Job Description
Industry: Hyperscale and AI Data Center and Cloud Computing
Location: Remote (US, Pacific Time Zone)
Employment Type: Full-Time
Reporting to: VP, Operations
POSITION SUMMARY
We are seeking an experienced Senior Manager of AI Cluster Deployment to lead the planning, deployment, integration, and operational readiness of large-scale AI infrastructure environments. This role is responsible for delivering production-grade GPU clusters that support AI training, inference, and high-performance computing workloads across cloud, hybrid, and on-premises environments.
The ideal candidate brings deep technical expertise in GPU infrastructure, networking, storage, automation, and datacenter deployment, combined with strong program leadership and cross-functional execution skills. This leader will oversee end-to-end AI cluster deployment initiatives, including hardware integration, rack-and-stack operations, provisioning automation, performance validation, and operational handoff.
The role requires hands-on familiarity with modern AI infrastructure tooling and architectures, including Canonical MaaS, VAST Data storage platforms, and both InfiniBand and Ethernet-based GPU networking fabrics.
KEY RESPONSIBILITIES
AI and GPU Cluster Deployment & Delivery
ยท Oversee and partake in deployment and integration of GPU-based compute platforms from NVIDIA and other accelerator vendors
ยท Lead and participate in end-to-end logical deployment of large-scale AI and GPU clusters in state of the art datacenters.
ยท Manage deployment programs spanning compute, storage, networking, power, cooling, and automation layers.
ยท Participate in cluster architecture review for AI training, inference and distributed compute workloads
ยท Coordinate rack-and-stack and cabling sequencing, network deployment, burn-in testing, and cluster validation.Validate deployment readiness, topology consistency, GPU fabric performance, acceptance testing, and operational turnover processes.
ยท Establish repeatable and documented deployment methodologies and scalable operational standards.
Networking & Fabric Management
ยท Lead deployment and operational validation of high-performance GPU interconnects using InfiniBand and Ethernet GPU fabric architectures
ยท Ensure proper implementation of: spile-leaf architectures, RDMA, network telemetry and performance tuning
ยท Coordinate closely with network engineering teams on topology implementation and performance optimization.
Storage & Data Infrastructure
ยท Coordinate with storage engineering teams on deployment and integration of high-performance storage environments supporting AI workloads.
ยท Ensure successful implementation and operational optimization of data storage platforms
ยท Validate storage throughput, latency, and GPU data delivery performance.
Automation & Provisioning
ยท Lead infrastructure automation initiatives for cluster provisioning and lifecycle management.
ยท Manage deployment tooling and orchestration platforms including:
o Infrastructure-as-Code frameworks
o Automated imaging and provisioning systems (e.g. Canonical MaaS)
o Cluster monitoring and observability tools
ยท Drive standardization and deployment automation to improve speed, reliability, and repeatability.
Leadership & Program Management
ยท Build and lead high-performing technical deployment and infrastructure engineering teams.
ยท Partner with datacenter operations, hardware vendors, networking teams, and AI platform engineering groups.
ยท Establish strong Project Management Office (PMO) partnership while driving consistent, accurate project updates across the team and systems (e.g. Jira)
ยท Develop operational procedures, documentation, and deployment best practices.
ยท Mentor engineers and technical leads across infrastructure domains.
QUALIFICATIONS REQUIRED
ยท Bachelor's degree in Computer Science, Engineering, Information Technology, or related field (or equivalent experience).
ยท 10+ years of infrastructure engineering or datacenter deployment experience.
ยท 5+ years leading deployment or operations teams supporting large-scale AI, HPC, or GPU infrastructure.
ยท Hands-on experience deploying and operating large GPU clusters in enterprise or hyperscale environments.
ยท Strong expertise with:
o Canonical MaaS
o Data storage platforms
o InfiniBand and Ethernet GPU fabrics
o Network architecture
o Linux systems administration
o GPU server architectures
ยท Strong understanding of:
o RDMA and RoCE networking
o High-performance storage architectures
o Cluster automation and provisioning
o Datacenter infrastructure operations
ยท Proven ability to manage complex cross-functional infrastructure deployment programs.
Preferred Qualifications
ยท Experience deploying NVIDIA DGX SuperPOD or similar AI infrastructure solutions.
ยท Familiarity with:
o NVIDIA networking technologies
o Spectrum-X or Quantum platforms
o AI model training infrastructure
o Liquid cooling environments
o DCIM and observability platforms
ยท Experience in hyperscale, cloud, or AI infrastructure environments.
ยท Certifications in networking, Linux, Kubernetes, or cloud infrastructure are a plus.
Key Competencies
ยท Technical leadership
ยท Infrastructure architecture
ยท Program execution
ยท Cross-functional collaboration
ยท Vendor and stakeholder management
ยท Problem-solving under operational pressure
ยท Process improvement and automation
ยท Excellent communication and documentation skills
Example Titles
Depending on organizational structure, this role may also align with:
ยท Senior Manager, AI Infrastructure Deployment
ยท Senior Manager, GPU Cluster Operations
ยท Director, AI Infrastructure Engineering
ยท Senior Manager, HPC & AI Platforms
ยท AI Datacenter Deployment Manager
5C Data Centers is an equal opportunity employer. We evaluate all qualified applicants without regard to race, religion, gender, age, national origin, disability, sexual orientation, veteran status, or other protected status.