| # Intel Quantization Support |
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| [AutoRound](https://github.com/intel/auto-round) is Intel’s advanced quantization algorithm designed for large language models(LLMs). It produces highly efficient **INT2, INT3, INT4, INT8, MXFP8, MXFP4, NVFP4**, and **GGUF** quantized models, balancing accuracy and inference performance. AutoRound is also part of the [Intel® Neural Compressor](https://github.com/intel/neural-compressor). For a deeper introduction, see the [AutoRound step-by-step guide](https://github.com/intel/auto-round/blob/main/docs/step_by_step.md). |
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| ## Key Features |
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| ✅ Superior Accuracy Delivers strong performance even at 2–3 bits [example models](https://huggingface.co/collections/OPEA/2-3-bits) |
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| ✅ Fast Mixed `Bits`/`Dtypes` Scheme Generation Automatically configure in minutes |
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| ✅ Support for exporting **AutoRound, AutoAWQ, AutoGPTQ, and GGUF** formats |
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| ✅ **10+ vision-language models (VLMs)** are supported |
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| ✅ **Per-layer mixed-bit quantization** for fine-grained control |
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| ✅ **RTN (Round-To-Nearest) mode** for quick quantization with slight accuracy loss |
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| ✅ **Multiple quantization recipes**: best, base, and light |
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| ✅ Advanced utilities such as immediate packing and support for **10+ backends** |
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| ## Supported Recipes on Intel Platforms |
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| On Intel platforms, AutoRound recipes are being enabled progressively by format and hardware. Currently, vLLM supports: |
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| - **`W4A16`**: weight-only, 4-bit weights with 16-bit activations |
| - **`W8A16`**: weight-only, 8-bit weights with 16-bit activations |
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| Additional recipes and formats will be supported in future releases. |
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| ## Quantizing a Model |
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| ### Installation |
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| ```bash |
| uv pip install auto-round |
| ``` |
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| ### Quantize with CLI |
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| ```bash |
| auto-round \ |
| --model Qwen/Qwen3-0.6B \ |
| --scheme W4A16 \ |
| --format auto_round \ |
| --output_dir ./tmp_autoround |
| ``` |
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| ### Quantize with Python API |
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| ```python |
| from transformers import AutoModelForCausalLM, AutoTokenizer |
| from auto_round import AutoRound |
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| model_name = "Qwen/Qwen3-0.6B" |
| autoround = AutoRound(model_name, scheme="W4A16") |
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| # the best accuracy, 4-5X slower, low_gpu_mem_usage could save ~20G but ~30% slower |
| # autoround = AutoRound(model, tokenizer, nsamples=512, iters=1000, low_gpu_mem_usage=True, bits=bits, group_size=group_size, sym=sym) |
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| # 2-3X speedup, slight accuracy drop at W4G128 |
| # autoround = AutoRound(model, tokenizer, nsamples=128, iters=50, lr=5e-3, bits=bits, group_size=group_size, sym=sym ) |
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| output_dir = "./tmp_autoround" |
| # format= 'auto_round'(default), 'auto_gptq', 'auto_awq' |
| autoround.quantize_and_save(output_dir, format="auto_round") |
| ``` |
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| ## Deploying AutoRound Quantized Models in vLLM |
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| ```bash |
| vllm serve Intel/DeepSeek-R1-0528-Qwen3-8B-int4-AutoRound \ |
| --gpu-memory-utilization 0.8 \ |
| --max-model-len 4096 |
| ``` |
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| !!! note |
| To deploy `wNa16` models on Intel GPU/CPU, please add `--enforce-eager` for now. |
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| ## Evaluating the Quantized Model with vLLM |
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| ```bash |
| lm_eval --model vllm \ |
| --model_args pretrained="Intel/DeepSeek-R1-0528-Qwen3-8B-int4-AutoRound,max_model_len=8192,max_num_batched_tokens=32768,max_num_seqs=128,gpu_memory_utilization=0.8,dtype=bfloat16,max_gen_toks=2048,enforce_eager=True" \ |
| --tasks gsm8k \ |
| --num_fewshot 5 \ |
| --batch_size 128 |
| ``` |
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