manager - Tech and AI Empowered Research Agency London (Hybrid Working) GBP 50-60,000 + benefits (posted Aug 13 2025)

Company: Spalding Goobey Advertisers Ref: 746431 MrWeb Ref: 162421


Job Spec: 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 multi‑market)
  • 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
  • Create data tables and other custom outputs for clients using DisplayR.
  • Partner with our consulting and analytics teams to deliver large‑scale insight projects. And occasionally support with leading these end‑to‑end 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 quant market research and is now looking to get more ownership and autonomy. You will be a great fit if you have:



  • 3-5 years as a researcher in the quantitative market research industry.
  • You can help clients see around corners by spotting pitfalls from poor sampling, survey design decisions and then working with them on a pragmatic solution.
  • Experience of the full lifecycle for delivering market research projects from survey design through fieldwork and data delivery/outputs.
  • Track record delivering high‑quality quantitative research across a range of use cases, such as brand tracking, brand lift/health studies, message and ad testing, and segmentations.
  • Comfortable scripting and designing surveys to a high standard.
  • Commercially minded.

This will be a great fit for you if you are curious, detail‑oriented and goal‑driven. You will get a lot of autonomy and trust to flex your critical thinking and deliver exceptional client service. Clients come first, and you're committed to helping them succeed. You love to help clients see around corners and you're motivated by their success. In addition, you are keen to learn new methods, technologies, domains, etc. We're here to support you in all your learning efforts!


Who to contact: Email your CV (in confidence) to , quoting the reference above, or contact Andrew Goobey, Andrew Mercer, Caroline Rock or Rebecca Meaton on


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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