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| Product Overview |
|---|
The Ampere Altra Q80-30 combines a high core count with a stable clock speed to handle heavy, parallelized tasks found in modern data centers. It’s designed to fit into cloud and edge computing environments where performance per watt is a key consideration. This processor suits applications that require massive scalability without sacrificing energy efficiency. |
| General Information | |
|---|---|
| Brand | Ampere |
| Part Number | Ampere Q80-30 |
| Technical Information | |
|---|---|
| Processor Family | Other |
| Total Threads | 80 |
| Base Clock Speed | 3.00 GHz |
| PCIe Version | PCIe 4.0 |
| Lithography | 7 nm |
| Memory Specifications | |
|---|---|
| Memory Types | DDR4 |
| Max Memory Channels | 8 |
| Physical Characteristics | |
|---|---|
| Weight | 3.00 |
| Condition | Refurbished |
| Product Description |
|---|
The Ampere Altra Q80-30 is built to deliver robust multi-core performance, ideal for handling intensive cloud and enterprise workloads. This processor is commonly used in data centers and server environments where parallel processing is essential. Often found in high-performance computing setups, it benefits organizations focused on scalable infrastructure and efficient processing power. The Q80-30 is well-suited for developers, system architects, and IT teams seeking to optimize cloud-native applications. Key Features
This processor is typically deployed in cloud service providers’ infrastructure, hyperscale data centers, and enterprises running large-scale workloads. Its balance of core count and power efficiency helps reduce operational costs while maintaining strong computational capabilities. |
| Use Cases |
|---|
The Ampere Altra Q80-30 processor is suited for environments requiring robust parallel processing and energy efficiency. How It's Used:
This processor supports a variety of demanding computational tasks, enabling organizations to improve throughput and reduce operational costs. |