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Data Quality Analyst

Tenth Revolution Group
London
2 days ago
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Contract Role: Data Quality & Metadata Specialist

Location: Hybrid (London - likely 1-2 days onsite per week)
Duration: 6 months
IR35 Status: SDS to be determined

Key Responsibilities

Own and maintain interim metadata repositories for DMO
Ensure metadata complies with policy standards
Collaborate with data owners and stewards to populate business metadata for CDEs
Work with project managers to capture technical metadata for MIT/BIT initiatives
Establish and execute attestation and change management processes
Support documentation of data lineage where required
Assist in identifying long-term and interim metadata management tools
Champion standardisation, visibility, and corporate-wide adoption of metadata
Hands-on involvement in all aspects of metadata and data quality management

Skills & Experience

Strong understanding of business and technical metadata types
Significant experience in metadata management and data quality frameworks
Proficiency in data modelling and profiling
Excellent documentation and stakeholder management skills
Financial Services experience preferred (not essential)

Additional Information

Contractors are expected to maintain clear reporting lines, comply with regulatory requirements, and uphold the Company's Code of Conduct. You will be responsible for maintaining professional competence and supporting compliance standards throughout the engagement...

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