Graduate Data Analyst

Asset Resourcing Limited
London
4 months ago
Applications closed

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Graduate Data Analyst - Insurance Sector - Hybrid 3 days City HQ - £28,000-£30,000

Our client are seeking a Class of '25 Computer Studies or Data Science Graduate to cross-train into a detail-oriented and efficient Underwriting Technician (Data Analyst) and join their team at a leading UK-based insurance broker, specialising in film, television, music and sport insurance. This role is integral to maintaining the accuracy and integrity of underwriting, policy, and client data across their entertainment insurance programs. The ideal candidate will ensure that information is processed correctly and in compliance with company and carrier requirements, supporting smooth operational workflows across the business.

Graduate Underwriting Technician - Key Responsibilities:

  • Accurately input, update, and maintain policy, client, and underwriting data within internal systems and databases.
  • Verify and reconcile data for completeness and accuracy, addressing any discrepancies as needed.
  • Support underwriters and operational teams by providing timely and accurate data processing.
  • Generate and distribute routine reports from databases as required.
  • Assist in database cleansing to ensure data is up to date and compliant.
  • Ensure all data entry activities comply with company, carrier, and regulatory requirements (FCA standards).
  • Liaise with in...

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