Data Governance manager

Michael Page Technology
London
3 days ago
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Data Governance manager - Remote

The Data Governance Manager will lead the implementation and management of data governance frameworks, ensuring data quality and compliance within the organisation. This role is ideal for someone with a strong understanding of data management practices in the Not For Profit sector.

Client Details

Data Governance manager - Remote

This Not For Profit organisation is a medium-sized entity dedicated to making a meaningful impact. They are committed to using data responsibly to improve decision-making and outcomes for their beneficiaries.

Description

Data Governance manager - Remote

  • Develop and implement a comprehensive data governance framework.
  • Ensure compliance with data protection regulations and organisational policies.
  • Collaborate with cross-functional teams to establish data standards and best practices.
  • Monitor data quality and provide recommendations for improvement.
  • Manage data-related risks and implement mitigation strategies.
  • Provide training and support to staff on data governance processes.
  • Oversee data management tools and systems to ensure proper usage and efficiency.
  • Produce regular reports on data governance activities and outcomes.

Profile

Data Governance manager...

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