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| Product Overview |
|---|
The HP NVIDIA Tesla T4 16GB GDDR6 PCI Express x16 video graphics card offers a solid balance of performance and efficiency. It fits well in servers or workstations dedicated to AI inference, machine learning, and data analytics, providing robust compute power without excessive heat or power demands. |
| General Information | |
|---|---|
| Brand | HP |
| Part Number | P17819-B21 |
| Technical Information | |
|---|---|
| Chipset | Nvidia |
| GPU Clock | Boost: 1590 MHz |
| Bus Interface | PCI Express x16 (PCIe 3.0 x16) |
| Supported APIs | DirectX 12, OpenGL: 4.6, OpenCL, Vulkan: 1.2.175 , CUDA, DirectCompute |
| Memory | |
|---|---|
| Memory Size | 16GB |
| Interface | GDDR6 |
| Memory Bus | 256-bit |
| Physical Characteristics | |
|---|---|
| Slot Width | Single-Slot, Low Profile |
| 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 T4 16GB graphics card is designed to accelerate AI workloads, machine learning models, and complex data analytics. It is often found in data centers and high-performance computing setups where efficient processing of large datasets is critical. Built for professionals working in AI development, research institutions, and cloud service providers, this card helps boost inference performance while maintaining energy efficiency. Its low-profile design makes it compatible with many server chassis, making it a versatile choice for diverse deployment scenarios. Key Features
This card is typically deployed in data centers focused on AI inference and virtual desktop infrastructure. It provides scalable performance that balances power and efficiency in demanding computational tasks. By integrating this GPU, organizations can accelerate their AI pipelines, reduce latency in inference workloads, and make better use of limited rack space in server rooms. |