Senior Data Science Manager

OneFamily
Peterborough
10 months ago
Applications closed

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Senior Data Scientist

We are seeking a Senior Data Science Manager to lead complex analytical processes, transforming structured and unstructured data into actionable insights that drive efficiency and growth across all OneFamily business areas. You will design, develop, and deploy predictive and prescriptive models using advanced machine learning techniques, ensuring accuracy and assurance. Your focus will be on adding value through future business data requirements and quantifying data value. Key responsibilities include collaborating with stakeholders to maintain data accuracy and compliance, providing commercially focused insights, developing analytics reports and dashboards, and effectively communicating recommendations. You will also support and mentor a team of data scientists and machine learning engineers, ensuring all activities align with budgets and timelines.

Join us to make a significant impact with your data expertise!

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