Senior Machine Learning Engineer

Understanding Recruitment NFP
London
9 months ago
Applications closed

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🧠Senior Machine Learning Engineer| Remote (UK) + Occasional Bedford Office | £65–80k + Bonus & Benefits 💥

We’re hiring for a UK tech company that's doing seriously smart work in low-code, automation, and AI. Their AI team is growing fast, and they’re looking for an experienced ML engineer to help build and scale GenAI features across real products.


You’ll be hands-on with NLP pipelines, RAG systems, LLM deployment, and AI infrastructure, working closely with product and platform teams to turn ideas into features. It’s the kind of role where your code ships and your input shapes the roadmap.


🚀 Expect work across:

  • GenAI + LLM tooling (vLLM, LangChain, HuggingFace)
  • RAG systems, embeddings, reranking
  • NLP tasks like summarisation, classification, sentiment
  • Scalable deployment in AWS (with support from DevOps)
  • Cross-team collaboration and mentoring


Why join?

  • Own and build GenAI features that actually ship
  • Mix of hands-on ML, infrastructure, and product input
  • Remote-first with flexibility and a solid team culture


It’s a remote-first setup (occasional office visits), with a clear product mission, strong team culture, and lots of room to grow. Interested? Apply now!!!

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