Research Manager (Analytics/Data Science)

Harnham
London
2 days ago
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Job Description

RESEARCH MANAGER (ANALYTICS/DATA SCIENCE)

Up to £60,000

LONDON – OFFICE-LED (4 DAYS A WEEK, FRIDAYS AT HOME)


Please note, you must be a UK resident with full right to work


ABOUT THE BUSINESS

This fast-growing B2B research technology startup is on a mission to close the “understanding gap” between what organisations believe about people and reality.


Using AI-driven methodologies, the business delivers deeper, faster, and more accurate insights at a fraction of the cost and time of traditional research approaches. The team brings together experienced researchers and cutting-edge engineers to fundamentally rethink how market and audience insights are generated.


With around 50 employees and operating at Series A–B stage, the company works with major brands and mission-driven organisations. A new AI-powered product launch marks the next phase of growth, creating an exciting opportunity to shape and scale its analytics capability.


THE TEAM

You’ll join a highly collaborative team of researchers, analysts, and engineers who work closely to push the boundaries of modern research and analytics.


The environment is intellectually curious, ambitious, and fast-moving, w...

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