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# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from typing import TYPE_CHECKING
from .base import HfQuantizer
if TYPE_CHECKING:
from ..modeling_utils import PreTrainedModel
from ..utils import (
is_accelerate_available,
is_kernels_available,
is_torch_available,
is_triton_available,
logging,
)
from .quantizers_utils import get_module_from_name
if is_torch_available():
import torch
from ..core_model_loading import WeightConverter
logger = logging.get_logger(__name__)
triton_kernels_hub = None
class Mxfp4HfQuantizer(HfQuantizer):
"""
FP4 quantization using fbgemm kernels
"""
requires_calibration = False
def __init__(self, quantization_config, **kwargs):
super().__init__(quantization_config, **kwargs)
self.triton_kernels_hub = None
def _lazy_import_kernels(self):
"""Lazy import and initialize kernels only when needed"""
if self.triton_kernels_hub is None:
try:
from ..integrations.hub_kernels import get_kernel
self.triton_kernels_hub = get_kernel("kernels-community/gpt-oss-triton-kernels")
except ImportError:
raise ImportError("kernels package is required for MXFP4 quantization")
return self.triton_kernels_hub
def validate_environment(self, *args, **kwargs):
if not is_torch_available():
raise ImportError(
"Using mxfp4 quantization requires torch"
"Please install the latest version of torch ( pip install --upgrade torch )"
)
if self.quantization_config.dequantize:
return
if not torch.cuda.is_available() and not torch.xpu.is_available():
if self.pre_quantized:
logger.warning_once(
"Using MXFP4 quantized models requires a GPU, we will default to dequantizing the model to bf16"
)
self.quantization_config.dequantize = True
return
else:
raise RuntimeError("Quantizing a model using MXFP4 requires a GPU")
if not is_accelerate_available():
raise ImportError("Using mxfp4 requires Accelerate: `pip install accelerate`")
if torch.xpu.is_available():
gpu_is_supported = True
kernels_available = is_triton_available("3.5.0") and is_kernels_available()
else:
compute_capability = torch.cuda.get_device_capability()
gpu_is_supported = compute_capability >= (7, 5)
kernels_available = is_triton_available("3.4.0") and is_kernels_available()
if self.pre_quantized:
# On unsupported GPUs or without kernels, we will dequantize the model to bf16
if not gpu_is_supported:
logger.warning_once(
"MXFP4 quantization is only supported on GPUs with compute capability >= 7.5 (e.g T4, A100, L4, H100, or B200) or XPUs (e.g Intel® Data Center GPU Max Series) "
"We will default to dequantizing the model to bf16."
)
self.quantization_config.dequantize = True
return
if not kernels_available:
logger.warning_once(
"MXFP4 quantization requires Triton and kernels installed: CUDA requires Triton >= 3.4.0, XPU requires Triton >= 3.5.0, we will default to dequantizing the model to bf16"
)
self.quantization_config.dequantize = True
return
elif not gpu_is_supported:
# we can't quantize the model in this case so we raise an error
raise ValueError(
"MXFP4 quantization is only supported on GPUs with compute capability >= 7.5 (e.g T4, A100, L4, H100, or B200) or XPUs (e.g Intel® Data Center GPU Max Series) "
)
elif not kernels_available:
# we can't quantize the model in this case so we raise an error
raise ValueError(
"MXFP4 quantization requires Triton and kernels installed: CUDA requires Triton >= 3.4.0, XPU requires Triton >= 3.5.0"
)
if not self.pre_quantized:
self._lazy_import_kernels()
device_map = kwargs.get("device_map")
if device_map is None:
logger.warning_once(
"You have loaded an FP4 model on CPU and have a CUDA/XPU device available, make sure to set "
"your model on a GPU/XPU device in order to run your model. To remove this warning, pass device_map = 'cuda' or device_map = 'xpu'. "
)
elif isinstance(device_map, dict):
if not self.pre_quantized and ("cpu" in device_map.values() or "disk" in device_map.values()):
raise ValueError(
"You are attempting to load an FP4 model with a device_map that contains a CPU or disk device."
"This is not supported when the model is quantized on the fly. "
"Please use a quantized checkpoint or remove the CPU or disk device from the device_map."
)
def param_needs_quantization(self, model: "PreTrainedModel", param_name: str, **kwargs) -> bool:
from ..integrations import Mxfp4GptOssExperts
module, tensor_name = get_module_from_name(model, param_name)
if isinstance(module, Mxfp4GptOssExperts):
if tensor_name in ["down_proj_bias", "gate_up_proj_bias"]:
return False
return True
return False
def _process_model_after_weight_loading(self, model: "PreTrainedModel", **kwargs):
# clean cache due to triton ops
if torch.cuda.is_available():
torch.cuda.empty_cache()
elif torch.xpu.is_available():
torch.xpu.empty_cache()
def _process_model_before_weight_loading(
self,
model: "PreTrainedModel",
use_kernels: bool = False,
**kwargs,
):
from ..integrations import replace_with_mxfp4_linear
# if we are using kernels, we can't use the quantized model, since the forward pass is different and needs special handling
if use_kernels:
logger.warning_once(
"You are using full precision kernels, we will dequantize the model to bf16. "
"To use the quantized model with quantization kernels, please set use_kernels=False"
)
self.quantization_config.dequantize = True
self.modules_to_not_convert = self.get_modules_to_not_convert(
model, self.quantization_config.modules_to_not_convert, model._keep_in_fp32_modules
)
model = replace_with_mxfp4_linear(
model, modules_to_not_convert=self.modules_to_not_convert, quantization_config=self.quantization_config
)
def update_tp_plan(self, config):
if "GptOssConfig" in config.__class__.__name__:
if getattr(config, "base_model_tp_plan", None) is not None:
config.base_model_tp_plan.update(
{
"layers.*.mlp.experts.gate_up_proj_blocks": "grouped_gemm",
"layers.*.mlp.experts.gate_up_proj_scales": "grouped_gemm",
"layers.*.mlp.experts.down_proj_blocks": "grouped_gemm",
"layers.*.mlp.experts.down_proj_scales": "grouped_gemm",
}
)
return config
def update_ep_plan(self, config):
if "GptOssConfig" in config.__class__.__name__:
if getattr(config, "base_model_ep_plan", None) is not None:
config.base_model_ep_plan.update(
{
"layers.*.mlp.experts.gate_up_proj_blocks": "grouped_gemm",
"layers.*.mlp.experts.gate_up_proj_scales": "grouped_gemm",
"layers.*.mlp.experts.down_proj_blocks": "grouped_gemm",
"layers.*.mlp.experts.down_proj_scales": "grouped_gemm",
}
)
return config
def get_state_dict_and_metadata(self, model):
from ..integrations import Mxfp4GptOssExperts
state_dict = model.state_dict()
# Get num_local_experts from model config
num_local_experts = getattr(model.config, "num_local_experts", 32)
hidden_size = getattr(model.config, "hidden_size", 2880)
for name, module in model.named_modules():
if (
isinstance(module, Mxfp4GptOssExperts)
and hasattr(module, "gate_up_proj")
and hasattr(module, "down_proj")
):
state_dict[f"{name}.gate_up_proj_blocks"] = (
module.gate_up_proj.storage.layout.unswizzle_data(module.gate_up_proj.storage.data)
.transpose(-1, -2)
.reshape(num_local_experts, -1, 90, 16)
)
state_dict[f"{name}.gate_up_proj_scales"] = (
module.gate_up_proj_precision_config.weight_scale.storage.layout.unswizzle_data(
module.gate_up_proj_precision_config.weight_scale.storage.data
).transpose(-1, -2)
)
state_dict[f"{name}.down_proj_blocks"] = (
module.down_proj.storage.layout.unswizzle_data(module.down_proj.storage.data)
.transpose(-1, -2)
.reshape(num_local_experts, hidden_size, 90, -1)
)
state_dict[f"{name}.down_proj_scales"] = (
module.down_proj_precision_config.weight_scale.storage.layout.unswizzle_data(
module.down_proj_precision_config.weight_scale.storage.data
).transpose(-1, -2)
)
metadata = {}
return state_dict, metadata
def is_serializable(self):
return True
@property
def is_trainable(self) -> bool:
logger.warning_once(
"MXFP4 quantization don't support training, please consider dequantizing the model first by passing quantization_config=Mxfp4Config(dequantize=True) to .from_pretrained()"
)
return False
def get_quantize_ops(self):
from ..integrations.mxfp4 import Mxfp4Quantize
return Mxfp4Quantize(self)
def get_weight_conversions(self):
from ..integrations.mxfp4 import Mxfp4Dequantize, Mxfp4Deserialize
if self.pre_quantized:
if self.quantization_config.dequantize:
return [
WeightConverter(
source_patterns=["_blocks", "_scales"],
target_patterns="",
operations=[Mxfp4Dequantize(self)],
)
]
else:
return [
WeightConverter(
source_patterns=["_blocks", "_scales"],
target_patterns="",
operations=[Mxfp4Deserialize(self)],
)
]
return []