
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 AMD EPYC 7502 is a server-grade processor designed to deliver high core counts and efficient performance for enterprise workloads. It fits into data center environments where processing power and scalability are critical, supporting demanding applications and multitasking efficiently. |
| General Information | |
|---|---|
| Brand | AMD |
| Part Number | 100-000000054 |
| Technical Information | |
|---|---|
| # Of Cores | 32 Core |
| Total Threads | 64 |
| Max Turbo Frequency | 3.35 GHz |
| Base Clock Speed | 2.5 GHz |
| Socket Type | SP3 |
| Cache | 128 MB L3 |
| Thermal Design Power | 180 W |
| Memory Specifications | |
|---|---|
| Max Memory Size | 4 TB |
| Memory Types | DDR4-3200 ECC (RDIMM/LRDIMM) |
| Max Memory Channels | 8 |
| Bandwidth | 204.8 GB/s |
| Physical Characteristics | |
|---|---|
| Weight | 5.00 |
| Condition | Refurbished |
| Miscellaneous | |
|---|---|
| Eco Friendly | Yes |
| Product Description |
|---|
The AMD EPYC 7502 processor delivers robust multi-core performance suited for demanding server environments. Designed to handle complex computational tasks, it fits well in data centers and enterprise servers where parallel processing and reliability are key. Often found in systems running virtualization, cloud services, or large databases, this CPU is built for IT professionals and businesses needing dependable processing power without compromise. Its architecture supports high memory bandwidth and connectivity, making it a solid choice for scalable server solutions. Key Features
This processor is typically deployed in data centers and enterprise-grade servers, powering applications that require extensive parallel processing. It contributes to stable and efficient operations where uptime and speed are essential. Its role in high-performance computing setups means users benefit from smooth multitasking and the ability to handle large datasets or virtual machines conveniently. |