Local LLM model fit

Can my GPU run gpt-oss 120B?

gpt-oss 120B is a 120B gpt-oss model. This page estimates Q4 VRAM fit, Ollama command, context planning, and fallback choices for common local AI GPUs.

Check gpt-oss 120B in the calculator

Q4 runtime estimate65 GB
Ollama commandollama run gpt-oss:120b
Recommended GPU80GB+ VRAM server GPU or multi-GPU setup

Best use

Large local reasoning servers, heavy agent orchestration, and high-end homelab inference. Weakness: Not realistic for consumer single-GPU setups below 80GB-class memory.

GPU fit table

HardwareExamplesClean capacityQ4 needStatusCalculator
6 GB VRAM entry GPUGTX 1660, RTX 2060 6GB4.50 GB clean VRAM65 GBToo largeOpen calculator
8 GB VRAM mainstream GPURTX 3060 Ti, RTX 4060, RTX 30706.50 GB clean VRAM65 GBToo largeOpen calculator
10 GB VRAM older high-end GPURTX 3080 10GB8.50 GB clean VRAM65 GBToo largeOpen calculator
12 GB VRAM local agent GPURTX 3060 12GB, RTX 407010.5 GB clean VRAM65 GBToo largeOpen calculator
16 GB VRAM creator GPURTX 4060 Ti 16GB, RTX 408014.5 GB clean VRAM65 GBRAM offloadOpen calculator
24 GB VRAM homelab workstationRTX 3090, RTX 409022.5 GB clean VRAM65 GBRAM offloadOpen calculator
48 GB VRAM workstationRTX A6000, L40S 48GB46.5 GB clean VRAM65 GBRAM offloadOpen calculator
Apple Silicon 32 GB unified memoryM2 Max 32GB, M3 Max 36GB26 GB unified65 GBToo largeOpen calculator

Quantization memory estimate on a 12GB GPU preset

QuantizationEstimated memoryUse case
Q4 / 4-bit65 GBDefault local inference balance
Q5 / 5-bit81.3 GBBetter quality, more VRAM
Q8 / 8-bit130 GBHigh quality, much more VRAM
FP16 / 16-bit260 GBMostly workstation/server use