Skip to content

Use-case guide · Text classification

Should you pick H200 SXM for text classification?

H200 SXM has 141 GB VRAM. Whether it's the right fit for text classification depends on your model size, expected QPS, and budget. Below is what we're seeing in production.

VRAM + model fit

H200 SXM fits models up to ~99B parameters in BF16 comfortably with room for KV-cache. For text classification specifically, you'll want to leave headroom for context length growth.

Pricing

Live pricing across all providers for H200 SXM is on the GPU detail page — click through for the sortable list.

Throughput

On text classification workloads, H200 SXM 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.