Business Intelligence Engineer (Analytics Engineer / Senior BI Analyst)

i3
London
6 days ago
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i3 City Of London, England, United Kingdom


Senior Delivery Consultant at i3® | Agile Recruitment Solutions for the Age of Intelligence

📍 City of London | Leading Insurance Firm


Are you an experienced BI professional ready to make a real impact?


A City-based insurer is looking for a Business Intelligence Engineer to help drive the organisation toward a fully data-driven future. This is a fantastic opportunity to work closely with senior leadership, influence strategy, and build cutting‑edge data solutions within a fast-paced environment.


What You’ll Be Doing

  • Designing, developing, and maintaining advanced data management & visualisation solutions
  • Building data layers and reporting tools on top of an Azure Cloud data warehouse
  • Partnering with business units to deliver accurate, insightful MI
  • Enhancing automation across the enterprise
  • Supporting strategic projects and driving data consistency across the business

What We’re Looking For

  • Previous insurance industry experience is essential 🏦
  • 5+ years’ experience in BI, data analytics, or data management
  • Strong SQL skills; knowledge of Python/R is a bonus
  • Expertise in PowerBI, Tableau, Qlik, Looker or similar tools
  • Excellent communication skills and high attention to detail
  • Ability to thrive in a fast‑moving, deadline‑driven environment
  • Work for a respected City of London insurer
  • High‑impact, business‑critical role
  • Opportunity to help shape the company’s data strategy

đź“© Interested? Apply now or DM for more details!


Let’s take your BI career to the next level 🚀


Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Information Technology


Industries

Insurance, Insurance Agencies and Brokerages, and Insurance Carriers


Referrals increase your chances of interviewing at i3 by 2x


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