CloudData.Center
AI Cloud & GPU Infrastructure

Compute platforms designed for AI workloads.

We design and integrate GPU clusters, private AI cloud, and the storage, networking, and orchestration layers that turn accelerators into a production-grade AI platform.

The business problem

Buying GPUs is the easy part. Extracting value requires high-performance fabrics, AI-optimized storage, scheduling and orchestration, MLOps tooling, and security — all tuned to training and inference patterns. Without an integrated platform, expensive accelerators sit idle, jobs stall on I/O, and teams cannot ship models reliably.

What we deliver

A reference architecture and integration plan for a high-utilization AI platform — spanning compute, storage, network fabric, orchestration, and MLOps — deployable on dedicated infrastructure, private AI cloud, or hybrid models.

Capabilities

What we deliver

From bare-metal GPUs to inference at scale.

GPU cluster design

Topology, rail-optimized fabric, and node design for training and inference.

Private AI cloud

Multi-tenant, secure GPU-as-a-service within your own facility.

Hybrid cloud

Burst and placement strategies across on-prem and public cloud.

Kubernetes platform

GPU-aware scheduling, multi-tenancy, and quota governance.

AI storage

High-throughput parallel and object storage for datasets and checkpoints.

High-performance networking

InfiniBand and 400G/800G Ethernet fabrics for collective operations.

MLOps

Pipelines, model registry, and observability for the model lifecycle.

Inference platform & workload security

Low-latency serving with isolation and policy controls.

Engagement model

Typical ways we engage

01

Reference architecture

A vendor-neutral blueprint for your GPU platform and fabric.

02

Platform integration

Build and integrate the full compute, storage, network, and MLOps stack.

03

Private AI cloud enablement

Stand up secure GPU-as-a-service for internal teams or customers.

Technology ecosystem

Vendor-neutral integration

We integrate leading technologies across the data center ecosystem, selecting what best fits your performance, cost, and risk objectives.

  • GPU & accelerator vendors
  • AI server OEMs
  • Parallel & object storage
  • InfiniBand/Ethernet fabrics
  • Kubernetes & orchestration
  • MLOps platforms

Technology ecosystem references represent integration experience and target categories, not formal partnerships.

Outcomes

What you can expect

Higher
GPU utilization
Rail-optimized
fabric design
Production
MLOps and inference
Get started

Planning a ai cloud/gpu initiative?

Tell us about your project. We'll outline a clear engagement model and roadmap tailored to your environment.