Anthropic· Software Engineering - Infrastructure· San Francisco, CA | New York City, NY | Seattle, WA
Staff Software Engineer, Kubernetes Platform
Classified Tasks (22)
Automate 0%Augment 77%Human-Only 23%
Augment (17)
AI assists, human decides
Operate the Kubernetes scheduler for Anthropic's accelerator fleets
operational
Extend the Kubernetes scheduler with custom scheduling plugins
technical
Implement policies for gang scheduling
technical
Implement topology-aware scheduling policies
technical
Implement preemption policies within the scheduler
technical
Place topology-sensitive ML workloads across thousands of accelerators
technical
Scale the Kubernetes control plane components (apiserver, etcd, controller-manager) to support very large clusters
technical
Identify next control plane bottlenecks and remediate them proactively
analytical
Design core cluster services such as service discovery
technical
Build core cluster services that every workload depends on
technical
Operate core cluster services to ensure they hold up under high load
operational
Build custom controllers, operators, and CRDs
technical
Maintain custom controllers, operators, and CRDs
technical
Translate workload requirements into platform capabilities
analytical
Design and run postmortems for incidents
leadership
Create and maintain runbooks and SLOs to prevent repeating failures
operational
Ensure the control plane remains fast, correct, and highly available
operational
Human-Only (5)
Requires human judgment
Own the Kubernetes scheduler for Anthropic's accelerator fleets
leadership
Partner with research, training, and inference teams to understand workload shapes
communication
Collaborate with cloud providers on required features and escalations
communication
Participate in on-call rotations
operational
Lead incident response during outages
leadership
Job description
About Anthropic Anthropic’s mission is to create reliable, interpretable, and steerable AI systems. We want AI to be safe and beneficial for our users and for society as a whole. Our team is a quickly growing group of committed researchers, engineers, policy experts, and business leaders working together to build beneficial AI systems. About the role Anthropic runs some of the largest Kubernetes clusters in the industry. We have fleets of hundreds of thousands of nodes across multiple cloud providers and datacenters to train, research, and serve frontier AI models. The Kubernetes Platform team owns the Kubernetes control plane that makes those clusters work. We are operating at a scale where the defaults stop working. We own the scheduler and extend it to place topology-sensitive ML workloads across thousands of accelerators at once. We scale the control plane itself — apiserver, etcd, controllers — so it stays responsive as object counts and node counts grow by orders of magnitude. And we build the core cluster services every workload depends on, like service discovery, so they hold up under the same pressure. We make sure the control plane is fast, correct, and always available. Your work will directly determine whether Anthropic can keep reliably and safely training frontier models as our compute footprint continues to grow. Key responsibilities Own, operate, and extend the Kubernetes scheduler for Anthropic's accelerator fleets, including custom scheduling plugins and policies for gang scheduling, topology awareness, and preemption Scale the Kubernetes control plane (apiserver, etcd, controller-manager) to support clusters far beyond typical limits, and find the next bottleneck before it finds us Design, build, and operate core cluster services such as service discovery that every workload in the fleet depends on Build and maintain custom controllers, operators, and CRDs Partner with research, training, and inference to understand workload shapes and turn their requirements into platform capabilities Collaborate with cloud providers on required features and escalations Participate in on-call, lead incident response, and design processes (postmortems, runbooks, SLOs) that help the team avoid repeating failures Minimum qualifications Significant software engineering experience building and operating production distributed systems Proficiency in at least one systems-appropriate language (e.g., Go, Python, Rust, or C++) Deep, hands-on Kubernetes experience (well beyond "user of”) into scheduler, controllers, apiserver, or operating large multi-tenant clusters Demonstrated ability to debug complex issues across the stack, from API behavior down to node and network-level root causes A track record of designing for reliability, correctness, and clear failure semantics in systems other engineers depend on Strong written and verbal communication; comfort building consensus with internal stakeholders Preferred qualifications Experience with Kubernetes internals or contributions: kube-scheduler / scheduling framework, apiserver, etcd, client-go, controller-runtime, or similar Experience building or operating cluster schedulers or batch systems (e.g., Kueue, Volcano, Slurm, or in-house equivalents) Background scaling control planes or coordination systems (etcd, ZooKeeper, Consul, or large DNS/service-mesh deployments) Familiarity with ML infrastructure: GPUs, TPUs, or Trainium; gang scheduling; topology-aware placement; collective networking such as NCCL Experience with GCP and/or AWS, including GKE/EKS internals and Infrastructure as Code Low-level systems