Full stack Data Engineer

Anson Mccade
London
1 month ago
Applications closed

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£45,000 to 65,000 GBP
Bonus
Hybrid WORKING
Location:

Central London, Greater London - United Kingdom

Type:

Permanent

Full Stack Data Engineer - London (Hybrid)
Up to £65,000 + Bonus | DOE | No Sponsorship Provided

We are looking for talented

Full Stack Data Engineers

to join a fast-growing AI and data consultancy in London. Working across junior to senior levels, this is a hands-on role where you'll combine software engineering, data expertise, and AI to solve complex problems for clients across government, defence, healthcare, and commercial sectors.

What You'll Do:

Design & Solve:

Break down client challenges and design innovative, data-driven solutions.
Engineer Data:

Build and maintain robust data pipelines and ETL processes.
Create Workflows:

Develop operational workflows and decision-support tools that transform enterprise operations.
Apply AI:

Collaborate on AI and machine learning models applied to real-world challenges.
Technical Excellence:

Deliver scalable, reliable software solutions using Python, SQL, and TypeScript.
Grow & Share:

Mentor peers, support junior engineers, and contribute to best practices.
Partner with Clients:

Build strong, trusted relationships, delivering tangible business impact.
What We're Looking For:

Strong experience in

Python, SQL, and TypeScript .
Experience with

Palantir technologies

(Foundry, Gotham, or similar) is

preferred but not essential .
Solid understanding of data engineering, ETL pipelines, and workflow design.
Passion for AI, machine learning, and emerging technologies.
Excellent problem-solving, collaboration, and communication skills.
Curiosity, adaptability, and a drive to make a real-world impact.
Work Arrangements:

Hybrid working with regular time in the London office.
Salary & Benefits:

Competitive salary up to

£65,000 + performance-based bonus

(levels above or below this salary considered DOE).
Opportunity to work on mission-critical projects with high impact.
Hands-on exposure to AI, advanced analytics, and cutting-edge data platforms.
Collaborative culture that values innovation, learning, and career growth.
Join a consultancy where AI meets engineering excellence, working on projects that truly transform organisations and industries.

Reference:

AMC-AQU-DPE

Postcode:

EC2V 6AA

#adqu
TPBN1_UKTJ

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