N540-ACC-SYS: What’s Included, Compatibilit
Core Components and Purpose of the N540-ACC-SYS�...
The Cisco UCSX-GPU-A16-D= is a high-density GPU accelerator designed for Cisco’s UCS X-Series Modular System, targeting enterprises that demand AI/ML scalability, virtual desktop infrastructure (VDI), and real-time rendering capabilities. Based on NVIDIA’s A16 GPU architecture, it features 4x GPUs per module (16 GB GDDR6 each) with a unified 256-bit memory bus, delivering 100 TFLOPs of FP32 performance at a 250W TDP.
Cisco’s integration focuses on PCIe Gen4 x16 host interfaces and NVIDIA vGPU software compatibility, enabling seamless workload partitioning across virtual machines (VMs) or containers. This design minimizes latency for hybrid workloads like AI inference coupled with distributed storage, as validated in Cisco’s 2024 Performance Benchmark Suite.
In Citrix XenDesktop deployments, a single UCSX-GPU-A16-D= supported 200 concurrent users at 4K resolution (60 FPS), outperforming AMD Instinct MI210 by 35% in user density per watt.
Using TensorRT 8.6, the accelerator achieved 12,000 inferences/sec on ResNet-50 models (INT8 precision) with <2 ms latency—2.5x faster than NVIDIA T4 in Cisco UCS C240 M7 benchmarks.
Autodesk Maya tests demonstrated 48 fps at 8K resolution with ray tracing enabled, leveraging NVIDIA OptiX and RT core optimizations.
While the A100 offers FP64 and HBM2e memory, the UCSX-GPU-A16-D= prioritizes FP32/INT8 throughput and VDI density, making it 40% more cost-efficient for hybrid AI/VDI workloads.
Yes, but only in Cisco Edge Automation Toolkit-managed environments with ambient temperatures ≤30°C. Avoid deployments without redundant power supplies.
Cisco’s Intersight Workload Optimizer reduces energy costs by 25% through power capping, while NVIDIA vGPU licensing integration cuts software overhead by 30% versus standalone GPU solutions.
For enterprises requiring certified, warranty-backed hardware, the UCSX-GPU-A16-D= is available at itmall.sale. Always validate configurations using Cisco’s UCS Hardware Compatibility Matrix, particularly for mixed CPU/GPU generations in UCS X-Series nodes.
In media & entertainment and healthcare sectors, the UCSX-GPU-A16-D= proves indispensable for scenarios requiring concurrent rendering and AI analytics—such as real-time MRI analysis during 4K surgical broadcasts. While NVIDIA’s H100 dominates pure AI training, Cisco’s TCO optimization and VDI density make this accelerator a pragmatic choice for enterprises balancing CapEx and operational flexibility. The lack of FP64 support limits scientific computing use cases, but for hybrid-cloud enterprises standardizing on UCS X-Series, this GPU delivers unmatched versatility. Its true value emerges in edge-to-core deployments, where unified management via Intersight simplifies lifecycle operations across distributed GPU clusters.