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| Product Overview |
|---|
The NVIDIA RTX 5000 Ada Generation is a professional graphics card designed to manage demanding workloads with a large memory footprint and fast data throughput. It fits into high-end workstations where advanced rendering, AI tasks, and simulation require both power and stability without unnecessary complexity. |
| General Information | |
|---|---|
| Part Number | NVIDIA RTX 5000 ADA-PNY |
| Technical Information | |
|---|---|
| Chipset | Nvidia |
| Bus Interface | PCI Express 4.0 x16 |
| Supported APIs | DirectX 12, OpenGL: 4.6, OpenCL, Vulkan: 1.3, CUDA, Shader Model: 6.7, DirectCompute |
| Output Interface | 4x DisplayPort 1.4a |
| Memory | |
|---|---|
| Memory Size | 32GB |
| Interface | GDDR6 |
| Memory Bus | 256-bit |
| Physical Characteristics | |
|---|---|
| Weight | 3.00 |
| Condition | Refurbished |
| Miscellaneous | |
|---|---|
| Assembly Required | Yes |
| Eco Friendly | Yes |
| Compliance Standards | WEEE, RoHS, CE, FCC |
| Product Description |
|---|
The NVIDIA RTX 5000 Ada Generation graphics card delivers robust performance tailored for professionals in fields like 3D rendering, AI development, and high-end visualization. This card is commonly found in workstations that require substantial memory and compute power to handle large datasets and complex graphics tasks. Built for creative professionals, engineers, and researchers, the RTX 5000 Ada supports intensive workflows where speed and reliability matter. Its architecture provides a balance of efficiency and power, making it suitable for both real-time rendering and deep learning inference. Key Features
This card is typically deployed in professional workstations used in animation studios, scientific research labs, and AI development centers. It handles complex rendering and computation efficiently, helping users focus on their projects without hardware bottlenecks. Its role in these environments is critical, providing the graphical horsepower needed to visualize detailed models or accelerate machine learning workflows without compromise. |