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| Product Overview |
|---|
The HP NVIDIA Tesla P100 16GB HBM2 PCI Express 3.0 x16 video graphics card is designed for high-performance computing tasks. It fits in PCIe slots and offers a combination of substantial memory and GPU power suited for data centers, research institutions, and enterprises needing GPU acceleration for deep learning and scientific calculations. |
| General Information | |
|---|---|
| Brand | HPE |
| Part Number | Q0C71A |
| Technical Information | |
|---|---|
| Chipset | Nvidia |
| Bus Interface | PCI Express 3.0 x16 |
| Supported APIs | OpenGL: 4.5, OpenCL, Vulkan: 1, CUDA, DirectCompute |
| Output Interface | None (no display outputs) |
| Memory | |
|---|---|
| Memory Size | 16GB |
| Interface | HBM2 |
| Memory Bus | 4096-bit |
| Physical Characteristics | |
|---|---|
| Slot Width | Dual-slot |
| Weight | 3.00 |
| Condition | Refurbished |
| Miscellaneous | |
|---|---|
| Assembly Required | Yes |
| Eco Friendly | Yes |
| Compliance Standards | WEEE, RoHS, CE, FCC, UL, TUV |
| Product Description |
|---|
This HP NVIDIA Tesla P100 video graphics card is built for heavy computational workloads and data-intensive applications. It is commonly used in servers and workstations that require powerful GPU acceleration for tasks like artificial intelligence training, machine learning, and scientific research. Often found in data centers, research labs, and enterprises, this card helps professionals and engineers accelerate complex calculations and simulations with improved efficiency. It benefits users who need reliable and fast processing for high-performance computing environments. Key Features
This card is typically deployed in professional settings where GPU compute power is critical, such as AI model training or high-performance simulations. Its robust memory and processing capabilities make it a solid choice for accelerating workloads that would otherwise overburden CPUs alone. |