Senior Research Executive/Research Manager (Quantitative)

WeAreAspire
London
1 month ago
Applications closed

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Senior Research Executive / Research Manager (Quantitative)

Salary: Up to £41k / Up to £52k


Location: London (3 days in the office)


About 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.


Key Duties

  • Manage end‑to‑end research projects, applying methodologies and designing questionnaires and client‑ready reports.
  • Lead day‑to‑day project logistics with accuracy, attention to detail, logical thinking, and efficiency.
  • Communicate confidently with clients, working proactively and enthusiastically while delivering insights clearly and intelligently consistently.

Skills & Experience

  • Experience managing UK and international quantitative research projects, with strong understanding of industry standards and regulations.
  • Proficient in Word, Excel, PowerPoint, Q, SPSS; detail‑oriented with excellent organisational and project‑management skills.
  • Strong communicator, adaptable under pressure, successfully manages multiple projects while meeting deadlines and maintaining quality.

Benefits & Perks

We Are Aspire Ltd are a Disability Confident Commited employer.


How to Apply

Interested in this position? Apply now and let's have a chat!


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