Computing

UCS Unified Computing

Cisco UCS unifies compute, network, and storage access into a programmable, policy-driven system for the data center and edge.

What it delivers

Why UCS Unified Computing

  • Blade (B-Series), rack (C-Series), and modular (X-Series) servers under one management model.
  • Policy-based, programmable infrastructure with service profiles for fast, repeatable deployment.
  • Built for AI, virtualization, and demanding enterprise and federal workloads.
  • Managed locally with UCS Manager or cloud-natively with Cisco Intersight.
Models & variants

Find the UCS Unified Computing model that fits

Compare the models in this family. Open any datasheet to read the full specs right here.

UCS Servers

UCS X-Series Modular System

Unlock operational efficiency, agility, and scale for your hybrid cloud infrastructure.

UCS B-Series Blade Servers

Tap into better performance and operational efficiency for a wide range of physical and virtual workloads.

UCS C-Series Rack Servers

Tackle any workload challenge with a flexible combination of processor, memory, I/O, and internal storage resources.

UCS S-Series Storage Server

Activate your data and insights in real time with this modular, high-availability, storage-optimized server.

UCS Servers for AI

UCS X-Series for AI

Bridge the gap between IT and AI applications with a modular platform that enables unmatched flexibility.

PCIe GPU servers

Develop, train, and scale AI applications with PCIe-based platforms designed for serviceability and performance.

HGX and OAM servers

Tackle the most demanding AI and HPC application requirements with state-of-the-art GPU supercomputers.

Fabric interconnects

Fabric interconnects

Unifies computing, networking, and management resources into one cohesive system for UCS servers.

Datasheets & guides

ProcurementTAA compliantDoDIN APL-readyGSA · SEWP · NASPOFIPS 140-3 options

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