Use-case guide · Vision-language
Should you pick V100 16GB for vision-language?
V100 16GB has 16 GB VRAM. Whether it's the right fit for vision-language depends on your model size, expected QPS, and budget. Below is what we're seeing in production.
VRAM + model fit
V100 16GB fits models up to ~11B parameters in BF16 comfortably with room for KV-cache. For vision-language specifically, you'll want to leave headroom for context length growth.
Pricing
Live pricing across all providers for V100 16GB is on the GPU detail page — click through for the sortable list.
Throughput
On vision-language workloads, V100 16GB typically delivers the throughput published in its FP16 spec, minus the framework overhead (vLLM ≈ 85% MFU, TGI ≈ 70%).
Try the calculator to size the hardware for your specific model, or see all GPUs on the InferenceScore leaderboard.