AI / ML Infrastructure Engineer

OpenSourced
Bristol, United Kingdom
Last month
£60,000 – £100,000 pa

Salary

£60,000 – £100,000 pa

Job Type
Permanent
Work Pattern
Full-time
Work Location
Hybrid
Posted
2 May 2026 (Last month)

AI / ML Infrastructure Engineer (MLOps) – Robotics - Hybrid in Bristol

We’re working with a cutting-edge robotics company building intelligent systems capable of learning real-world physical tasks.

They’re now hiring an AI / ML Infrastructure Engineer to own the end-to-end infrastructure that powers model training, data pipelines, and deployment into real-world robotic systems.

This is a highly technical role sitting at the intersection of machine learning, distributed systems, and robotics - not a generic MLOps position.

Key Responsibilities:

  • Build and scale GPU-based training infrastructure for large ML workloads
  • Develop robust data pipelines for multi-modal datasets
  • Own experiment tracking, model versioning, and reproducibility
  • Design and optimise model deployment pipelines (including edge inference)
  • Improve CI/CD workflows for ML systems and automate infrastructure

Key Requirements:

  • Strong Python and experience with PyTorch-based training pipelines
  • Experience with distributed training (DDP, FSDP, DeepSpeed)
  • Solid cloud experience (GCP / AWS / Azure)
  • Hands-on with Docker and infrastructure-as-code (Terraform)
  • Experience building ML pipelines in production environments

Desirable:

  • Robotics, autonomous systems, or embodied AI experience
  • GPU orchestration (Kubeflow, Kubernetes, SkyPilot)
  • Edge deployment (ONNX, TensorRT)

Why Apply?

  • Work on real-world AI systems deployed into physical robots
  • Direct impact on cutting-edge robotics capability
  • Fast-moving, high-calibre engineering environment
  • Seniority Level
  • Not Applicable
  • Industry
  • IT Services and IT Consulting
  • Employment Type
  • Full-time
  • Job Functions
  • Information Technology Engineering Skills
  • Python (Programming Language)RoboticsArtificial Intelligence (AI)InfrastructureMachine Learning

Apply now!

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