Associate Director/Research Director (Quantitative)

Aspire
London
1 day ago
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Are you a senior candidate looking to work on a whole range of sectors? Then you could be the perfect fit for this research agency in this flexible role!
JOB TITLE: Associate Director/Research Director (Quantitative)
SALARY Up to £60k / Up to £80k
LOCATION: London (3 days in the office)

THE COMPANY
We are working with an organisation that helps brands understand and anticipate consumer behaviour using research, AI-driven insights, and segmentation to turn data into actionable strategies across industries. By supporting brand strategy, innovation, and shopper experience through behavioural insights, ethnography, analytics, and tools like brand tracking and concept testing, they translate complex consumer behaviour into clear growth opportunities.
They are currently looking to bring on an Associate Director/Research Director level candidate, who has experience in or is looking to work projects within the consumer sector for a variety of clients.
KEY DUTIES
Owning key account relationships, spending time understanding the priorities and needs for clients
Being a quality gatekeeper, ensuring that the work delivered is something to be proud of
Getting involved in the day to day, from helping shape questionnaires and conducting analysis
SKILLS & EXPERIENCE
Previous experience writing winning proposals, and designing bespoke solutions to answer client's business questions
Previous experience pro-actively growing existing accounts
Previous experience developing and pushing more junior members of the team, helping drive progression
Interested in this position? Apply now and let's have a chat!
We Are Aspire Ltd are a Disability Confident Committed employer

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