Catastrophe Risk Developer/Data Engineer

Avencia Consulting
London
1 month ago
Applications closed

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Exposure Risk Analyst — Catastrophe & Data Analytics

Senior Catastrophe Modelling Analyst — Risk & Data Strategy

We're working with a leading global specialty insurer to recruit a data engineer into a high-profile analytics function supporting underwriting, portfolio management, and risk strategy across international markets.

This is a genuinely embedded role within the underwriting business - not a back-office data function. You'll sit at the intersection of data engineering, advanced analytics, and insurance risk, helping to modernise platforms, automate workflows, and deliver best-in-class exposure and catastrophe insights.

If you enjoy owning technical solutions end-to-end, influencing senior stakeholders, and working with complex insurance data, this role offers real scope and autonomy.

The Role

As part of a multi-disciplinary analytics team, you'll take technical ownership of data engineering and analytical workflows that underpin exposure management and catastrophe analytics.

Key Responsibilities

  • Designing and enhancing data pipelines and analytical workflows to improve efficiency, insight, and scalability

  • Leading development initiatives to modernise legacy processes, improve methodologies, and enhance documentation

  • Supporting platform upgrades, model changes, and troubleshooting complex technical issues

  • Building automated tools using a modern data stack

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