Manager, Data Science

LHH Recruitment Solutions
London
3 days ago
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Join Our Team as a Data Science Manager.We are on the lookout for a dynamic and innovative Data Science Manager to lead a talented team of Data Scientists in London or Reading. Our client's mission revolves around leveraging primary research and marketing effectiveness solutions to unlock consumer beliefs and behaviours.

What You'll Do:As the Data Science Manager, you will be at the forefront of data-driven initiatives. Your responsibilities will include:* Strategic Leadership: Drive the vision and strategy for the data science team, fostering a culture of innovation and collaboration.* Team Development: Mentor and develop a diverse team of data scientists, empowering them to leverage cutting-edge techniques in machine learning and analytics.* Cross-Functional Collaboration: Work closely with marketing, product, and research teams to translate data insights into actionable strategies that enhance brand loyalty.* Insight Generation: utilise advanced statistical methods and algorithms to uncover deep insights from consumer data, informing marketing effectiveness solutions.* Technology Evolution: Stay ahead of industry trends, ensuring adoption and integration of the latest technologies and methodologies.

What We're Looking For:* Expertise: Proven experience in data science, with a strong portfolio of successful projects and initiatives.* Leadership Skills: A history of leading high-p...

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