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V7 V71920032GB-LR 32GB DDR4-2400MHz PC4-19200 CL17 288-Pin LRRDIMM Memory
- Capacity: 32GB
- Type: DDR4 SDRAM
- Speed: 2400MHz (PC4-19200)
- Form Factor: 288-Pin LR-RRDIMM
- Latency: CL17
- LR-DIMM: Load-Reduced DIMM for maximum capacity and efficiency
- ECC: Error-Correcting Code
- Designed for high-density server applications
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Product Overview
The V7 V71920032GB-LR is a 32GB DDR4 LR-RRDIMM memory module. It operates at 2400MHz (PC4-19200) with CL17 latency, designed for servers requiring high capacity and advanced memory features.
Technical Information
| Capacity | 32 GB |
| Memory Type | DDR4 SDRAM |
| Speed | 2400 MHz |
Additional Specifications
| Part Number | V71920032GB-LR |
| Form Factor | 288-Pin LR-RRDIMM |
| Latency | CL17 |
Product Description
The V7 V71920032GB-LR is a 32GB DDR4 Load-Reduced DIMM (LR-DIMM) memory module, engineered for high-performance server environments. It operates at a speed of 2400MHz, corresponding to the PC4-19200 standard, and features a CL17 latency, providing substantial bandwidth for memory-intensive applications. As an LR-DIMM, this module is designed to reduce the electrical load on the memory controller, enabling servers to support higher memory capacities and configurations. This makes it ideal for demanding applications such as large-scale virtualization, in-memory databases, and complex scientific simulations where maximizing RAM is critical for performance. This 288-pin module typically includes ECC (Error-Correcting Code) functionality for enhanced data integrity and system stability. The V71920032GB-LR is a key component for enterprise-grade servers aiming for maximum memory expansion and reliable operation under heavy computational loads.


