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MLOps Engineer

Harnham
Slough
1 week ago
Applications closed

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Machine Learning Engineer

MLOps Field Engineer

MLOPS ENGINEER

LONDON - HYBRID

£80,000 - £95,000


This is a great opportunity for an MLOps engineer from a DevOps background with ML experience to drive cutting-edge work at a data-driven retail tech start-up!



ROLE:

In this role you will:

  • Design, deploy and scale on their cloud platform (AWS/GCP)
  • Implement and maintain CI/CD pipelines
  • Engineering data working closely with the Computer Vision team
  • Deploying APIs and packages
  • Stay updated on emerging technologies, trends, and best practices in DevOps and MLOps to recommend and implement innovative solutions that drive business value.
  • Tech stack: Python, AWS/GCP, Docker, CI/CD, Deep Learning, Kubernetes, DevOps


REQUIREMENTS:

  • MSc in a numerical or relevant field is preferred
  • MLOps experience is required
  • An excellent understanding of DevOps processes and techniques
  • Happy working in a fast-paced environment
  • Any experience working with computer vision engineers is a bonus!


How To Apply

Please register your interest for this role by sending your CV to Joseph Gregory via the apply link on this page.

National AI Awards 2025

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