Research Analytics Manager

Harnham
1 year ago
Applications closed

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RESEARCH ANALYTICS MANAGERSalary: Up to £65,000Location: London (4 days per week in-office)About the Role:Are you a curious, ambitious Market Research Data Professional? Ready to step up and make a real impact? Harnham is working exclusively with a fast-growing research company, and we’re looking for someone who wants more ownership over projects, from kick-off to completion. In this role, you’ll be central to helping clients leverage our innovative platform to make smarter decisions.Key Responsibilities:Lead data analysis across market research projects, utilizing both quantitative and qualitative approaches.Build predictive models, segment consumer groups, and apply advanced analytics to surface key insights and trends.Utilize machine learning and statistical tools to refine data-driven strategies for product, marketing, and customer insights.Collaborate closely with market researchers, product teams, and key stakeholders to deliver actionable recommendations.Manage data wrangling and preparation tasks, ensuring high data integrity and consistency.Stay current on the latest developments in data science, analytics tools, and market research technology.What We’re Looking For:Degree in Data Science, Statistics, Economics, Marketing, or a similar field.Minimum 4 years of experience in data science or analytics, ideally with a focus on market research or consumer insights.Skilled in Python or R, with experience in handling large datasets and data preparation.Solid understanding of machine learning and statistical techniques, including regression, clustering, and classification.Strong communicator who can translate complex findings into meaningful insights for various audiences.Familiarity with market research processes, including survey design, segmentation, and behavior analysis.How to Apply:Ready to make your mark? Submit your application through the link below!

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