Senior Data Governance Analyst

High Finance (UK) Limited T/A HFG
London
4 days ago
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A leading Financial Services firm is looking to hire a Senior Data Governance Analyst to join their growing Data Governance team to maintain the company's data governance framework and to help facilitate informed decision making and safeguard data integrity. You will lead data governance projects ensuring that data projects align with key data governance principles. You will be responsible for maintaining comprehensive data documentation. You will work with Data Stewards to ensure compliance within regulatory environments. You will drive initiatives across all areas of Data GovernanceKEY REQUIREMENTS:

· Financial Services Experience is essential· Have at least 3+ years in Data Governance· Have hands-on experience in Master Data Management· Have experience in Microsoft 365 tooling· Have Expertise in Data Protection Regulations· Experience with Data Modelling· Have strong stakeholder management skills and presentation skills· Be sbility to work independently and as part of a team.· Have strong experience in Power BI reporting and use of SharePoint would be preferable.

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