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Four Over Six

Four Over Six is a library for performing fast and accurate FP4 quantization, particularly with the NVFP4 format on NVIDIA Blackwell GPUs. Our method adaptively scales NVFP4 blocks to either 4 or 6 to reduce quantization error on near-maximal values in each block, as described in our preprint.

Four Over Six visual explanation

Our implementation runs most efficiently on NVIDIA Blackwell GPUs. However, you may run Four Over Six on older hardware, and even on CPUs, without any code changes, as in these cases our framework automatically falls back to an implementation that performs simulation with FP32 matrix multiplication.

To quantize a model to NVFP4 with 4/6, you may load your model as follows:

from transformers import AutoModelForCausalLM, FourOverSixConfig

model = AutoModelForCausalLM.from_pretrained(
    "Qwen/Qwen3-8B",
    device_map="auto",
    quantization_config=FourOverSixConfig(),
)

We support many different quantization options which are commonly used during NVFP4 quantization, including the random Hadamard transform, 2D block scaling, transposed inputs, and stochastic rounding, as described in our preprint. These may be used by setting the appropriate option in the FourOverSixConfig passed above. Individual layers can be given custom quantization options by setting module_config_overrides, or excluded from quantization by setting modules_to_not_convert, as shown below.

Training

Our quantized linear layer contains a backward pass implementation, so many models can be trained further with few modifications. Make sure to set keep_master_weights to True, and to exclude layers from quantization as needed (it is often important to keep the last few layers of a network in high precision):

from transformers import AutoModelForCausalLM, FourOverSixConfig

model = AutoModelForCausalLM.from_pretrained(
    "Qwen/Qwen3-8B",
    device_map="auto",
    quantization_config=FourOverSixConfig(
        keep_master_weights=True,
        modules_to_not_convert=[
            "lm_head",
            "model.layers.34.self_attn.q_proj",
            "model.layers.34.self_attn.k_proj",
            "model.layers.34.self_attn.v_proj",
            # Add more layers here, e.g. self_attn.o_proj, MLP layers
        ],
    ),
)