Permanent Business Data Analyst - The City, London

Broad Street, Greater London
2 months ago
Applications closed

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Permanent Business Data Analyst - London Market Insurance - The City, London

A great opportunity to join a London Market insurance organisation as a permanent Business Data Analyst. You must have a background of working in The London Market insurance sector, and have the following skills:

  • Experience of working with the implementation of London Market Insurance Policy Administration Systems (PAS) or migrations from legacy platforms onto a new PAS.

  • Data experience, to include ETL processes, using tools such as SQL or similar.

  • Process mapping and requirements gathering.

  • Excellent stakeholder management.

  • As is and to be analysis and documentation.

  • Experience of any Lloyd's Messaging platforms such as PPL, Accord

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