Machine Learning Engineer - Hybrid

fierlo
London
3 months ago
Applications closed

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Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Senior Machine Learning Engineer
Outside IR35 - 500/ day

Greenfield

We are working with an established global organisation on a mission to deliver next-generation AI capabilities at scale. Were hiring an experienced, hands-on Machine Learning Engineer to architect and deliver production-grade AI system with a strong focus on MCP, RAG, and real-world deployment .

This project is a green field build out of AI capabilities. We are starting with RAG use cases as a low bar, but are targeting a rich agentic implementation in the near term. Whoever joins us has an opportunity to work on the foundational architectural definition and implementation.

What youll do
Report directly to the VP of Engineering
Architect, build and ship advanced AI/ML & Generative AI solutions scalable, secure, production-ready
Design data ingestion pipelines, integrate vector databases and retrieval-augmented systems
Ship models via APIs, containers, or cloud-native services
Own engineering excellence Git, CI/CD, automated ML testing, IaC
Influence technical direction and mentor other engineers
Work cross-functionally to translate AI strategy into measurable business outcomes

What you bring
~ Expert Python LangChain, Semantic Kernel, PyTorch, TensorFlow
~ Hands-on cloud delivery Azure / AWS, Terraform, ECS
~ Proven experience building RAG / MCP architectures
~5+ years in applied ML or AI engineering roles


Send us your profile now for immediate consideration.

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