Your work profile
AI Data Center Architecture & Solution Design- Design and implement AI-focused Data Center architectures aligned with Tier II, Tier III, and Tier IV standards.
- Develop end-to-end AI Data Center solutions, including retrofitting traditional CPU-based data centers into AI Factories.
- Create advisory documents, RFPs, technical proposals, and commercial proposals for AI Data Center engagements.
- Design AI infrastructure solutions across hyperscalers (AWS, Azure, GCP, OCI) and NVIDIA Cloud Partners.
- Prepare HLDs, LLDs, network diagrams, rack layouts, BOQs, and TCO models.
- AI Networking & Fabric Architecture
- Architect and deploy InfiniBand and NVIDIA Spectrum Ethernet fabrics for AI workloads.
- Design and implement Spine-Leaf network architectures using EVPN-VXLAN overlays.
- Configure and optimize BGP, ECMP, RoCE, and high-performance networking environments.
- Lead Cumulus Linux-based deployments and network automation initiatives.
- Optimize network performance, latency, throughput, and congestion management for AI environments.
- AI Compute & GPU Infrastructure
- Design and size GPU clusters using NVIDIA H100, H200, B200, B300, DGX, and AI Factory platforms.
- Perform GPU capacity planning and workload profiling for AI and ML use cases.
- Implement GPU virtualization and Multi-Instance GPU (MIG) architectures.
- Support AI training and inference infrastructure deployments.
- AI Storage & Platform Engineering
- Design AI storage solutions utilizing NAS, SAN, NVMe, Object Storage, NFS, iSCSI, Fibre Channel, and parallel file systems.
- Implement and manage Kubernetes-based AI platforms, including OpenShift and VMware Tanzu.
- Deploy and integrate RUN and Slurm workload schedulers for GPU orchestration.
- Ensure seamless integration of AI platforms with existing enterprise infrastructure.
- Monitoring, Observability & Operations
- Implement NVIDIA UFM, NVIDIA Mission Control, and NetQ for infrastructure monitoring and observability.
- Configure telemetry, validation, troubleshooting, and fabric management workflows.
- Drive infrastructure benchmarking, performance optimization, and capacity planning initiatives.
- Support POCs, design validation exercises, production rollouts, and operational readiness activities.
- Cloud & AI Services
- Design AI infrastructure solutions across AWS, Azure, GCP, and OCI.
- Enable AI services integration across hybrid and multi-cloud environments.
- Provide guidance on AI platform adoption, scalability, and operational best practices.
Key skills required
Data Center Infrastructure
-
Strong understanding of Data Center power infrastructure, including UPS, PDU, ATS, switchgear, transformers, and generators.
-
Knowledge of Data Center cooling technologies such as CRAC, CRAH, liquid cooling, immersion cooling, and chiller systems.
-
Experience in rack design, cabling architecture, white space planning, and physical infrastructure design.
-
Understanding of raised floors, fire suppression systems, plenum design, and facility infrastructure.
AI Networking
-
Strong expertise in InfiniBand (HDR/NDR), RoCE, and Ethernet fabrics.
-
Hands-on experience with NVIDIA Spectrum switches.
-
Deep understanding of EVPN-VXLAN, BGP, ECMP, Spine-Leaf architecture, and network automation.
-
Experience with Cumulus Linux environments.
AI Compute & Platforms
-
Expertise in NVIDIA GPU platforms including DGX, H100, H200, B200, and B300.
-
Experience with GPU virtualization, MIG, and AI workload optimization.
-
Strong understanding of AI training and inference infrastructure.
AI Storage
-
Knowledge of AI storage architectures and parallel file systems such as Lustre and GPFS.
-
Experience with NAS, SAN, Fibre Channel, NVMe, NFS, iSCSI, and Object Storage technologies.
Orchestration & Container Platforms
-
Experience with Kubernetes ecosystems.
-
Hands-on expertise with OpenShift and VMware Tanzu.
-
Experience with RUN and Slurm workload management platforms.
-
Understanding of container networking for AI workloads.
AI Software Stack
-
Understanding of AI infrastructure software layers including:
-
LLM Models
-
MLOps Platforms
-
Training and Inference Frameworks
-
Agentic AI
-
NVIDIA AI Enterprise
-
NVIDIA Licensing
-
NVIDIA NVIS
Cloud Technologies
-
Strong understanding of AWS, Azure, GCP, and OCI services.
-
Experience designing AI and cloud-native solutions in hyperscaler environments.