
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 Opteron 8218HE is a dual-core server processor designed to deliver steady performance for data center workloads while keeping power consumption in check. It fits well in server setups where efficiency and reliable multi-thread processing are priorities, making it a practical choice for virtualization and enterprise tasks. |
| General Information | |
|---|---|
| Brand | AMD |
| Part Number | OSP8218GAA6CY |
| Alternate Part Number | OSP8218GAA6CY-02-CT |
| Technical Information | |
|---|---|
| Processor Family | AMD Opteron |
| # Of Cores | 2 Core |
| Total Threads | 2 |
| Base Clock Speed | 2.60 GHz |
| Physical Characteristics | |
|---|---|
| Weight | 3.00 |
| Condition | Refurbished |
| Product Description |
|---|
The AMD Opteron 8218HE is a server processor built for handling demanding multi-threaded applications with energy efficiency in mind. Its two cores running at 2.60GHz provide reliable performance for tasks like virtualization, database management, and web serving. This processor is often found in data center servers where balancing power consumption and computing power is essential. Commonly used in enterprise servers, the Opteron 8218HE suits IT professionals and system administrators looking to deploy efficient, scalable server solutions. It supports workloads that require consistent processing without excessive heat generation or energy usage. Key Features
This processor is typically deployed in blade servers and rack-mounted systems where space and power are limited but performance needs remain high. Its balanced design helps data centers manage energy costs while supporting vital IT infrastructure. |
| Use Cases |
|---|
The AMD Opteron 8218 HE processor is ideal for server scenarios requiring efficient processing power with manageable energy demands. How It's Used:
By integrating this processor into server systems, organizations can optimize workloads while controlling operational energy costs. |