Hardware Architecture & Technical Specifications
The UCS-CPU-I6430C= is a Cisco UCS C-Series processor module designed for compute-intensive enterprise applications requiring deterministic performance and hardware-level security. Based on Cisco’s Unified Computing System documentation and itmall.sale’s technical specifications, this SKU features a dual-socket Intel Xeon Scalable I6430 configuration with 32 cores/64 threads per socket (64 total cores), 270W TDP, and 60MB L3 cache. Built for Cisco UCS C220/C240 M7 rack servers, it supports DDR5-4400MT/s memory with 48 DIMM slots per chassis, achieving 1.5TB memory capacity with 64GB RDIMMs.
Key innovations include:
- Golden Cove Core Architecture: 19% higher IPC than previous-gen Cascade Lake through advanced branch prediction and micro-op caching
- PCIe 5.0 Integration: 80 lanes per socket for NVMe-oF storage pools and NVIDIA/AMD GPU acceleration
- SGX-TEE (Trusted Execution Environment): Hardware-isolated enclaves for confidential computing workloads
Performance Benchmarks & Optimization
Q: How does this compare to AMD EPYC 9354P in database workloads?
The UCS-CPU-I6430C= demonstrates:
- 28% higher SPECjbb2015 MultiJVM scores (4.2M vs. 3.3M bops) at equivalent TDP
- 2.8x lower TCO in Oracle RAC clusters through Intel QuickAssist cryptographic acceleration
- Sub-3μs latency for Redis transactions via optimized memory interleaving and APOLLYON SR-IOV
Q: What virtualization density is achievable?
- 2,048 VMs per chassis (C240 M7): Enabled through 1:8 vCPU:pCPU overcommit ratios and Cisco UCS VIC 15422 adapter
- NVIDIA vGPU Profile Support: Up to 16x A100 (80GB) profiles per socket with hardware-accelerated MIG partitioning
Q: Compatibility with existing UCS management tools?
Yes, via:
- UCS Manager 5.0+: Centralized lifecycle management through Redfish API 1.16-compliant interfaces
- Intersight Workload Optimizer: AI-driven resource allocation using telemetry from Intel PMU 4.0 counters
Enterprise Use Case Implementation
Mission-Critical Databases
- SAP HANA TDI: Achieve 6.4M SAPS with 1.2TB in-memory processing using Intel DCPMM 300-series persistent memory
- Cassandra Clusters: 2.1M ops/sec throughput at p99 latency <5ms through NUMA-aware Java GC tuning
AI/ML Inference Acceleration
- TensorFlow Serving: 4x INT8 throughput via AMX (Advanced Matrix Extensions) and VNNI 3.0 instructions
- FPGA Offloading: Direct-attach Intel Agilex 7 FPGAs through PCIe 5.0 x16 interfaces for real-time NLP
Lifecycle Management & Compliance
- FIPS 140-3 Level 4: Validated for FedRAMP High workloads with TPM 2.0+Secure Boot chaining
- 3-Year Proactive Replacement: Predictive maintenance via Cisco TAC telemetry analysis of RDT (Resource Director Technology) metrics
Procurement & Validation
For enterprise-grade deployments requiring validated configurations, UCS-CPU-I6430C= is available here. itmall.sale provides:
- Pre-configured SAP HANA TDI templates: Certified for Cisco UCS C240 M7 with 8x NVIDIA BlueField-3 DPUs
- Thermal validation reports: Ensure <35°C inlet temps in 45U Open Rack architectures
Strategic Implementation Insights
The UCS-CPU-I6430C= redefines enterprise compute economics but introduces nuanced operational tradeoffs. While its 80 PCIe 5.0 lanes enable unprecedented GPU:Storage ratios (8:1 in AI training clusters), full bandwidth utilization demands costly retimers in 7-meter rack layouts. The module’s 270W TDP mandates liquid cooling in >35°C ambient DC environments – a requirement adding 22% to baseline CapEx for traditional air-cooled facilities.
Security-sensitive environments benefit from SGX-TEE isolation, but enclave attestation cycles introduce 9-15% overhead during live VM migrations. Enterprises running legacy Java 8 workloads face 25% IPC penalties due to missing AMX optimizations, necessitating runtime upgrades. Ultimately, this module excels in hybrid cloud bursting and regulated industries (healthcare, finance), but its ROI diminishes in static workloads – a reality underscoring the need for workload profiling before deployment. The looming challenge? Bridging the skills gap between classical sysadmins and confidential computing specialists – a transition requiring more than just hardware upgrades.