As an Infrastructure Engineer, you will build and maintain AI platforms, enhance production reliability, and collaborate on architecture decisions.
Maxana is seeking an experienced Infrastructure Engineer for a confidential client — a fast-growing AI company. In this role you will build and maintain the platform layer supporting large-scale ML training, inference, and deployment. This is a high-impact role at the intersection of cloud infrastructure and ML systems.
Key Responsibilities
- Build and maintain infrastructure supporting large-scale ML training and inference workloads
- Work with GPU and compute infrastructure, distributed systems, and cloud-native platforms
- Improve reliability, observability, and performance across the platform layer
- Collaborate directly with senior engineers and product teams on architecture decisions
- Own production reliability — monitoring, incident response, and proactive risk reduction
- Develop and maintain internal tooling and automation to support engineering operations
Requirements
- 5+ years of infrastructure or platform engineering experience in a production environment
- Strong distributed systems background — experience with large-scale compute workloads preferred
- Cloud-native infrastructure experience — AWS, GCP, or Azure; Docker and Kubernetes required
- Familiarity with ML infrastructure a strong plus — training pipelines, inference serving, GPU workloads
- Experience owning production reliability end to end
Benefits
- Competitive base salary ($130,000-$240,000) + equity
- Medical, dental, and vision
- Flexible paid time off
- Learning and development stipend
- Working at the forefront of AI infrastructure at scale
Similar Jobs
Cloud • Computer Vision • Information Technology • Sales • Security • Cybersecurity
Design, build, and operate large-scale LLM infrastructure and data platforms for training, fine-tuning, and inference. Provision GPU clusters, optimize GPU utilization, implement model lifecycle management, deploy inference frameworks, create evaluation and observability systems, and collaborate with data scientists to productionize AI capabilities. Mentor engineers and enforce MLOps/DataOps best practices.
Top Skills:
AirflowAnsibleAWSCudaDaskDockerFlinkGCPGpuJaxKubernetesLangchainLlamaindexMegatronMlflowNvidia DriversOciPythonPyTorchRaySagemakerSlurmSparkTerraformTpuTriton Inference ServerVertex AiVllm
Aerospace • Other
Design, deploy, and operate Starlink software and network infrastructure. Build automation for on-prem compute, manage databases, monitoring, and distributed storage. Improve CI/CD, test platforms (virtualized, hardware-in-the-loop, on-orbit), troubleshoot across the stack, and collaborate with engineers to create scalable, operable, maintainable systems and developer tooling.
Top Skills:
AnsibleBashBazelCC++Ci/CdDatabasesDistributed StorageDockerHypervisorKubernetesLinuxMonitoringPythonTcp/IpTerraformVirtualization
Aerospace • Other
Design, deploy, and scale on-premise Kubernetes clusters and core infrastructure (databases, monitoring, distributed storage). Build automation, integrate and troubleshoot across the Starlink stack, improve service lifecycle, and maintain high availability through monitoring, alerting, and performance optimization.
Top Skills:
AnsibleBashC++GoKubernetesLinuxOci ContainersPythonTerraform
What you need to know about the Seattle Tech Scene
Home to tech titans like Microsoft and Amazon, Seattle punches far above its weight in innovation. But its surrounding mountains, sprinkled with world-famous hiking trails and climbing routes, make the city a destination for outdoorsy types as well. Established as a logging town before shifting to shipbuilding and logistics, the Emerald City is now known for its contributions to aerospace, software, biotech and cloud computing. And its status as a thriving tech ecosystem is attracting out-of-town companies looking to establish new tech and engineering hubs.
Key Facts About Seattle Tech
- Number of Tech Workers: 287,000; 13% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Amazon, Microsoft, Meta, Google
- Key Industries: Artificial intelligence, cloud computing, software, biotechnology, game development
- Funding Landscape: $3.1 billion in venture capital funding in 2024 (Pitchbook)
- Notable Investors: Madrona, Fuse, Tola, Maveron
- Research Centers and Universities: University of Washington, Seattle University, Seattle Pacific University, Allen Institute for Brain Science, Bill & Melinda Gates Foundation, Seattle Children’s Research Institute


