JOBSEARCHER

4 Nvidia Engineer or Archotect Remote

It SearchNew York, NYApril 23rd, 2026
NVIDIA AI Infrastructure & Kubernetes Platform Engineer (DGX Systems) Remote NVIDIA Certification required or no interview 6 months to 1+ yrs $open USC or GC req Alternate titles depending on context: AI Platform Architect – DGX & SuperPOD AI Infrastructure DevOps Engineer – NVIDIA DGX Stack Senior AI Systems Engineer – DGX | Kubernetes | InfiniBand Job Description: We are seeking a highly skilled AI Infrastructure & Kubernetes Platform Engineer with a proven track record in deploying and managing NVIDIA DGX-based AI clusters, orchestrating containerized AI workloads using Kubernetes, and ensuring secure, high-throughput operations across InfiniBand-powered networks. The ideal candidate will hold a combination of Kubernetes certifications (CKA, CKAD, CKS) and NVIDIA certifications (NCA-AIIO, NCP-AIO, NCP-AII, NCP-AIN), coupled with hands-on training in DGX, BlueField, and high-speed network operations. This position plays a key role in supporting AI/ML infrastructure at scale, enabling efficient training and inference for complex models, and integrating NVIDIA's cutting-edge compute, storage, and fabric solutions with modern DevOps practices. AI Infrastructure Operations Deploy and manage NVIDIA DGX BasePODs and SuperPODs for high-performance AI workloads. Oversee DGX system lifecycle operations including provisioning, monitoring, firmware upgrades, and capacity planning. Operate Base Command Manager to manage GPU clusters, schedule workloads, and integrate with MLOps tools. Perform DGX node health validation, NCCL interconnect testing, and NVLink topology verification following new deployments or hardware changes. Kubernetes Platform Engineering Architect secure and scalable Kubernetes clusters optimized for GPU-accelerated workloads using NVIDIA GPU Operator. Leverage expertise from CKA/CKAD/CKS to develop, deploy, and secure AI applications on Kubernetes. Implement CI/CD pipelines and GitOps methodologies for deploying and managing ML workflows. High-Performance Networking & DPUs Administer InfiniBand networks and BlueField DPUs using Unified Fabric Manager (UFM). Enable NVLink/NVSwitch performance across GPU nodes and tune fabric configurations for minimal latency and maximum throughput. Use BlueField for offloading storage, firewalling, and telemetry, enhancing AI workload security and performance. Security & Compliance Apply best practices from the CKS certification to secure containerized AI environments. Configure runtime security, secrets management, network segmentation, and auditing using DPU-enhanced Kubernetes deployments. Support zero-trust architecture initiatives by enforcing workload identity, RBAC policies, and supply chain integrity across AI container images and model artifacts Monitor GPU, CPU, and I/O performance using NVIDIA DCGM, Prometheus, Grafana, and Base Command APIs. Tune system performance and model training pipelines for cost-efficiency and throughput. Build and maintain operational runbooks, incident response playbooks, and SLA reporting dashboards covering GPU utilization, thermal thresholds, and fabric health. Expertise With: DGX System, BasePOD, and SuperPOD Administration BlueField DPU Configuration & Operations InfiniBand Fabric and UFM Management Base Command Manager for workload orchestration