Data Governance Analyst Degree Apprentice

Best Apprenticeships
Coventry
1 week ago
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You’ll join Parker Meggitt’s Data Governance team and gain experience working with global business functions to improve data quality, processes, and standards. You’ll support the development and implementation of policies, collaborate with subject matter experts, and help shape how data is collected, stored, and used.


Responsibilities

  • Develop and maintain data models to support the organisation’s data analysis needs
  • Ensure data is accurate, accessible, and of high quality for effective analysis
  • Assist in the creation of reports and dashboards to monitor data quality and governance metrics
  • Collaborate with various business units to understand their data needs and ensure compliance with data governance standards
  • Evaluate and reconcile information from multiple sources, identify and resolve conflicts, fill data gaps, and transform complex or low-level data into meaningful insights that reflect true business needs


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