Marine Insurance Data Analyst — Insights & Reporting (Hybrid)

WTW
Ipswich
2 weeks ago
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A leading risk management firm in Ipswich is seeking a dynamic data professional to interpret customer data and present insights. The role involves designing reports, performing analysis, and preparing deliverables. Strong analytical skills, experience with Power BI, and excellent communication abilities are essential. Employees enjoy a robust benefits package including private healthcare, generous leave, a pension scheme, and hybrid working options to support career and personal growth.
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