Senior Azure Data Architect & Engineering Lead

KPMG UK
Birmingham
1 week ago
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A leading consulting firm in the UK is seeking a skilled Lead Azure Data Consultant to design and implement scalable data solutions. The successful candidate will have strong hands-on experience with the Microsoft Azure data ecosystem, including Azure Data Factory and Synapse Analytics. Key responsibilities include developing data pipelines, managing client relationships, and providing insights through Power BI. Flexibility in work arrangements is offered, making this a great opportunity for professionals looking to make an impact.
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