Data Governance Analyst

Oliver James
London
2 months ago
Applications closed

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Job Opening: Data Governance Analyst

We are a premier recruitment agency representing our esteemed client in the Insurance Industry. Our client is committed to excellence and innovation in every facet of their business. Currently, they are seeking a skilled and dedicated Data Governance Analyst to join their dynamic data department on a permanent basis.

Role and Responsibilities:

  • Implement data governance strategies and processes to ensure data accuracy and consistency across market risk and regulatory reporting domains.
  • Work closely with data stakeholders across the organisation to collect requirements and implement governance solutions.
  • Develop and maintain comprehensive documentation related to data governance frameworks and standards.
  • Facilitate and manage the availability, usability, integrity, and security of the data used across the organisation.
  • Monitor data governance policies and standards to ensure compliance with internal policies and external regulations.
  • Regularly report on the status of data governance initiatives to key stakeholders and propose improvements to systems and processes where necessary.

Key Skills:

  • Proven expertise in Market Risk Data Governance.
  • Strong ability in Data Governance for Regulatory Reporting.
  • Comprehensive knowledge of data governance principles and practices.

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