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Data Engineer - Reinsurance Data & Insights

Guy Carpenter
City of London
1 week ago
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Data Engineer - Reinsurance Data & Insights

We seek a talented Data Engineer who, working alongside our Lead Data Engineer, will help us build data‑driven applications, pipelines, and unified data models to collect, analyse, and visualise data on reinsurance transactions, market trends, and purchasing behaviour.


Join our Data & Insights practice within Global Specialties – we aim to enhance colleagues’ and clients’ understanding of reinsurance broking markets across London, Bermuda, New York, Singapore, and Mumbai.


Our ambition is to empower colleagues to provide comprehensive advice and assist clients in making well‑informed decisions regarding their reinsurance purchasing, risk appetite, and portfolio management. We embrace agile methodologies, focusing on delivering value through experimentation, frequent deployment, and close collaboration with stakeholders.


Responsibilities

  • Join a growing team and deliver solutions from concept to implementation.
  • Explore solutions for outdated applications, unstructured data, and decentralised file storage.
  • Collaborate and share best practices with other engineering teams at Guy Carpenter and Marsh McLennan.

Requirements

  • Background in analytics, data or software engineering roles.
  • Experience or good understanding of product management.
  • Strong communication and collaboration skills to work with business, technical and development teams.
  • Expertise in Python backend frameworks, ideally Django, FastAPI or Flask.

Preferred Experience

  • Experience with low‑code front‑end frameworks (e.g. Streamlit, Dash).
  • Experience with modern web development frameworks (React, Angular) and data analysis/visualisation tools (Databricks, SQL, Power BI).
  • Excellent problem‑solving and analytical skills.
  • A self‑starting approach to work.

Benefits

  • Professional development opportunities, interesting work and supportive leaders.
  • A vibrant and inclusive culture with talented colleagues creating new solutions that impact clients and communities.
  • Career opportunities, benefits and rewards to enhance well‑being.

At Guy Carpenter, you can be your best. We work on challenges that matter with colleagues who help bring out our best. Our collaborative environment will empower you to focus on your personal and professional success, learning from top specialists in the (re)insurance industry and leading you towards a rewarding and impactful career.


Equal Opportunity Employer

Marsh McLennan is committed to diversity, inclusion and a flexible work environment. We are an equal‑opportunity employer and provide reasonable adjustments to candidates with disabilities in accordance with applicable law.


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