Senior Data Architect: Scalable Data & Governance

TESTQ Technologies Limited
Milton Keynes
1 month ago
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A leading data technology firm is seeking a Senior Data Architect to design and manage enterprise data models and data governance. The role emphasizes building scalable data solutions, ensuring data quality, and supporting the analytics and integration processes within the organization. The ideal candidate will possess extensive experience in ETL/ELT and data integration, along with a solid understanding of data governance principles. Familiarity with Oracle Intelligent Advisor is an advantage.
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