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| Product Overview |
|---|
The HPE P24396-B21 EPYC 7272 processor offers a solid balance of core count and clock speed tailored for enterprise servers. It fits into HPE platforms that require robust multi-threading capabilities to manage complex workloads. This CPU is a practical choice for IT setups focusing on virtualization, database operations, and scalable cloud services. |
| General Information | |
|---|---|
| Brand | HPE |
| Part Number | P24396-B21 |
| Technical Information | |
|---|---|
| Processor Family | EPYC Rome |
| # Of Cores | 12 Core |
| Total Threads | 24 |
| Max Turbo Frequency | 3.2 GHz |
| Base Clock Speed | 2.9 GHz |
| PCIe Version | PCIe 4.0 |
| Lithography | 7 nm |
| Socket Type | SP3 |
| Cache | 64 MB |
| Thermal Design Power | 120 W |
| Memory Specifications | |
|---|---|
| Max Memory Size | 4 TB |
| Memory Types | DDR4-3200 |
| Max Memory Channels | 8 |
| Bandwidth | 204.8 GB/s |
| Physical Characteristics | |
|---|---|
| Weight | 5.00 |
| Condition | Refurbished |
| Miscellaneous | |
|---|---|
| Compliance Standards | WEEE, RoHS |
| Product Description |
|---|
This HPE P24396-B21 is a powerful AMD EPYC 7272 processor built for demanding data center workloads. It delivers 12 cores running at 2.9GHz, making it suitable for tasks that require strong multi-core performance. Often found in enterprise servers, this CPU handles virtualization, database management, and cloud applications with ease. Engineered for IT professionals and organizations that rely on scalable computing power, it's commonly used in server blades, rack servers, and high-performance computing setups. Its architecture supports efficient threading and resource management to optimize throughput. Key Features
This processor is typically deployed in enterprise data centers and cloud infrastructure, where reliability and consistent performance are critical. It plays a key role in balancing computational demands while maintaining energy efficiency in rack-mounted servers. |