Data Governance & Quality Analyst

Henderson Scott
Edinburgh
2 months ago
Applications closed

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We are recruiting for a Data Governance & Quality Analyst to support the development and implementation of a growing data governance function. This role is ideal for someone with a foundation in data management or information governance who is ready to take the next step in their career.

The Data Governance & Quality Analyst will work closely with the Data Governance & Quality Lead to enhance data quality, strengthen governance practices, and support the organisation's data strategy.

Key responsibilities:

  • Develop and maintain data quality standards, rules, and reporting

  • Support data governance processes and the Data Ownership model

  • Identify, analyse, and resolve data quality issues

  • Work with business stakeholders to improve core data assets

  • Produce and maintain documentation, workshops, and presentations

  • Contribute to embedding best-practice data management across the organisation



We're looking for someone with:

  • Minimum 1 year of experience using POWER BI in data governance, data management, or information management

  • Knowledge of data lifecycle management, data modelling, data visualisation, and data quality auditing

  • Strong organisational and documentation skills

  • Confidence working with stakeholders at all leve...

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