Head of Platform & Data Engineering

Zilch
London
1 day ago
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A dynamic payment tech firm in Greater London is seeking a Senior Leadership role focused on leading Cloud Platform, SRE, and Data Engineering teams. This hands-on technical leader will drive operational excellence and strategic alignment between technology and business goals. The ideal candidate brings proven leadership in cloud and data engineering, a strong technical toolkit including Terraform and AWS, and a commitment to mentoring teams for exceptional performance. Competitive compensation and benefits offered.
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