Senior MLops (Full Stack) Engineer | London | Foundation Models in London - SoCode Recruitment

Java Script Works
London
9 months ago
Applications closed

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Senior MLOps (Full Stack) Engineer | London | Foundation Models

What you’ll do

  • Build and maintain APIs (FastAPI or similar) to serve ML models
  • Design and manage robust ML infrastructure using Kubernetes, Docker, and Terraform
  • Deploy machine learning models into production environments

Responsibilities

Collaborate with ML teams to streamline training, deployment, and monitoring. Build internal tools and dashboards (e.g., in React or Vue) for analytics and observability. Own CI/CD pipelines and drive infrastructure automation.

Requirements

5+ years' experience in Senior ML Ops.

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