GPU Comparison
Select up to 2 GPUs to analyze their pricing, performance, and specifications side-by-side.
The Radeon PRO W7800 has more VRAM (32GB vs 20GB), making it better suited for large models and memory-intensive workloads. Its memory bandwidth is 60% higher (576 GB/s vs 360 GB/s), translating directly to faster inference throughput.
Maximum Capacity Reached. Remove a model to add another. (2/2)
Radeon PRO W7800 vs RTX 4000 Ada Generation: In-Depth Breakdown
VRAM: Radeon PRO W7800 vs RTX 4000 Ada Generation
The Radeon PRO W7800 carries 32GB of VRAM versus 20GB on the RTX 4000 Ada Generation. VRAM capacity is the primary constraint for running AI models without quantization — a 70B-parameter model in FP16 requires roughly 140GB, and even smaller models benefit from extra headroom. The 12GB advantage here means the Radeon PRO W7800 can run larger models natively and handle bigger batch sizes in production.
Inference Speed: Memory Bandwidth
Memory bandwidth determines how quickly data is fed to the compute units — it's the main bottleneck for autoregressive inference (token generation in LLMs). The Radeon PRO W7800 delivers 576 GB/s versus 360 GB/s on the RTX 4000 Ada Generation, a 60% edge. For models already loaded into VRAM, token generation speed scales closely with this number: the Radeon PRO W7800 will produce tokens proportionally faster in bandwidth-bound workloads.
AI Training & Compute
For model training, scientific simulation, and rendering, FP32 throughput is the key metric. The Radeon PRO W7800 delivers 45.2 TFLOPS against 26.7 TFLOPS for the RTX 4000 Ada Generation — a 69% compute advantage. Training runs and heavy matrix operations will complete proportionally faster on the Radeon PRO W7800.
Which should you buy: Radeon PRO W7800 or RTX 4000 Ada Generation?
The Radeon PRO W7800 is the stronger choice for large-model workloads where VRAM is the bottleneck. The RTX 4000 Ada Generation is more economical, and sufficient if your models fit within its 20GB.