Best AI Models for NVIDIA A100 80GB SXM (80.0GB)
With 80 GB of memory, this is a high-end configuration for local AI. You can comfortably run most open-source LLMs including large 70B parameter models at good quantization levels, making it one of the best setups for serious local AI work.
At this memory tier, nearly every popular open-source model is within reach. You can run Llama 3 70B at Q4_K_M or even Q5_K_M quantization with room to spare, handle coding assistants like DeepSeek Coder 33B at high quality, and easily run any 7B–30B model at full or near-full precision. Context windows remain generous even with larger models, so multi-turn conversations and long-document processing work smoothly.
Runs Well
- 70B models (Llama 3 70B, Qwen 72B) at Q4–Q5
- 30B models at Q6–Q8 quality
- 7B–14B models at full FP16 precision
- Vision models (LLaVA, CogVLM) without compromise
Challenging
- Mixture-of-experts models like Mixtral 8x22B at higher quants
- 120B+ models still require lower quantizations
What LLMs Can NVIDIA A100 80GB SXM Run?
33 models · 3 good
Showing compatibility for NVIDIA A100 80GB SXM
| Model | Quant | VRAM | Speed | Context | Status | Grade |
|---|---|---|---|---|---|---|
Q4_K_M·28.5 t/s tok/s·131K ctx·GOOD FIT | Q4_K_M | 46.6 GB | 28.5 t/s | 131K | GOOD FIT | A74 |
Q4_K_M·28.7 t/s tok/s·131K ctx·GOOD FIT | Q4_K_M | 46.2 GB | 28.7 t/s | 131K | GOOD FIT | A74 |
Q4_K_M·29.7 t/s tok/s·33K ctx·GOOD FIT | Q4_K_M | 44.6 GB | 29.7 t/s | 33K | GOOD FIT | A71 |
Q4_K_M·46.4 t/s tok/s·33K ctx·FAIR FIT | Q4_K_M | 28.6 GB | 46.4 t/s | 33K | FAIR FIT | B51 |
Q4_K_M·66.8 t/s tok/s·41K ctx·EASY RUN | Q4_K_M | 19.8 GB | 66.8 t/s | 41K | EASY RUN | C40 |
Q4_K_M·64.7 t/s tok/s·131K ctx·EASY RUN | Q4_K_M | 20.5 GB | 64.7 t/s | 131K | EASY RUN | C41 |
Q4_K_M·64.7 t/s tok/s·33K ctx·EASY RUN | Q4_K_M | 20.5 GB | 64.7 t/s | 33K | EASY RUN | C41 |
Q4_K_M·73.2 t/s tok/s·131K ctx·EASY RUN | Q4_K_M | 18.1 GB | 73.2 t/s | 131K | EASY RUN | C38 |
Q4_K_M·99.8 t/s tok/s·131K ctx·EASY RUN | Q4_K_M | 13.3 GB | 99.8 t/s | 131K | EASY RUN | C34 |
Q4_K_M·73.8 t/s tok/s·8K ctx·EASY RUN | Q4_K_M | 18.0 GB | 73.8 t/s | 8K | EASY RUN | C37 |
Q4_K_M·66.1 t/s tok/s·41K ctx·EASY RUN | Q4_K_M | 20.0 GB | 66.1 t/s | 41K | EASY RUN | C40 |
Q4_K_M·61.8 t/s tok/s·4K ctx·EASY RUN | Q4_K_M | 21.4 GB | 61.8 t/s | 4K | EASY RUN | C42 |
Q4_K_M·18.2 t/s tok/s·131K ctx·FAIR FIT | Q4_K_M | 72.7 GB | 18.2 t/s | 131K | FAIR FIT | B48 |
Q4_K_M·265.6 t/s tok/s·33K ctx·EASY RUN | Q4_K_M | 5.0 GB | 265.6 t/s | 33K | EASY RUN | D28 |
Q4_K_M·87.7 t/s tok/s·33K ctx·EASY RUN | Q4_K_M | 15.1 GB | 87.7 t/s | 33K | EASY RUN | C35 |
Q4_K_M·240.1 t/s tok/s·41K ctx·EASY RUN | Q4_K_M | 5.5 GB | 240.1 t/s | 41K | EASY RUN | D29 |
NVIDIA A100 80GB SXM Specifications
- Brand
- NVIDIA
- Architecture
- Ampere
- VRAM
- 80.0 GB HBM2e
- Memory Bandwidth
- 2039.0 GB/s
- CUDA Cores
- 6,912
- Tensor Cores
- 432
- FP16 Performance
- 312.00 TFLOPS
- TDP
- 400W
- Release Date
- 2020-11-16
Get Started
GPUs to Consider Over NVIDIA A100 80GB SXM
Similar GPUs and upgrades with more VRAM or higher bandwidth for AI
Frequently Asked Questions
- Can NVIDIA A100 80GB SXM run Llama 3.1 70B Instruct?
Yes, the NVIDIA A100 80GB SXM with 80 GB can run Llama 3.1 70B Instruct, Llama 3.3 70B Instruct, Qwen2.5 72B Instruct, and 1278 other models. 11 models run at excellent quality, and 76 at good quality. Check the compatibility table above for the full list with VRAM usage and estimated speed.
- Is NVIDIA A100 80GB SXM good for AI?
The NVIDIA A100 80GB SXM has 80 GB of HBM2e, making it excellent for running local AI models. It supports 87 models at good quality or better. With 2039.0 GB/s memory bandwidth, it delivers fast token generation speeds. This is an enthusiast-grade GPU that handles most popular open-source LLMs.
- How many parameters can NVIDIA A100 80GB SXM handle?
With 80 GB, the NVIDIA A100 80GB SXM supports models from 3B to 70B+ parameters depending on quantization level. At Q4_K_M (the recommended sweet spot), you can fit roughly 133B parameters. This means 7B models at high quality (Q6/Q8) or 30B+ models at Q4.
- What quantization should I use on NVIDIA A100 80GB SXM?
For the best balance of quality and speed on the NVIDIA A100 80GB SXM, start with Q4_K_M — it preserves ~85% of the original model quality while keeping VRAM usage reasonable. With 24+ GB, you have the headroom to run 7B models at Q5_K_M or even Q6_K for noticeably better output quality. For larger 30B models, Q4_K_M remains the sweet spot.
- How fast is NVIDIA A100 80GB SXM for AI inference?
With 2039.0 GB/s memory bandwidth, the NVIDIA A100 80GB SXM achieves approximately 295 tokens/sec on a 7B model at Q4_K_M — that's very fast, well above conversational speed. A 14B model runs at ~147 tok/s. Token generation speed scales inversely with model size — smaller models are significantly faster.
tok/s = (2039 GB/s ÷ model GB) × efficiency
Smaller models = faster inference. Memory bandwidth is the main bottleneck for token generation speed.
Estimated speed on NVIDIA A100 80GB SXM
~29 tok/s~29 tok/s~30 tok/s~46 tok/sReal-world results typically within ±20%. Speed depends on quantization kernel, batch size, and software stack.
- What's the best model for NVIDIA A100 80GB SXM?
The top-rated models for the NVIDIA A100 80GB SXM are Llama 3.1 70B Instruct, Llama 3.3 70B Instruct, Qwen2.5 72B Instruct. The best choice depends on your use case: coding assistants benefit from code-tuned models, while general chat works well with instruction-tuned models like Llama or Qwen.