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Data Governance & Data Quality Analyst

Oliver James
London
1 year ago
Applications closed

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Job Opportunity: Data Governance & Data Quality Analyst


Our client, a leading company in the Insurance industry, is seeking a talented Data Governance & Data Quality Analyst to join their Data Governance team.

Role & Responsibilities:

Assist with the Data Ownership framework and data stewards on key data initiatives Manage the data quality log, working with the business to facilitate the remediation of reported issues Assist with data led projects Own the development and management of data glossaries to establish enterprise data standards Create Power BI reports to monitor data quality Use SQL tables to produce reports Define data quality standards and metrics Monitor and ensure the accuracy and integrity of customer data Collaborate with stakeholders to improve data quality and governance processes Analyze and report on data quality issues and recommend solutions

Key Skills:Experience in SQL and Power BI required Strong analytical and problem-solving skillsAttention to detail and high level of accuracyExcellent communication and collaboration skillsAbility to work independently and as part of a team


This is a permanent job position with the opportunity to work at a reputable company in the Insurance industry. If you have the skills and experience required for this role, we would love to hear from you.

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