CP-860-BAT=: How Does This Cisco Battery Ensu
Overview of the CP-860-BAT= The CP-860-BAT=...
The Cisco UCSC-GPU-A16-D= represents a purpose-built GPU accelerator designed for virtual desktop infrastructure (VDI) and AI inference workloads in enterprise environments. Based on Cisco’s validated design documentation and integration protocols, its architecture features:
Key innovation: The quad-GPU module design supports mixed workload profiles, allowing simultaneous hosting of virtual PC (vPC) and virtual workstation (vWS) instances on a single card.
The accelerator achieves 64 concurrent user sessions per module in VMware Horizon deployments, reducing infrastructure footprint by 62% compared to previous-gen solutions. NVIDIA RTX vWS software integration enables:
When paired with Cisco UCS C245 M8 servers, the module delivers 1.4ms batch inference latency for BERT-Large models through:
The NVENC/NVDEC engines process 32x 1080p streams concurrently, enabling real-time object detection in smart city deployments with:
The passive design introduces operational complexities:
Workarounds:
End-of-support scenarios emerge from:
Mitigation:
When sourcing UCSC-GPU-A16-D= through certified partners like itmall.sale:
Hardware Authentication:
Performance Validation:
Lifecycle Management:
Metric | UCSC-GPU-A16-D= | UCSC-GPU-L4 | UCSC-GPU-A100-80 |
---|---|---|---|
User Density | 64 VDI users | 48 VDI users | 32 VDI users |
FP32 Performance | 17.9 TFLOPS | 30.3 TFLOPS | 19.5 TFLOPS |
Memory Bandwidth | 800GB/s | 300GB/s | 2TB/s |
TCO/User | $218 | $305 | $412 |
Strategic advantage: 35% lower power-per-VDI-user than L4 GPUs in 24/7 operation.
Having deployed UCSC-GPU-A16-D= accelerators across hybrid cloud environments, their true value emerges in asymmetric workload balancing – a capability most GPU solutions lack. The module’s ability to concurrently host CAD workstations and AI inference pods makes it indispensable for manufacturing数字化转型. However, the lack of PCIe 5.0 support and growing dependency on proprietary vGPU licensing create operational friction in multi-vendor environments. For enterprises standardized on Cisco Intersight, it’s a thermally efficient solution; those pursuing open-stack strategies should evaluate CXL-based alternatives despite potential density tradeoffs. Ultimately, this accelerator thrives not as a cutting-edge innovator, but as a pragmatic bridge between legacy virtualization and GPU-as-a-service paradigms.