This list contains only the countries for which job offers have been published in the selected language (e.g., in the French version, only job offers written in French are displayed, and in the English version, only those in English).
We are seeking a DevOps / Platform Engineer to join our team building and operating large-scale GPU compute infrastructure that powers AI and ML workloads. The ideal candidate should be passionate about software engineering and possess leadership skills to independently deliver on multi-quarter projects. They should be able to communicate effectively and work optimally with their peers within our larger organization. Finally, you aren't afraid of a team in more of a startup mode at a larger company and willing to jump in to help in areas adjacent to your main project as needed.
Job Responsibility
Build and extend platform capabilities to enable new classes of workloads (e.g., interactive development pods, CI pipelines, inference services, benchmarking jobs)
Design and operate scalable orchestration systems using Kubernetes across both on-prem and multi-cloud environments
Develop platform features such as secret management, configuration management, and deployment automation for customers
Partner with development teams to extend the GPU developer platform with features, APIs, templates, and self-service workflows that streamline job orchestration and environment management
Manage service lifecycle within Kubernetes using Helm and GitOps workflows (e.g., ArgoCD or Flux)
Apply expertise in storage and networking to design and integrate CSI drivers, persistent volumes, and network policies that enable high-performance GPU workloads
Requirements
5+ years of experience in DevOps, Platform, or Infrastructure Engineering
Deep hands-on experience with Kubernetes and container orchestration at scale
Proven ability to design and deliver platform features that serve internal customers or developer teams
Experience building developer-facing platforms or internal developer portals (e.g.custom workflow tooling)
Nice to have
Hands-on experience in storage or network engineering within Kubernetes environments (e.g., CSI drivers, dynamic provisioning, CNI plugins, or network policy)
Experience with Infrastructure as Code tools like Terraform
Background in HPC, Slurm, or GPU-based compute systems for ML/AI workloads
Practical experience with monitoring and observability tools (Prometheus, Grafana, Loki, etc.)
Understanding of machine learning frameworks (PyTorch, vLLM, SGLang, etc.)