Short answer: yes, on a H100 80GB (80GB) at FP16/BF16. Long answer below.
Qwen 2.5 Coder 32B has 32.5B parameters. At FP16 that's 65 GB of raw weights. Quantization shrinks that, but you also need budget for the KV cache (definition), framework overhead, and safety headroom. The rule of thumb: real usable budget on a card is roughly its nameplate VRAM minus 25%. That's how the table below was computed.
Smallest GPU that fits Qwen 2.5 Coder 32B at any quant: H100 80GB at FP16/BF16.
Lossless inference needs 65 GB. Pick from 13 cards.
Q4_K_M fits comfortably (18 GB weights).
Open the calculator pre-tuned for Qwen 2.5 Coder 32B: ↗ /calc?model=qwen-2-5-coder-32b
// sign in with github to leave a comment. threads live in the repo's discussions tab.