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Data Quality Manager

Fuel Recruitment
Sheffield
1 week ago
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Overview

Our Financial Services consultancy are looking to grow their Data and Analytics practice with an experienced Data Quality Manager to work with one of their clients in the banking sector. You will need extensive financial services experience and work to deliver an enterprise data quality solution for the client. Working with the business and technology teams to design, implement and embed robust data quality frameworks, processes and tooling across a major transformation programme. The role combines leadership, hands on delivery and mentorship across the clients teams to help them achieve sustainable and scalable data improvements.

Requirements

You will have extensive experience in data management within financial services and a strong background of data quality, metadata and lineage frameworks. Experience with data tooling such as Collibra, Solidatus, Talend or Ataccama and have lead delivery across large scale transformation or change programmes. Familiarity with regulatory initiatives such as BCBS 239, GDPR, ESG or consumer duty with a good knowledge of data governance frameworks such as DAMA, DMBOK, DCAM and CDMC.

Location

You will be working on the client site in Sheffield for 3 days a week.


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