Cluster Deployment Engineer

Anthropic Anthropic · AI Frontier · United States · Remote · Compute

This role focuses on the physical deployment of large-scale AI compute clusters within a datacenter fleet. The engineer will define deployment strategies, manage rack interfaces, and drive multi-threaded bring-up programs across hardware, networking, power, and cooling. The role requires extensive experience in hyperscale datacenter environments and managing complex infrastructure programs, ensuring clusters are deployed on schedule and at full density.

What you'd actually do

  1. Own cluster-level deployment strategy — define how AI compute clusters are organized across the floor, how racks interconnect, and how cluster topology requirements translate into facility and deployment scope across a portfolio of sites.
  2. Set rack interface standards spanning power, network, mechanical, thermal, and spatial domains, and ensure that every deployment includes the complete set of infrastructure required to bring a cluster online.
  3. Drive multi-threaded cluster bring-up programs across hardware, networking, power, and cooling — owning plans, dependencies, and critical paths from hardware specification through energization and turn-up.
  4. Partner with internal engineering teams — research, systems, networking, and hardware — to translate cluster requirements into deployable facility scope, and to derisk onboarding of new hardware platforms well ahead of delivery.
  5. Lead external partner execution with developers, engineering firms, OEMs, and construction teams, driving technical reviews, deviation management, and handoffs that keep deployments on schedule and within specification.

Skills

Required

  • 10+ years of experience in hyperscale datacenter environments
  • senior-level responsibility for cluster deployment, large-scale IT integration, or equivalent infrastructure programs
  • delivered AI, HPC, or high-density compute clusters at scale
  • strong intuition for the constraints that govern cluster deployment — interconnect reach, adjacency, power density, and thermal limits
  • operate fluently across the boundary between IT hardware and facility infrastructure
  • set interface standards that held up across multiple hardware generations and sites
  • led cross-functional programs with both internal engineering teams and external developers, engineering firms, and OEM partners
  • effective at driving alignment across organizational levels
  • strong systems thinking with execution discipline
  • comfortable zooming from cluster topology and portfolio strategy down to the specific interface detail that will otherwise become a field issue
  • Communicate clearly with technical and executive audiences
  • distill complex, multi-disciplinary programs into decisions and tradeoffs leadership can act on
  • Thrive in ambiguous, fast-moving environments where the hardware, the scale, and the requirements are all changing simultaneously
  • Bachelor's degree in Electrical Engineering, Mechanical Engineering, Computer Engineering, or equivalent practical experience

Nice to have

  • direct experience deploying leading-edge AI accelerator clusters at hyperscale

What the JD emphasized

  • senior-level responsibility
  • AI, HPC, or high-density compute clusters at scale
  • interface standards that held up across multiple hardware generations and sites
  • led cross-functional programs with both internal engineering teams and external developers, engineering firms, and OEM partners
  • strong systems thinking with execution discipline
  • Communicate clearly with technical and executive audiences