
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 HP NVIDIA Tesla P6 16GB graphics card focuses on delivering solid GPU compute power for professional use. It fits into servers and workstations that require accelerated scientific calculations or AI processing. Rather than catering to consumer gaming needs, it serves as a workhorse in technical environments where reliability and computation speed matter most. |
| General Information | |
|---|---|
| Brand | HPE |
| Part Number | 880813-001 |
| Technical Information | |
|---|---|
| Chipset | Nvidia |
| Bus Interface | PCI Express 3.0 x16 |
| Supported APIs | OpenCL, CUDA, DirectCompute |
| Output Interface | None (compute accelerator, no display outputs) |
| Power Connectors | None (powered via PCIe x16 slot) |
| Memory | |
|---|---|
| Memory Size | 16GB |
| Interface | GDDR5 |
| Memory Bus | 256-bit |
| Physical Characteristics | |
|---|---|
| Slot Width | Single-slot (low-profile / half-height, server form factor) |
| Weight | 3.00 |
| Condition | Refurbished |
| Miscellaneous | |
|---|---|
| Assembly Required | Yes |
| Eco Friendly | Yes |
| Compliance Standards | WEEE, RoHS, cURus, CE, FCC, CCC, UL, TUV, cULus, CSA, cUL |
| Product Description |
|---|
The HP NVIDIA Tesla P6 is a specialized graphics card built for demanding computational workloads rather than traditional gaming. It’s commonly used in data centers, workstations, and servers where intensive calculations, machine learning, or scientific simulations take place. Engineered to accelerate parallel processing tasks, this card benefits professionals working in fields like artificial intelligence, engineering simulations, and data analytics. Its architecture supports complex algorithms and large datasets with ease. Key Features
This card is typically found in enterprise setups where processing efficiency is crucial. It supports the heavy lifting behind AI model training, 3D rendering, and other compute-heavy uses. By offloading complex tasks from CPUs, it helps systems perform faster and more effectively. |