Data Scientist

Formula Recruitment
City of London
1 day ago
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Data Scientist


Location: London Hybrid – 2 days a week

Salary: Up to £70,000 + benefits


Do you want to shape growth strategy at a global entertainment leader where data, AI and advanced analytics power unforgettable experiences?


We’re looking for a Data Scientist who’s passionate about turning complex, large-scale data into predictive models and actionable insights that directly influence commercial decisions and long-term growth.


What You’ll Do as a Data Scientist

  • Take ownership of high-impact growth use cases across marketing, pricing and demand forecasting.
  • Design, build and deploy predictive models and advanced analytics solutions that unlock new revenue opportunities.
  • Work with large, diverse datasets to uncover patterns and trends that inform strategic decision-making.
  • Partner with Growth, Strategy and Technology teams to embed scalable data science solutions into operational systems.
  • Translate complex technical outputs into clear, compelling insights for senior stakeholders.
  • Drive experimentation and optimisation initiatives to improve performance across commercial channels.
  • Champion AI and machine learning innovation, staying ahead of industry best practice.
  • Promote ethical data use, governance and compliance across all analytics initiatives.


What You Bring as a Data Scientist

  • Degree in Computer Science, Mathematics, Engineering or a related field.
  • Proven experience in a data science or statistical role.
  • Expertise in advanced analytics techniques including machine learning, optimisation and segmentation.
  • Strong proficiency in Python, SQL and Spark SQL.
  • Experience working with large datasets and distributed computing tools such as Azure Synapse and Snowflake.
  • Familiarity with data transformation tools (Databricks, Azure Data Factory) and ML platforms (Azure ML, TensorFlow).
  • Experience with data visualisation tools such as Power BI.
  • Strong commercial acumen with the ability to translate business problems into scalable analytical solutions.
  • Excellent collaboration and stakeholder influencing skills.
  • Knowledge of governance, compliance and ethical AI frameworks.


Why You’ll Love It Here

  • Competitive Salary
  • Hybrid working model
  • Private pension scheme & life assurance
  • Employee assistance programme
  • Access to Perks at Work with thousands of national & local discounts
  • Ongoing training and development opportunities


If you’re ready to use data science to drive global growth and create meaningful business impact, apply now for this Data Scientist role and help power unforgettable experiences through insight and innovation.


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

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