We are seeking an exceptional Senior Lead who combines deep hands-on SysOps/HPC expertise with the strategic vision of a solution architect. This is a rare dual-track role: you operate at the intersection of elite technical execution and client-facing presales, designing and running mission-critical GPU, HPC, and Kubernetes platforms while simultaneously co-creating opportunity with our commercial teams.
This role carries both SysOps, HPC depth and DevOps. You are expected to spend
at least 60% of your time on implementation and technical execution
What You Will Do
Presales & Business Development
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Partner with sales and solution teams to identify and qualify new opportunities
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Lead or support technical presales activities: discovery workshops, RFP responses, architecture presentations
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Build and deliver proof-of-concepts (POCs) that demonstrate platform capabilities to prospective clients
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Prepare high-quality technical materials
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Act as a trusted technical advisor during client conversations, proposing solutions aligned to business goals
In-Account Delivery — SysOps & DevOps Execution
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Operate directly within client accounts as a senior SysOps/DevOps engineer
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Run, troubleshoot, and optimize production-grade Kubernetes clusters and GPU/HPC environments hands-on
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Own Linux system administration at a deep level: kernel tuning, storage, networking, performance profiling
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Implement and maintain IaC pipelines, GitOps workflows, and CI/CD systems
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Serve as the senior escalation point for complex operational incidents within accounts
Architecture & Solution Design
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Design end-to-end platform architectures spanning cloud, hybrid, and on-premises HPC environments
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Define workload isolation models, networking architectures, and storage strategies for multi-tenant platforms
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Recommend and validate technology choices aligned to client scale, budget, and team maturity
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Produce architecture decision records (ADRs), solution blueprints, and technical runbooks
Technical Competencies & Requirements
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Architecture & System Design
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Design production-grade multi-cluster Kubernetes platforms:
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RKE2, EKS (AWS), AKS (Azure) at enterprise scale
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GPU-aware clusters: NVIDIA H100 / A100 / B200 node pools
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Hybrid cloud + on-premises HPC infrastructure
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Define and document:
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Workload isolation: namespaces, MIG partitioning, multi-tenancy models
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Networking: BGP peering, Ingress controllers, service mesh (Istio / Cilium)
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Storage: Longhorn, Ceph, distributed and high-throughput file systems
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Platform Engineering & GitOps Strategy
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Define and enforce platform standards across the delivery lifecycle
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GitOps tooling: ArgoCD, Fleet — declarative cluster management
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CI/CD pipelines: Azure DevOps, Jenkins — build, test, promote
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Infrastructure as Code: Terraform (modules, remote state, workspaces), Ansible
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Standardize cluster bootstrapping, app deployment lifecycle, environment promotion (Dev → QA → Prod)
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AI / GPU Infrastructure Architecture (Priority Competency)
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Design and operate GPU compute platforms at scale:
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GPU Operator deployment and lifecycle management
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MIG (Multi-Instance GPU) partitioning for multi-tenant workloads
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Advanced scheduling: Run:AI, Kubernetes-native GPU scheduling (device plugins)
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Understand AI workload classes and their infrastructure implications:
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Distributed training workloads (data/model/pipeline parallelism)
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Inference pipelines — NVIDIA Triton Inference Server, TensorRT optimization
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Align infrastructure to the full AI stack:
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CUDA stack, cuDNN, NCCL collective communication libraries
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High-speed networking: InfiniBand (HDR/NDR), RoCE for RDMA
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GPUDirect RDMA / GPUDirect Storage for low-latency data paths
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Observability & Reliability Engineering
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Define and implement full-stack observability:
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Metrics: Prometheus, Thanos (long-term retention, multi-cluster)
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Logs: Loki, Fluent Bit
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GPU telemetry: DCGM Exporter, NVIDIA Nsight Systems
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Build operational frameworks:
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SLO / SLA definitions and error budget tracking
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Alerting strategy — noise reduction, severity routing
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Incident response playbooks and on-call runbooks
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Security & Multi-Tenancy Architecture
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Design zero-trust security postures for multi-tenant platforms
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Secret management: HashiCorp Vault, External Secrets Operator
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Identity and access: IAM, RBAC, SSO/OIDC integration
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Network isolation: NetworkPolicy, micro-segmentation, mTLS
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Secure GPU sharing: MIG isolation, VGPU licensing, tenant boundary enforcement
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HPC, Data & Storage Architecture (Priority Competency)
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Understand the high-performance storage for AI/HPC workloads:
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GPUDirect Storage — bypassing CPU for GPU-native I/O
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Distributed file systems: Weka (high-throughput NFS/S3), Ceph (scalable object/block)
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Storage tiering, caching strategies, and data lifecycle management
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Size and validate storage architectures against workload I/O profiles
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Operational Leadership & Linux Systems
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Lead incident response and root cause analysis (RCA) for critical production issues
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Define upgrade strategies, change management procedures, and disaster recovery plans
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Write and maintain runbooks, operational playbooks, and knowledge base content
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Integrate organizational processes, compliance requirements, and security policies into operational frameworks
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Deep Linux expertise:
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Kernel tuning (CPU governor, NUMA, IRQ affinity, hugepages)
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Storage I/O scheduling, NVMe optimization
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Network stack tuning for RDMA / InfiniBand
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System performance profiling and bottleneck analysis
Candidate Profile — Who You Are
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you are comfortable running production systems
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You have stronger SysOps and HPC depth than DevOps breadth, and you embrace that identity
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You can shift fluidly between running a live incident, presenting an architecture to a CTO, and reviewing a POC demo environment
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You communicate technical complexity clearly — to engineers and to C-level stakeholders
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You understand why specific tooling choices matter (not just how to configure them) and can articulate trade-offs in presales conversations
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You are comfortable owning outcomes across both commercial (presales) and delivery (operations) dimensions
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You thrive in ambiguity and can scope both short POCs and long-horizon platform programs
Requirements
Required
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10+ years in platform/infrastructure engineering, with at least 2 years in architect-level role
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Proven hands-on experience operating Kubernetes at scale in production (multi-cluster, multi-tenant)
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Significant Linux systems administration experience — kernel, networking, storage at a low level
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HPC and/or GPU infrastructure experience — physical GPU servers, NCCL, InfiniBand, or high-speed fabrics
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Demonstrable presales or client-facing experience
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IaC experience: Terraform and/or Ansible in production environments
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Strong understanding of GitOps and CI/CD pipelines in enterprise settings
Strongly Preferred
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Experience with NVIDIA GPU Operator, MIG partitioning, Run:AI, or equivalent GPU scheduling tooling
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Knowledge of distributed AI training infrastructure (PyTorch DDP, Horovod, DeepSpeed) from an infrastructure perspective
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Familiarity with NVIDIA Triton Inference Server or TensorRT deployment pipelines
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Experience with Weka, Ceph, or GPUDirect Storage in HPC/AI environments
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Hands-on experience with Vault, External Secrets, and zero-trust network architectures
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Exposure to bare-metal provisioning and HPC cluster management (Slurm, PBS, or equivalent)
Certifications (Advantageous)
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CKA / CKS (Certified Kubernetes Administrator / Security Specialist)
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RHCE / RHCA (Red Hat Certified Engineer / Architect)
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AWS Solutions Architect / Azure Solutions Architect Expert
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HashiCorp Terraform Associate or Vault Associate
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NVIDIA DLI certifications (GPU computing, AI infrastructure)