Exposure Management Data Analyst

Spencer Rose Ltd
London
4 days ago
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Exposure Management Data Analyst Insurance - London

Up to £74,000 plus benefits

SQL Power BI Python Exposure Management

This is an excellent opportunity for an Exposure Management-focused data professional to join a growing and strategically important Exposure Management (EM) function within a highly regarded London Market insurance business.

This is not a pure reporting or operational data role. We are specifically looking for someone who understands Exposure Management in practice - including the broader commercial, modelling and portfolio challenges associated with EM data - and can combine strategic thinking with hands-on delivery.

My client is investing heavily in strengthening underwriting insight, portfolio optimisation and catastrophe risk management capability. This role sits at the heart of that transformation, requiring someone who can move quickly, think critically, and translate complex EM data challenges into scalable, high-impact solutions.

You will work closely with Exposure Management, Catastrophe Modelling, Underwriting and Technology teams, acting as a key bridge between domain experts and data execution.

Key Responsibilities

  • Partner directly with Exposure Management and Catastrophe Modelling teams to understand real-world portfolio and accumulation challenges

  • Design and deliver...

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