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Data Governance Analyst Risk & Finance

Michael Page Technology
London
19 hours ago
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This is an exciting opportunity for a Senior Data Governance Analyst to lead key initiatives in analytics within the financial services industry. The role is based in London and focuses on managing data-driven strategies to support decision-making processes.

Client Details

This company is a well-established organisation within the financial services industry, known for its global presence and expertise. They offer a structured and professional environment, providing employees with opportunities to contribute to impactful projects in a collaborative setting.

Description

  • Deep expertise in data governance, data quality, metadata management, profiling, analysis, and related data management tools.
  • Lead the implementation of data governance across Risk and Finance domains, ensuring alignment with BCBS239 regulatory standards.
  • Accountable for end-to-end ownership of data definition, lineage, and governance for prioritised use cases.
  • Oversee business data requirement changes, ensuring effective execution of change and release management across data domains.
  • Contribute to meeting regulatory obligations by establishing processes that ensure the delivery of accurate, complete, timely, and reliable data.
  • Partner with divisional stakeholders to develop and implement data standards and drive adoption across EMEA data initiatives.
  • Actively partic...

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