Data Analytics Engineer

Pavilion Recruitment Solutions
City of London
4 days ago
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As a Data Analytics Engineer, you’ll play an important role in developing and maintaining the data and analytics capabilities that support our actuarial and risk teams. Working within a Risk & Actuarial environment, you’ll help build reliable, scalable data pipelines and CI/CD frameworks that enable actuaries to deploy Python-based models into Azure with confidence.

You’ll work closely with the Head of Analytics Engineering and fellow engineers to deliver high-quality, production-ready solutions. This is a hands-on role focused on building, improving and supporting our analytics platforms, with opportunities to contribute to technical design discussions and continuous improvement initiatives.

Data Analytics Engineer: What You’ll Be Doing

  • Design, build and maintain robust data pipelines and analytics solutions to support actuarial modelling and risk analysis.
  • Support and enhance Azure-based CI/CD pipelines used to test, validate and deploy Python actuarial models.
  • Develop reusable Azure components and automation to improve consistency, efficiency and reliability.
  • Contribute to technical design discussions, helping to shape practical and effective engineering solutions.
  • Work closely with actuarial SMEs to translate analytical requirements into well-engineered solutions.
  • Collaborate with product teams and other engineers to deliver pragmatic solutions to real business problems.

What You’ll Bring

  • Solid experience with Python and SQL, ideally in an analytics or data engineering context.
  • Experience working with CI/CD pipelines and DevOps practices, particularly for analytics or model-driven workloads.
  • Practical knowledge of the Azure ecosystem (e.g. Azure DevOps, Pipelines, storage and compute services).
  • Experience building or supporting production-grade data pipelines or analytics platforms.
  • A thoughtful, detail-oriented approach to engineering, with a focus on simplicity and maintainability.
  • Strong communication skills and the ability to work effectively with both technical and non-technical stakeholders.

Nice to Have

  • Experience working with actuarial, risk, or quantitative modelling teams.
  • Familiarity with Python testing frameworks and model validation approaches.
  • Exposure to infrastructure-as-code or modular cloud design patterns.


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