Full Stack Data Engineer

Anson Mccade
London
1 week ago
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Full Stack Data Engineer
£Up to £80,000 GBP
Hybrid WORKING
Location: Central London, Greater London - United Kingdom Type: Permanent

Client:
Join a high-growth technology and AI consultancy recognised for delivering exceptional outcomes across Defence, Healthcare, Finance, and Commercial sectors. Our client has built a reputation for solving some of the most complex data challenges in government and enterprise, earning industry recognition for innovation, engineering excellence, and strategic impact. Following a landmark acquisition by a global consulting powerhouse in 2025, the client now combines boutique technical expertise with global scale, creating an exceptional environment for ambitious engineers.

As a Full Stack Data Engineer, you will join a consultancy where AI meets deep engineering capability. Our client is trusted to deliver transformational data platforms that support smarter decision-making across a wide range of industries. The Full Stack Data Engineer role offers the opportunity to work on projects that genuinely make a difference, applying advanced analytics, AI, and Palantir technologies to real-world challenges.

The Full Stack Data Engineer position is hands-on and consultative, blending software engineering, data engineering, and problem-solving. You will collaborate closely w...

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