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| Product Overview |
|---|
The Micron MTA18ASF2G72PZ-3G2E2 is a 16GB DDR4 memory module running at 3200MHz, designed primarily for use in servers and professional computing environments. It provides error correction to keep data reliable and fits standard DDR4 slots, making it a solid choice to maintain system stability and performance in demanding tasks. |
| General Information | |
|---|---|
| Brand | Micron |
| Part Number | MTA18ASF2G72PZ-3G2E2 |
| Technical Information | |
|---|---|
| Memory Capacity | 16GB |
| Memory Technology | DDR4 |
| RAM Standard | PC4-25600 |
| Pin Count | 288-Pin |
| Error Correction | ECC |
| Rank | 2R |
| Voltage | 1.2V |
| Performance | |
|---|---|
| Bus Speed | 3200 MT/s |
| Bandwidth | 25600 MB/s |
| Native Speed | 3200 MHz |
| CAS | CL22 |
| Physical Characteristics | |
|---|---|
| Weight | 0.50 |
| Condition | Refurbished |
| Miscellaneous | |
|---|---|
| Eco Friendly | Yes |
| Compliance Standards | RoHS |
| Product Description |
|---|
This 16GB DDR4 memory module from Micron operates at 3200MHz, providing reliable high-speed data processing essential for demanding computing tasks. It is designed to deliver steady performance in systems that require robust and consistent memory operation. Often found in servers and workstations, this ECC-enabled memory helps detect and correct data corruption, making it a preferred choice for environments where data integrity is critical. Professionals managing databases, virtualization, or complex simulations benefit from its stability and speed. Key Features
This memory module is typically deployed in server environments and professional workstations where stability and performance are vital. Its ECC capability helps reduce system crashes and data loss, contributing to overall system reliability. Using this module can improve system uptime and efficiency, especially in setups handling critical workloads or large datasets. |