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Quantitative Researcher, Reporting & Insights (SRE/RM Level)

London
4 days ago
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Quantitative Researcher - Reporting & Insights (SRE/RM Level)

Role: Freelance Quantitative Researcher - Reporting & Insights
Seniority: Senior Research Executive / Research Manager
Duration: 1-2 weeks, potentially scaling to 3-4 weeks

Overview:
We're looking for a freelance researcher to support the creation of topline reports from survey data. The role involves interpreting data tables, identifying key insights, and building client-ready reports using Word and PowerPoint templates.

Key Responsibilities:

Review and interpret survey data tables
Identify key insights and trends
Draft topline reports using templates
Collaborate with internal teams to shape narrativesSkills & Experience:

Strong analytical and storytelling skills
Experience in writing client-ready reports
Familiarity with market research reporting formats
Comfortable working within structured templates and team directionWe Are Aspire Ltd are a

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