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Head of Data Engineering — Azure Data Platform Leader

Intec Select
Chatham
1 week ago
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A leading financial services provider is seeking a Head of Data Engineering to lead a high-performing team in Chatham. This role involves shaping data transformation initiatives from the ground up and requires expertise in Azure-based data platforms and event-driven architectures like Kafka. The ideal candidate has proven leadership experience and extensive background in regulated industries. The position offers a competitive salary between £120,000 and £140,000, along with bonuses and a comprehensive benefits package.
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