Devops Engineer

Bristol
1 week ago
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About the job

We're building cutting-edge AI accelerator solutions, spanning hardware and software, and we're looking for a DevOps Engineer to help us scale fast, build smart, and stay ahead of the curve. You'll deploy leading technologies to create a modern, scalable development infrastructure—one that empowers our teams to move quickly and innovate confidently.

What You’ll Do

  • Design, build, and maintain robust CI/CD pipelines using tools like GitHub Actions

  • Bazel Experience

  • Manage and scale our containerised environments with Docker and Kubernetes

  • Work closely with hardware and software engineers to streamline the entire development lifecycle

  • Optimise builds, testing, and deployment for complex, performance-critical systems

  • Administer cloud infrastructure to support high-velocity development and deployment workflows

    What You Bring

  • 3+ years experience in DevOps or infrastructure engineering

  • Strong background in containerisation and orchestration technologies (Docker, Kubernetes)

  • Experience building and maintaining advanced CI/CD pipelines for large-scale products

  • Proficiency with Bazel, GitHub Actions, and modern cloud services

  • Scripting and automation skills in Python

  • A degree in Computer Science, Engineering, or a related field (or equivalent experience

    Additional Skills

  • Familiarity with C/C++

  • Experience working with machine learning pipelines or large language models

  • Knowledge of build systems for complex, multi-language projects

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