Head of Data Science & Analytics, Product & Marketing

Preply
City of London
4 days ago
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A dynamic Ed-Tech company is seeking a leader for their product and marketing analytics to enhance decision-making through data-driven strategies. In this strategic role, you'll shape the analytics vision and govern the experimentation practice, driving measurable business outcomes. Ideal candidates have 12+ years in analytics, deep experience in marketing measurement, and a proven ability to lead teams effectively. You will cultivate a culture of rigor and insight across the organization, ensuring high standards in analytical practices and engagement with stakeholders.
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