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Data Engineer Lloyd's Underwriting Experience

Finitas
London
8 months ago
Applications closed

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London - hybrid role 2/3 days in the officeUp to £90,000 pa (DOE)Finitas are working with a long established leading specialist insurance and reinsurance business, underwriting through Lloyds. They are on the search forData Engineerto join them on a permanent basis.This is an exciting opportunity to assist in designing, building, and maintaining the data infrastructure of the organisation. You will be reporting into the Head of Data Management and be responsible for building and maintaining the deployment pipelines, including source control.They are looking for the following experience:

  • Must have 7+ years in a similar role within the insurance industry, ideally underwriting
  • Proven knowledge of database systems, Microsoft SQL (SSIS, SSAS) and ETL tools
  • Understanding of cloud-based data solutions, preferable Azure

This is a fantastic opportunity and interviews are happening next week, this role won't be around for long! Please register your interest by sending your CV to g.sandhu @ finitas.co.uk

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