Senior MI and Data Analyst

HJF Promotional Products
City of London
1 month ago
Applications closed

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Senior MI and Data Analyst – HJF Promotional Products

A leading insurance organisation is looking to hire a Senior MI Analyst to join a newly created Data team. You will play a key role in providing analytics and insights to the senior leadership team of market performance data, highlighting market, syndicate or class level trends.


Key Requirements

  • Lloyd's/London Market (re)insurance experience is essential – Personal Lines Insurance experience would be considered
  • Understanding of insurance P&L accounting practices and performance drivers
  • Understanding of data quality, data governance, and MI best practices
  • Understanding of portfolio management and how it operates within syndicate business plans
  • Technical underwriting expertise and knowledge
  • Analytical capability with strong data manipulation skills (Excel, Power BI, Qliksense)
  • Ability to produce clear, insightful MI and performance reports for senior stakeholders
  • High attention to detail, demonstrating thoroughness and accuracy

Seniority Level

Mid-Senior level


Employment Type

Full-time


Job Function

Finance


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