Business Intelligence Developer

William Grant & Sons
Cumbernauld
1 week ago
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We’re seeking a Business Intelligence Developer to help strengthen our BI capability and ensure the organisation has access to accurate, trusted and well‑governed reporting and insights solutions.


In this role, you’ll work at the core of our data platform, supporting critical business cycles and contributing to the ongoing maturity of our BI, Data and Insights strategy.


What You Will Be Doing

  • Ensure the integrity and governance of the WG&S Data Platform to deliver trusted reporting and insights solutions.
  • Review and validate new reporting requirements, identifying risks, gaps and impacts on the existing data model.
  • Apply strong knowledge of data‑modelling and platform concepts to ensure solutions are designed and maintained effectively.
  • Develop and maintain documentation — including Report Design Specifications and testing templates — to support internal processes and continuous improvement.
  • Deliver and maintain the BI platform to support key business cycles such as FX, LYA, 5YP, FYE and Budget.
  • Support the promotion and deployment of new BI content through the development lifecycle.
  • Ensure delivered solutions align with governance principles, business needs and service delivery standards.
  • Contribute to improvements in process efficiency, performance and BI quality.
  • Champion the BI strategy with business leaders, encouraging engagement and adoption.
  • Share knowledge proactively, maintaining documentation and procedures to required standards.
  • Provide end‑to‑end support for BI applications and Data products, ensuring service levels and system availability targets are met.

About You

You understand how data underpins effective decision‑making and take pride in creating reliable, well‑structured BI and insights solutions. You communicate clearly, collaborate well with stakeholders, and bring a practical, governance‑focused mindset to every task.


This role would suit:



  • A BI Developer who wishes to migrate to a MS Fabric solution
  • A Data Analyst or SQL specialist wanting to deepen their BI and modelling expertise.
  • Someone confident handling complex datasets supporting financial and operational reporting cycles.
  • An individual who values structure, documentation and strong development practices.
  • A collaborator who can explain technical concepts to both technical and non‑technical audiences.

If you’re motivated by building trusted BI, Data and Insights solutions and strengthening an organisation’s data capability, we’d love to hear from you.


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