
Subscribe To Our Newsletter!
Subscribe to the newsletter to stay up to date with the latest news and most useful
Newsletter
↑
Back to Top
| Product Overview |
|---|
The P73259-001 HPE EPYC 9745 processor delivers 128 cores and 256 threads at a 2.4GHz base frequency, enabling high-throughput computing suitable for enterprise servers and data center applications. It features advanced multi-threading and is optimized for workloads requiring extensive parallel processing. |
| General Information | |
|---|---|
| Brand | HPE |
| Part Number | P73259-001 |
| Technical Information | |
|---|---|
| Processor Family | EPYC Genoa |
| Total Threads | 256 |
| Base Clock Speed | 2.4 GHz |
| PCIe Version | PCIe 5.0 |
| Lithography | 5 nm |
| Socket Type | SP5 |
| Memory Specifications | |
|---|---|
| Memory Types | DDR5 |
| Max Memory Channels | 12 |
| Physical Characteristics | |
|---|---|
| Weight | 3.00 |
| Condition | Refurbished |
| Product Description |
|---|
The P73259-001 HPE EPYC 9745 processor is a powerful server-grade CPU designed to deliver exceptional multi-core performance for demanding enterprise applications. Featuring 128 cores and 256 threads, it is engineered to handle intensive workloads such as large-scale virtualization, data analytics, and high-performance computing. This processor is commonly deployed in data centers and enterprise server environments where reliability and scalability are critical. IT professionals and system architects benefit from its ability to efficiently manage parallel processing tasks while maintaining energy efficiency. Key Features
With its robust core count and threading capabilities, the P73259-001 processor empowers organizations to meet the demands of modern data-intensive applications. Its integration into HPE server systems offers a balanced solution combining performance, scalability, and efficiency. |
| Use Cases |
|---|
The P73259-001 HPE EPYC 9745 processor is ideal for environments requiring powerful and scalable computing resources. How It's Used:
This processor enables organizations to efficiently manage demanding computational workloads while maintaining system reliability and scalability. |