Portfolio Data Analyst

Zurich 56 Company Ltd
London
1 week ago
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Working hours: Part‑time, job‑share or full‑time basis.


Location: London/Hybrid


Salary: £25,000 to £32,000 depending on experience plus benefits.


Closing date for applications: 28th January 2026


Opportunity

Zurich is looking for a data and analytics professional to join the Personal Lines MGA portfolio management team. The role involves turning data into actionable insights to support profitable growth.


Responsibilities

  • Provide regular insightณฑ and analysis on large datasets under Portfolio Managers.
  • Demonstrate knowledge of analytical techniques and general insurance knowledgeað-
  • Show understanding of market developments, distribution channels, and competitive position.
  • Contribute to a positive, diverse, and supportive team culture.

Qualifications

  • Strong numerical ability and data manipulation skills.
  • Proficiency in coding or willingness to learn.
  • Experience in applying analytical techniques to gain insights into organisasi trends and profitability.

Benefits

  • 12% defined non‑contributory pension scheme.
  • Annual company bonus.
  • Private medical insurance.
  • Flexible holiday options and paid volunteeringನೆಯ.

EEO Statement

As an inclusive employer we want to ensure that all candidates feel comfortable and are able to perform at their best during the interview. You’ll have the opportunity to let us know of any reasonable adjustment or practical support needed when you apply.


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