Data Quality Manager

N Consulting Limited
Sheffield
3 months ago
Applications closed

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Data Quality Manager at N Consulting Ltd

Job title: Data Quality Manager


Job Location: Sheffield / Birmingham, UK


Job type: Contract (6 Months)


Job mode: Hybrid(2 days onsite)


JD:


Role Overview:


The Data Quality Manager is responsible for maintaining the accuracy, consistency, and integrity of data across the UK business. This role ensures that data quality standards and controls are sufficient to support the bank’s operations and risk framework.


Key Responsibilities:



  • Enforce the data quality governance framework across the organization.
  • Ensure data quality rules address key data risks within UK Business data.
  • Perform root cause analysis of systemic data quality issues.
  • Identify and assess thematic data quality issues affecting the bank.
  • Collaborate with data owners and risk teams to resolve ongoing data challenges.


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