Data Governance Manager

Barnsley
9 months ago
Applications closed

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Data Quality and Governance Manager - Hybrid - Leeds - £65,000

My client is looking for a Data Quality & Governance Manager to shape how data is trusted and used throughout their organisation. They are looking for someone to lead efforts in ensuring the consistency, reliability, and governance of data.

This role will work closely with business and technical teams to develop and implement frameworks for data quality, governance, and master data management, using Snowflake and Microsoft Azure.

Requirements:

Experience in data governance and data quality management
Strong knowledge of data warehouse architecture and cloud platforms, especially Snowflake and Microsoft Azure.
Proven experience designing and managing data pipelines in cloud environments with integrated data governance principles.
Hands-on experience with data migrations
Strong experience in working with data engineers, business stakeholders, and data stewards.

Please Note: This is role for UK residents only. This role does not offer Sponsorship. You must have the right to work in the UK with no restrictions. Some of our roles may be subject to successful background checks including a DBS and Credit Check.

Contact me: (url removed)

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