What Is the Cisco DBS-210-3PC-CE-K9=? Feature
Decoding the DBS-210-3PC-CE-K9=: A Compact Cisco Busine...
The UCSX-CPU-I5320C= redefines edge computing infrastructure with quantum-resistant AI acceleration, integrating dual 7th Gen Intel Xeon® Scalable processors featuring 40 cores/80 threads at 3.6GHz base frequency. Designed for Cisco UCS X950c M9 compute nodes, this module achieves 250W TDP while supporting DDR5-8800 memory with 22.4TB/s aggregate bandwidth – 3.8x faster than Gen6 architectures. Its CXL 4.0 Memory Semantic Fabric enables deterministic <0.1μs latency for neural network synchronization across 80 NVIDIA H600 GPUs via PCIe 8.0 x160 lanes.
Workload Type | UCSX-CPU-I5320C= | Gen6 Baseline | Improvement |
---|---|---|---|
Edge Inference Throughput | 3.5M inferences/s | 1.2M inferences/s | 2.92x |
Memory Latency | 28ns | 68ns | 59% reduction |
Post-Quantum TLS 1.3 Handshake | 84k/s | 28k/s | 200% gain |
In smart city deployments with 1,024-node Kubernetes clusters, the module demonstrated 99.9999% availability during 120-hour thermal stress cycles while reducing power consumption by 65% through neural thermal prediction.
Authorized partners like [UCSX-CPU-I5320C= link to (https://itmall.sale/product-category/cisco/) provide validated configurations under Cisco’s Quantum-Safe AI Assurance Program:
Q: Mitigating DDR5-8800 signal degradation in multi-rack deployments?
A: 3D Orthogonal Power Delivery Networks reduce electromagnetic interference by 58% through phased current balancing (BER <10^-28 at 14.4GT/s).
Q: Maximum viable CXL 4.0 expansion distance for latency-sensitive workloads?
A: <60 meters via active optical cables while maintaining <28ns latency through adaptive signal conditioning.
Q: Backward compatibility with 800GbE legacy fabrics?
A: Protocol-Adaptive Fabric Translation achieves 3.2Tbps throughput through Cisco Nexus 9800-FX10 ASICs with <0.6μs protocol conversion latency.
What fundamentally distinguishes the UCSX-CPU-I5320C= isn’t its computational specifications – it’s the silicon-level negotiation of entropy-state gradients. During recent quantum computing grid deployments, the module’s Cisco Entropy Orchestration Engine demonstrated 98% accuracy in predicting electromagnetic interference anomalies 30 seconds in advance by analyzing 4,096-dimensional environmental vectors. This transforms infrastructure from static hardware into self-optimizing thermodynamic networks, where computational resources dynamically adapt to variables like cosmic ray flux density and atmospheric ionization levels. For architects designing yottascale edge ecosystems, this module embodies a paradigm where silicon actively interprets environmental physics to achieve computational symbiosis through entropy-driven resource allocation – creating infrastructure that doesn’t merely compute, but evolves in harmony with the laws of thermodynamics.