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xc-llm-ascend/vllm_ascend/quantization/w4a16.py
Ruri ce5872705e [Feat] Support native Kimi-K2-Thinking native W4A16 quantized experts weights (#4516)
### What this PR does / why we need it?

Adds W4A16 quantization method for the Kimi-K2-Thinking model and
updates relevant modules to support the new quantization method.

- Implements complete W4A16 quantization method including weight
packing/unpacking, per-group quantization parameter generation,
post-processing logic and MoE method application.
- Adds parameters `use_int4_w4a16`, `w1_offset` and `w2_offset`, adjusts
`with_quant` conditional logic to support W4A16 matrix multiplication.
- Adds `packed_modules_model_mapping` for Kimi-K2-Thinking model and
processing logic for `weight_packed` field.

- vLLM version: v0.12.0
- vLLM main:
ad32e3e19c

---------

Signed-off-by: zhoux77899 <zhouxiang100@huawei.com>
Signed-off-by: Ruri <33858552+zhoux77899@users.noreply.github.com>
Signed-off-by: Ruri <zhouxiang100@huawei.com>
2025-12-10 15:58:52 +08:00

285 lines
12 KiB
Python

#
# Copyright (c) 2025 Huawei Technologies Co., Ltd. All Rights Reserved.
# This file is a part of the vllm-ascend project.
#
# 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 Any, Callable, Dict, Optional
import torch
import torch_npu
from vllm.config import get_current_vllm_config
from vllm.forward_context import get_forward_context
from vllm_ascend.ascend_config import get_ascend_config
from vllm_ascend.ops.fused_moe.experts_selector import select_experts
def unpack_from_int32(
weight: torch.Tensor,
shape: torch.Size,
num_bits: int,
packed_dim: int = 1,
) -> torch.Tensor:
"""
Unpacks quantized weights from int32 format back to original bits.
:param weight: The packed int32 tensor containing quantized weights
:param shape: Original shape to restore, defaults to None
:param num_bits: The number of bits used for quantization (<= 8)
:param packed_dim: Dimension along which weights are packed (0 or 1), defaults to 1
:return: Unpacked tensor with int8 dtype after applying offset correction
"""
assert weight.dtype == torch.int32, f"Expecting `weight.dtype` is torch.int32 but got {weight.dtype}."
assert num_bits <= 8, f"Expecting `num_bits` should not be larger than 8 but got {num_bits}."
pack_factor = 32 // num_bits
mask = (1 << num_bits) - 1
if packed_dim == 1:
unpacked_weight = torch.zeros(
(weight.shape[0], weight.shape[1] * pack_factor),
device=weight.device,
dtype=torch.int32,
)
for i in range(pack_factor):
unpacked_weight[:, i::pack_factor] = (weight >>
(num_bits * i)) & mask
original_row_size = int(shape[1])
unpacked_weight = unpacked_weight[:, :original_row_size]
else:
unpacked_weight = torch.zeros(
(weight.shape[0] * pack_factor, weight.shape[1]),
device=weight.device,
dtype=torch.int32,
)
for i in range(pack_factor):
unpacked_weight[i::pack_factor, :] = (weight >>
(num_bits * i)) & mask
original_row_size = int(shape[0])
unpacked_weight = unpacked_weight[:original_row_size, :]
offset = pow(2, num_bits) // 2
unpacked_weight = (unpacked_weight - offset).to(torch.int8)
return unpacked_weight
def pack_to_int32(weight: torch.Tensor) -> torch.Tensor:
"""
Packs quantized weights into int32 format for storage.
:param weight: The 3D tensor to pack, must be int8 or int32 dtype
:return: Packed tensor with int32 dtype optimized for storage
"""
assert weight.dim(
) == 3, f"Expecting `weight.dim()` is 3 ([e, n, k] or [e, k, n]) but got {weight.dim()}."
assert weight.dtype in [
torch.int8, torch.int32
], f"Expecting `weight.dtype` is torch.int8 or torch.int32 bug got {weight.dtype}."
if weight.dtype == torch.int32:
assert weight.shape[
-1] % 8 == 0, "the last dim of weight needs to be divided by 8."
packed_weight = torch_npu.npu_convert_weight_to_int4pack(
weight.flatten(0, 1))
packed_weight = packed_weight.view(weight.shape[0], weight.shape[1],
-1)
else:
assert weight.shape[
-1] % 4 == 0, "the last dim of weight needs to be divided by 4."
packed_weight = weight.view(torch.int32).contiguous()
return packed_weight
class AscendW4A16FusedMoEMethod:
"""FusedMoe method for Ascend W4A16.
"""
def __init__(self) -> None:
self.transpose_weight = True
self.num_bits = 4 # dtype = torch.int4
self.pack_factor = 8 # pack 8 of torch.int4 tensors to torch.int32
vllm_config = get_current_vllm_config()
self.group_size = vllm_config.quant_config.quant_description.get(
"group_size", 32)
ascend_config = get_ascend_config()
self.dynamic_eplb = ascend_config.dynamic_eplb or ascend_config.expert_map_record_path
def get_weight(
self,
num_experts: int,
intermediate_size_per_partition: int,
hidden_sizes: int,
params_dtype: torch.dtype,
) -> Dict[str, Any]:
assert intermediate_size_per_partition % self.pack_factor == 0, f"Expecting `intermediate_size_per_partition` {intermediate_size_per_partition} can be divided by `pack_factor` {self.pack_factor}"
assert hidden_sizes % self.pack_factor == 0, f"Expecting `hidden_sizes` {hidden_sizes} can be divided by `pack_factor` {self.pack_factor}"
param_dict = {}
param_dict["w13_weight_packed"] = torch.empty(
num_experts,
2 * intermediate_size_per_partition,
hidden_sizes // self.pack_factor,
dtype=torch.int32)
param_dict["w2_weight_packed"] = torch.empty(
num_experts,
hidden_sizes,
intermediate_size_per_partition // self.pack_factor,
dtype=torch.int32)
return param_dict
def get_dynamic_quant_param(
self,
num_experts: int,
intermediate_size_per_partition: int,
hidden_sizes: int,
params_dtype: torch.dtype,
) -> Dict[str, Any]:
assert intermediate_size_per_partition % self.group_size == 0, f"Expecting `intermediate_size_per_partition` {intermediate_size_per_partition} can be divided by `group_size` {self.group_size}"
assert hidden_sizes % self.group_size == 0, f"Expecting `hidden_sizes` {hidden_sizes} can be divided by `group_size` {self.group_size}"
param_dict = {}
param_dict["w13_weight_scale"] = torch.empty(
num_experts,
2 * intermediate_size_per_partition,
hidden_sizes // self.group_size,
dtype=torch.bfloat16)
param_dict["w2_weight_scale"] = torch.empty(
num_experts,
hidden_sizes,
intermediate_size_per_partition // self.group_size,
dtype=torch.bfloat16)
param_dict["w13_weight_shape"] = torch.empty(num_experts,
2,
dtype=torch.int32)
param_dict["w2_weight_shape"] = torch.empty(num_experts,
2,
dtype=torch.int32)
param_dict["w13_weight_offset"] = torch.zeros(
num_experts,
2 * intermediate_size_per_partition,
hidden_sizes // self.group_size,
dtype=torch.bfloat16)
param_dict["w2_weight_offset"] = torch.zeros(
num_experts,
hidden_sizes,
intermediate_size_per_partition // self.group_size,
dtype=torch.bfloat16)
return param_dict
def apply(
self,
layer: torch.nn.Module,
x: torch.Tensor,
router_logits: torch.Tensor,
top_k: int,
renormalize: bool,
use_grouped_topk: bool = False,
global_num_experts: int = -1,
expert_map: Optional[torch.Tensor] = None,
topk_group: Optional[int] = None,
num_expert_group: Optional[int] = None,
custom_routing_function: Optional[Callable] = None,
scoring_func: str = "softmax",
e_score_correction_bias: Optional[torch.Tensor] = None,
is_prefill: bool = True,
enable_force_load_balance: bool = True,
log2phy: torch.Tensor = None,
global_redundant_expert_num: int = 0,
shared_experts: Optional[Any] = None,
quantized_x_for_share: Optional[Any] = None,
dynamic_scale_for_share: Optional[Any] = None,
**kwargs,
) -> torch.Tensor:
assert router_logits.shape[
1] == global_num_experts - global_redundant_expert_num, "Number of global experts mismatch (excluding redundancy)"
topk_weights, topk_ids = select_experts(
hidden_states=x,
router_logits=router_logits,
top_k=top_k,
use_grouped_topk=use_grouped_topk,
renormalize=renormalize,
topk_group=topk_group,
num_expert_group=num_expert_group,
custom_routing_function=custom_routing_function,
scoring_func=scoring_func,
e_score_correction_bias=e_score_correction_bias,
global_num_experts=global_num_experts)
topk_ids = topk_ids.to(torch.int32)
topk_weights = topk_weights.to(x.dtype)
moe_comm_method = get_forward_context().moe_comm_method
return moe_comm_method.fused_experts(
hidden_states=x,
w1=layer.w13_weight_packed,
w2=layer.w2_weight_packed,
w1_scale=layer.w13_weight_scale,
w2_scale=layer.w2_weight_scale,
w1_offset=layer.w13_weight_offset,
w2_offset=layer.w2_weight_offset,
topk_weights=topk_weights,
topk_ids=topk_ids,
use_int4_w4a16=True,
expert_map=expert_map,
log2phy=log2phy,
global_redundant_expert_num=global_redundant_expert_num,
shared_experts=shared_experts,
quantized_x_for_share=quantized_x_for_share,
dynamic_scale_for_share=dynamic_scale_for_share,
dynamic_eplb=self.dynamic_eplb,
mc2_mask=kwargs.get("mc2_mask", None))
def process_weights_after_loading(self, layer: torch.nn.Module) -> None:
if self.transpose_weight:
w13_shape = layer.w13_weight_packed.data.shape
w2_shape = layer.w2_weight_packed.data.shape
unpacked_w13_weight = (unpack_from_int32(
layer.w13_weight_packed.data.flatten(0, 1),
torch.Size([
w13_shape[0] * w13_shape[1],
w13_shape[2] * self.pack_factor
]),
self.num_bits,
).view(w13_shape[0], w13_shape[1],
-1).transpose(1, 2).contiguous().int())
unpacked_w2_weight = (unpack_from_int32(
layer.w2_weight_packed.data.flatten(0, 1),
torch.Size([
w2_shape[0] * w2_shape[1], w2_shape[2] * self.pack_factor
]),
self.num_bits,
).view(w2_shape[0], w2_shape[1],
-1).transpose(1, 2).contiguous().int())
layer.w13_weight_packed.data = pack_to_int32(unpacked_w13_weight)
layer.w2_weight_packed.data = pack_to_int32(unpacked_w2_weight)
layer.w13_weight_scale.data = layer.w13_weight_scale.data.transpose(
1, 2).contiguous()
layer.w2_weight_scale.data = layer.w2_weight_scale.data.transpose(
1, 2).contiguous()
layer.w13_weight_offset.data = layer.w13_weight_offset.data.transpose(
1, 2).contiguous()
layer.w2_weight_offset.data = layer.w2_weight_offset.data.transpose(
1, 2).contiguous()