Data Quality Analyst

Gravitas Recruitment Group (Global) Ltd
Greater London
2 months ago
Applications closed

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Headhunter Legal, Compliance, Risk & Governance (Lloyd’s and London Market Insurance)

Join a Leading Insurance Firm as a Data Quality Analyst!

This is your opportunity to drive change by leading the improvement and maintenance of a robust Data Governance Framework in a fast-paced, dynamic environment.

As a Data Quality Analyst, you’ll play a critical role in shaping data policies and improving delegated data quality—working closely with key teams like IT and Underwriting.

If you're passionate about data quality, innovation, and stakeholder collaboration, this is the perfect role for you.

Responsibilities

  • Work alongside teams to implement and enhance a cutting-edge Data Quality Framework.
  • Take the lead in mapping and validating DA bordereaux (risk, premium, and claims) to ensure accurate and timely data entry.
  • Drive the adoption of industry-leading best practices, tools, and standards across the business.
  • Tackle data quality challenges head-on and contribute to continuous governance improvements.
  • Track and measure data quality performance to ensure consistent excellence.
  • Manage DA bordereaux mapping and validation for Underwriting teams.

Experience

  • A strong understanding of delegated data and a passion for data management best practices.
  • SQL knowledge is a plus—an excellent opportunity to strengthen your technical skills.
  • Familiarity with the London market and experience in managing agencies.
  • The ability to analyze data, spot emerging issues, and recommend improvements.
  • Experience with data governance software to help enhance processes.
  • A solid background in data analytics and reporting frameworks.

This is more than just a job, it’s an opportunity to make a lasting impact on a leading insurance firm. Ready to drive innovation and elevate data quality to new heights?

Apply today:

Seniority level

Entry level

Employment type

Full-time

Job function

Finance

Industries

Insurance

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