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AI/Data Engineer

Future Talent Group
London
1 week ago
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🚀 AI/Data Engineer (AI)

📍 Location: London (Hybrid – 1 every other week)

đź’Ľ up to ÂŁ600 a day (Inside IR35)


The Role

As a Data Engineer, you’ll join our cross-functional Product team of software engineers, ML specialists, domain experts, and product leads. You’ll design, build, and deploy AI capabilities that empower intelligence analysts to make faster, sharper, and more confident decisions.

This role is for someone who thrives on solving complex real-world problems, can balance technical depth with product impact, and wants to own their work from experimentation through to production.


What we’re looking for

  • 3+ years of hands-on engineering experience in production environments.
  • Strong Python skills.
  • Experience with Generative AI: LLMs and RAG.
  • Adapting LLM for use as a Q&A System.


👉 Apply now and help define the future of Defence AI.

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