Data Quality Officer

Adecco
Prescot
1 day ago
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Job Title: Data Quality Officer
Location: Hybrid (Prescot office once a week)
Contract Type: Permanent
Working Pattern: Full Time

Are you passionate about data quality and governance, and keen to make an impact in the Public Sector? Our client has an exciting opportunity for a Data Quality Officer to join their dynamic Business Intelligence & Strategic Insight Team which could be right for you!

The Client
Our client is dedicated to delivering high-quality Business Intelligence solutions that drive operational and executive decision-making. They are committed to empowering their people to create a fairer society and prioritise customer needs.

Key Responsibilities
As a Data Quality Officer, you will:

  • Champion Data Quality: Lead the delivery of the Data Quality strategy, ensuring accurate and reliable information to support decision-making.
  • Collaborate: Work closely with Data Owners and Stewards across the organization to enhance data consistency and quality.
  • Develop Resources: Maintain and develop Data Dictionaries and Glossaries for key data entities.
  • Support Governance: Assist the Data Governance Forum by preparing papers and recording actions.
  • Measure Success: Monitor data accuracy, ...

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