MLOps Engineer (UKIC DV Cleared)

55 Exec Search
Manchester
8 months ago
Applications closed

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MLOps Engineer

MLOps Engineer - Image - Remote - Outside IR35

MLOps Engineer

MLOps Engineer

MLOps Engineer - Image - Remote - Outside IR35

MLOps Engineer

MLOps Engineers (Mid, Senior & Lead level) – UKIC DV Cleared | AI/ML Start-up | Manchester | Hybrid


Are you an MLOps Engineer with activeUKIC DV clearancelooking to make a real-world impact at the cutting edge of AI and machine learning?


We’re hiringMid, Senior, and Lead MLOps Engineersfor a fast-growing tech start-up at the forefront of delivering scalable, production-grade AI solutions across mission-critical domains. You’ll play a key role in designing and deploying robust ML infrastructure, supporting both public and private sector clients.


What You'll Do as an MLOps Engineer:

  • Deploy and manage machine learning models in production environments
  • Build and optimise scalable MLOps pipelines using modern tools and cloud platforms (AWS, Azure, GCP)
  • Work with tools like Terraform, Docker, Kubernetes, and Python
  • Contribute to agile ceremonies (sprint planning, retrospectives, code reviews)
  • Collaborate on high-impact, real-world AI/ML projects that truly make a difference
  • Contribute ideas in a relaxed, open, and innovation-driven culture

Location & Flexibility for the MLOps Engineer:

  • Hybrid rolebased inManchester
  • Strong work-life balance and a genuinelyfun, inclusive environment
  • Excellentcareer progression, bonus structure

What We're Looking For

  • Most importantly,you must hold an active UKIC DV Clearance
  • Strong experience in MLOps or ML Engineering
  • Familiarity with ML frameworks (e.g.,TensorFlow, PyTorch, Scikit-learn)
  • Strong proficiency inPythonfor production systems
  • Proficient in Python and modern DevOps/MLOps tools
  • Experience with cloud platforms and infrastructure as code

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