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Data Governance / Data Management Manager

Michael Page
Coventry
1 week ago
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Overview

The role of Data Governance / Data Management Manager involves leading and enhancing data governance frameworks within the not-for-profit sector. Based in Coventry (but fully remote), this permanent position focuses on ensuring the organisation's data is effectively managed and utilised.

Responsibilities
  • Develop and implement data governance policies and practices.
  • Establish policies, standards, and procedures for data quality, integrity, data management and metadata management. Set up roles and responsibilities (e.g., data owners, stewards, custodians).
  • Metadata and Master Data Management: Oversee metadata management practices and tools. Work with IT and business units to maintain accurate master and reference data. Enable discoverability and understanding of data assets.
  • Data Stewardship Coordination: establish, guide and support data stewards in implementing governance policies while also monitoring adherence to data governance processes.
  • Tool and Technology Enablement: Evaluate and implement data governance tools and platforms. Work with IS and the Architects to integrate governance within existing data architecture and platforms.
  • Oversee data quality and ensure compliance with regulatory standards.
  • Collaborate with analytics teams to optimise data management processes.
  • Own and develop the business rules and reference data strategy for working with relevant teams across the business, especially in the Data Insights and IS teams.
  • Lead initiatives to enhance the organisation's data maturity and capabilities.
  • Provide expertise on data management best practices within the not-for-profit sector.
  • Advocate for data-driven decision-making across departments.
  • Manage data-related risks and ensure secure storage and access protocols.
  • Support the development of training programmes to improve data literacy.
Profile / Qualifications
  • Proven experience in data governance or data management roles.
  • Strong understanding of data frameworks, regulations, and best practices.
  • Experience within the not-for-profit sector is desirable but not essential.
  • Ability to lead cross-functional teams and engage stakeholders effectively.
  • Proficiency in data management tools and technologies.
  • Excellent problem-solving and analytical skills.
Job Offer / Benefits
  • Competitive salary ranging from £65,000 to £70,000 per annum.
  • Attractive pension scheme.
  • Opportunities to make a meaningful impact in the not-for-profit sector.
  • Supportive and inclusive company culture.
  • Fully remote role.

If you're ready to take on a rewarding opportunity as a Data Governance / Data Management Manager, we encourage you to apply today.


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