Product Manager, Compute Platform at Anthropic

Hybrid - San Francisco, CA; New York City, NY; Seattle, WA

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The Product Manager, Compute Platform at Anthropic will partner with Infrastructure, Compute Operations, Engineering, Finance & Strategy, and Research to build scheduling, orchestration, and capacity management systems powering Anthropic's compute infrastructure. The role focuses on developing job scheduling primitives, capacity allocation policies, preemption and fairness frameworks, quota management, and observability tooling, with impact on cluster utilization, cost efficiency, and researcher velocity.

Salary

USD 305,000 - 385,000

Requirements

Skills

  • 7+ years of product management experience, with deep exposure to compute infrastructure, distributed systems, or scheduling/orchestration platforms
  • Experience taking technical infrastructure products from infancy to scale—you’ve built something from the ground up and grown it to serve demanding internal or external customers
  • Track record of building platform products that balance the needs of multiple users and stakeholders—you’re comfortable making prioritization trade-offs between utilization, latency, cost, and fairness, and communicating them clearly
  • Ability to internalize complex technical systems (job schedulers, cluster managers, resource orchestrators) and translate that understanding into a comprehensive product vision
  • Fluent across functions—you’re equally credible discussing scheduling algorithms with engineers, capacity economics with finance, and infrastructure strategy with leadership
  • Strong instinct for connecting technical decisions to business outcomes: every percentage point of cluster utilization has measurable impact
  • Scrappy and resourceful—you do what it takes to get things done in a fast-moving environment
  • Built or scaled job scheduling, resource orchestration, or workload management systems for large-scale compute clusters (e.g., Kubernetes, Slurm, Borg, YARN, or custom schedulers)
  • Deep familiarity with GPU/accelerator scheduling challenges, including gang-scheduling, topology-aware placement, preemption, and hardware affinity constraints
  • Experience defining and enforcing SLAs and resource guarantees for compute workloads—including mechanisms to validate job prerequisites (data readiness, checkpoint availability, hardware compatibility) before scheduling to avoid wasted resources
  • Capacity planning experience across cloud and on-premises infrastructure, including cost modeling, demand forecasting, and vendor management for compute procurement
  • Scaled through hypergrowth in compute-intensive environments (AI/ML, HPC, large-scale cloud infrastructure)
  • Experience with observability and efficiency tooling for distributed infrastructure—building dashboards, automation, and governance workflows that drive utilization and cost accountability

Responsibilities

  • Deeply understand the needs of internal customers across Research, Infrastructure, Product, and Finance—from researchers who need guaranteed resources for multi-week training runs to platform teams managing inference workloads with strict latency SLAs
  • Define and iterate on the semantic layer for job scheduling: the abstractions, priority tiers, resource classes, and preemption policies that govern how work flows through our compute clusters
  • Partnering with engineering leads to design scheduling capabilities that maximize cluster utilization while honoring resource guarantees—ensuring jobs have the right prerequisites (data, checkpoints, hardware affinity) validated before launch to avoid wasted compute
  • Drive product strategy and roadmap for compute capacity management, including quota systems, fairness policies, bin-packing optimizations, and gang-scheduling for distributed workloads
  • Own the trade-off framework between utilization efficiency, job latency, cost, and reliability—making transparent prioritization decisions and communicating them clearly to senior leadership
  • Collaborate with the Capacity Strategy & Operations team on capacity planning models, demand forecasting, and cost-to-serve analytics that inform infrastructure investment decisions
  • Build and champion observability tools and dashboards that provide real-time visibility into cluster health, queue depth, scheduling efficiency, and resource waste

Technologies

KubernetesSlurmBorgYARNGPU schedulingGPU/accelerator schedulinggang schedulingtopology-aware placementpreemptionhardware affinityobservability toolingdashboardsautomationgovernance workflows

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