CHENNAI · FULLTIME
GPU Infrastructure Engineer / HPC Engineer
Larsen & Toubro-Vyoma
Chennai · onsite · Posted 1d ago
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Section · 01
About this role
Job Purpose Build and operate large‑scale GPU compute pods to deliver predictable, high‑throughput, low‑latency training and inference services across 10K GPU cluster.
Roles & Responsibilities
- Implementation Stand up multi‑pod GPU clusters (rack/power/cooling layouts; TOR/leaf connectivity; IB/Ethernet host configs). Implement GPU partitioning (MIG/vGPU profiles) and quota policies for multi‑tenant environments. Integrate cluster schedulers (Slurm/Kubernetes) with GPU device plugins, node feature discovery, and accounting/quotas.
- Operations Own day‑2 operations across firmware/driver/DCGM/NVML lifecycles; execute change windows with zero/low downtime. Capacity planning (GPU/CPU/Memory/NIC) and bin‑packing strategies for heterogeneous GPU SKUs.
- Performance & Optimization Tune NCCL/UCX, GPU clocks/persistence, GPU Direct Storage, NUMA/locality, and CUDA runtime parameters. Drive benchmarking and acceptance (HPL, HPL‑AI, MLPerf‑like internal suites); track perf regressions with SLOs.
- Reliability & Incident Lead P0/P1 incident response for GPU, CUDA, or scheduler issues; perform root‑cause and preventative actions. Act as the primary technical lead during production outages, coordinating cross-functional teams across Networking, GPU Operations, Platform Engineering, Storage, and Application teams to restore services within SLA targets. Perform detailed Root Cause Analysis (RCA) for network, GPU, CUDA, NCCL, RDMA, and scheduler-related failures, identifying underlying causes and implementing preventive and corrective actions. Collaborate with platform and GPU engineering teams to resolve issues impacting CUDA jobs, Kubernetes scheduling, Slurm workload management, GPU resource allocation, and large-scale AI training environments. Define golden images; implement node remediation (cordon/drain/reimage) and auto‑healing workflows.
- Security & Compliance Enforce GPU tenancy isolation (MIG, cgroup/device cgroup, mpsd), secure drivers/containers, SBOM and image scanning.
- Documentation & Enablement Publish
runbooks , performance baselines, and application tuning guides for LLM training and inference.
Experience & Educational Requirement BE/B-Tech or equivalent with Computer Science or Electronics & Communication NVIDIA Certified Professional (AI Infrastructure); Linux (RHCE/LPIC) preferred.
RELEVANT EXPERIENCE
- 7–12 years building/operating
HPC/AI GPU clusters at scale; deep
CUDA/MIG/vGPU expertise.
- Proven with
H100/B ‑
series class GPUs, Slurm and/or Kubernetes device scheduling;
NCCL/UCX performance tuning.
Tools / Tech 1. CUDA, NCCL, cuDNN, TensorRT; 2. DCGM/NVML, nvidia-smi; 3. Slurm, K8s (device plugin, DaemonSets, NFD); 4. Helm/ArgoCD; 6. GPUDirect Storage; 7. Prometheus/Grafana; 8. ELK/Splunk.
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Section · 02