BI Engineer / BI Developer / Data Engineer

P&I Insurance Services
London
6 days ago
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BI Engineer / BI Developer / Data Engineer role at P&I Insurance Services


Location: City of London, England, United Kingdom


Salary: Up to £80,000 per annum


Business Intelligence Engineer


Key Responsibilities

As Business Intelligence Engineer, you will be responsible for providing data and management information expertise across the business, including:



  • Leading the design, development, and maintenance of data management and data visualisation solutions to support data-driven decision making
  • Applying insurance data knowledge to work closely with business stakeholders, delivering solutions that are fit for purpose
  • Designing, building, and maintaining reporting and business data layers on top of the Azure Cloud data warehouse to ensure consistency and ease of reporting
  • Partnering with business users and IT to produce accurate, timely, and meaningful Management Information (MI) that reflects business performance and requirements
  • Liaising with IT to ensure appropriate management information systems, processes, and security controls are in place
  • Supporting enterprise-wide automation initiatives to improve efficiency and scalability
  • Contributing to special projects as required and completing additional duties as assigned

Skills & Knowledge

  • Strong SQL skills (essential); experience with R, Python, or other programming languages is an advantage
  • Advanced knowledge of Microsoft Excel, Word, and Access
  • Expert experience with data visualisation tools such as Power BI, Tableau, Qlik, or Looker
  • Excellent verbal and written communication skills

Education & Experience

  • Bachelor's degree in Computer Science, Mathematics, Actuarial Science, or another quantitative discipline
  • Minimum of 5 years' experience in data analytics, management information, or business intelligence roles
  • Experience within insurance and/or financial services preferred
  • Proven experience working in cloud-based data and analytics environments
  • Hands‑on experience with BI tools and systems, particularly Power BI

Seniority level: Mid‑Senior level


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