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Machine Learning Engineer

Explore Group
Coventry
1 day ago
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An exciting opportunity to join a small, high-impact AI team building an internal AI Platform that powers the next generation of intelligent products and services.

Youll work on cutting-edge AI infrastructure, collaborate with experienced platform engineers, and make a real impact on how AI innovation scales across the organization.

What youll be doing:

  • Building and maintaining a Kubernetes-hosted AI platform (AKS)
  • Deploying and managing LLMOps tools such as LiteLLM, Langflow, and Langfuse
  • Implementing observability with Prometheus, Grafana, and Loki
  • Managing infrastructure through Terraform, ArgoCD, and GitHub Actions
  • Supporting internal AI applications including RAG, document processing, and internal AI assistants

What youll need:

  • 24 years in Platform or DevOps Engineering (Azure preferred)
  • Strong experience with Kubernetes, Docker, and Terraform
  • Programming or scripting skills in Python or Go
  • Familiarity with GitOps, Helm, and observability tools
  • A learning mindset and interest in LLM operations

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