Can I Run / gemma 4 31B / on NVIDIA A100 80GB

Can I Run gemma 4 31B on a NVIDIA A100 80GB?

Yes

Runs at full precision (fp16). Zero quality loss.

Model size
32.7B
GPU memory
80.0GB
Smallest quant
Q2_K
Best fit
fp16

11 quantizations fit your 80.0GB

QuantMin VRAMRecommendedFile sizeHeadroom
fp16BEST66.4 GB67.9 GB1.2 GB+13.6 GB
Q8_035.7 GB37.2 GB32.6 GB+44.3 GB
Q6_K27.9 GB29.4 GB25.2 GB+52.1 GB
Q5_K_M24.2 GB25.7 GB21.9 GB+55.8 GB
Q5_K_S23.6 GB25.1 GB21.3 GB+56.4 GB
Q4_K_M20.8 GB22.3 GB18.7 GB+59.2 GB
Q4_K_S19.7 GB21.2 GB17.8 GB+60.3 GB
Q3_K_L15.6 GB17.1 GB16.6 GB+64.5 GB
Q3_K_M14.7 GB16.2 GB15.3 GB+65.3 GB
Q3_K_S13.6 GB15.1 GB13.8 GB+66.4 GB
Q2_K11.8 GB13.3 GB11.9 GB+68.3 GB

Try it in the cloud first

Don't want to download gemma 4 31B just to try it? Use a hosted API or rent a GPU by the second.

Affiliate links — we earn a commission at no cost to you.

Advertisement
Full model details
gemma 4 31B

All quant variants, benchmark scores, and use-case tags.

Best models for this GPU
NVIDIA A100 80GB

Top-ranked open-source models that fit in 80.0GB.

FAQ

Can the NVIDIA A100 80GB run gemma 4 31B?

Yes. The NVIDIA A100 80GB's 80.0GB of VRAM is enough to run gemma 4 31B at fp16 quantization (66.4GB required).

What's the best quantization to use?

fp16 is the highest-precision quantization that fits in your 80.0GB. It uses about 66.4GB of memory and 67.9GB recommended for comfortable inference.

What if I need more headroom for context length?

KV cache memory grows with context length. The numbers above assume a baseline 2K-4K context. For long-context use (32K+), add another 2-6GB depending on the model architecture.