Marketing Researcher - Quantitative Research and Reporting

ABL
London
3 weeks ago
Applications closed

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Fantastic opportunity to work at the intersection of research, insights, and creativity, delivering high-impact projects for aspirational brands and turning data into stories that drive strategy and creative campaigns.

Job title: Marketing Researcher - Quantitative Research and Reporting

Job type: Permanent/Full-time

Location: London (Hybrid: 4 days on-site)

Salary: £45,000/year

My client is a leading creative consultancy working with some of the world's most prestigious brands. They are looking for a French speaking Marketing Researcher - Quantitative Research and Reporting to join their Intelligence team. In this role, you'll help turn data into insights that really matter, supporting brand tracking, ad hoc studies, creative evaluation, and social/digital analytics. You'll work closely with the Data & Insights Director, translating complex data into clear, actionable recommendations that shape strategy and fuel creative campaigns.

Key Responsibilities:

Understanding Client Needs - Evaluate research briefs and recommend the best approach or provider in collaboration with the Data & Insights Director.
Project Management - Own projects from questionnaire creation to final delivery, keeping the Ops/PM team updated.
Ensuring Accuracy - Ensure research results, analysis, and reports are precise; support team members to maintain high standards.
Collaboration & Knowledge Sharing - Share insights and learnings with the Intelligence team to strengthen overall output.
Managing Relationships - Maintain positive relationships with third-party providers while safeguarding client interests.

Candidate Requirements :

Strong experience in quantitative research; some knowledge of qualitative research is a bonus.
Familiarity with consumer research tools (e.g., GWI) is desirable.
Knowledge of social media and website analytics a plus.
Excellent organisation, project management, and communication skills.
Collaborative, proactive, flexible, and detail oriented.
Business-proficient French (written and spoken) is a plus

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