Director of Data Science

Formula Recruitment
London
3 days ago
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Director of Data Science

Location: Hybrid, London Area

Salary: Up to £135,000


A global consumer experiences organisation is investing heavily in data, analytics and AI to drive growth across its international portfolio. They are now hiring a Director of Data Science to lead enterprise-wide insight, advanced analytics and AI initiatives that directly impact revenue, efficiency and customer engagement.


This role sits at the intersection of business, data and technology. The Director of Data Science will act as a strategic partner to senior Growth leadership and Technology teams, translating complex data into clear, actionable insight. You will own the growth intelligence agenda and lead a high-performing team of data scientists delivering measurable commercial outcomes.


Key Accountabilities as Director of Data Science

  • Strategic Business Partnership – Partner closely with Growth leadership to enable data-led decision-making across pricing, personalisation, demand forecasting and customer engagement. Provide insight that informs annual planning and long-term growth strategy.
  • Advanced Analytics and Insight – Lead analytics initiatives across experimentation, forecasting and customer behaviour. Integrate internal and external datasets to deliver robust, scalable insights aligned to business objectives.
  • Experimentation and Optimisation – Drive large-scale testing across digital, CRM and marketing channels, optimising pricing, promotions and creative performance.
  • AI and Predictive Analytics – Champion the adoption of AI, machine learning and predictive analytics, embedding models and tools into core business processes to deliver tangible impact.
  • Analytics Platforms and Governance – Oversee analytics platforms, ensuring data integrity, scalability and operational efficiency. Promote data literacy and make insight accessible across the organisation.
  • Leadership and Collaboration – Lead, coach and develop a team of data scientists. Partner with Technology and global stakeholders to deliver insight-led initiatives and foster a data-driven culture.


Experience and Qualifications as Director of Data Science

  • 10+ years’ experience in analytics, data science or business intelligence, with 5+ years in leadership roles
  • Proven experience delivering enterprise-scale analytics or AI transformations in global organisations
  • Strong hands-on experience with SQL, Python or R, and BI tools such as Tableau or Power BI
  • Demonstrated ability to translate complex analysis into clear commercial recommendations
  • Experience embedding AI, machine learning and predictive analytics into business processes
  • Strong stakeholder management and executive-level influencing skills
  • Advanced degree in a relevant field preferred


This is a rare opportunity for an established Director of Data Science to own critical technical decisions, influence platform strategy, and build systems at scale that genuinely matter for a leader within the entertainments space.


**Unfortunately, due to the volume of applications, not all submissions will receive feedback.

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