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xc-llm-ascend/vllm_ascend/quantization/w4a8_dynamic.py

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# 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.
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# http://www.apache.org/licenses/LICENSE-2.0
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# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
from typing import Any, Callable, Dict, Optional
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
import numpy as np
import torch
import torch_npu
from vllm.config import get_current_vllm_config
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
from vllm.distributed import get_ep_group
from vllm.forward_context import get_forward_context
from vllm_ascend.ascend_forward_context import FusedMoEState
from vllm_ascend.distributed.parallel_state import get_mc2_group
from vllm_ascend.ops.fused_moe import unified_fused_experts_eager
from vllm_ascend.ops.layers.experts_selector import select_experts
class AscendW4A8DynamicLinearMethod:
"""Linear method for Ascend W4A8_DYNAMIC
"""
def __init__(self):
self.transpose_weight = True
try:
self.group_size = get_current_vllm_config(
).quant_config.quant_description.get("group_size", 256)
except AttributeError:
self.group_size = 256
@staticmethod
def get_weight(input_size: int, output_size: int,
params_dtype: torch.dtype) -> Dict[str, Any]:
params_dict = {
"weight": torch.empty(output_size, input_size, dtype=torch.int8)
}
return params_dict
@staticmethod
def get_pertensor_param(params_dtype: torch.dtype) -> Dict[str, Any]:
return {}
@staticmethod
def get_perchannel_param(output_size: int,
params_dtype: torch.dtype) -> Dict[str, Any]:
return {}
def get_pergroup_param(self, input_size: int, output_size: int,
params_dtype: torch.dtype) -> Dict[str, Any]:
params_dict = {}
params_dict["weight_scale"] = torch.empty(output_size,
1,
dtype=params_dtype)
params_dict["weight_offset"] = torch.empty(output_size,
1,
dtype=params_dtype)
params_dict["weight_scale_second"] = torch.empty(output_size,
input_size //
self.group_size,
dtype=params_dtype)
params_dict["weight_offset_second"] = torch.empty(output_size,
input_size //
self.group_size,
dtype=params_dtype)
return params_dict
@staticmethod
def process_scale_second(weight: torch.Tensor, scale: torch.Tensor,
per_group_scale: torch.Tensor):
k, n = weight.shape
group_num, n = per_group_scale.shape
weight_high = weight.to(torch.float32).reshape(
group_num, -1, n) * per_group_scale.reshape(group_num, 1, n)
weight_high = weight_high.reshape(k, n)
bias = 8 * (weight_high.to(torch.float32) * scale).sum(dim=0)
antiquant_scale = (scale * per_group_scale).reshape(group_num, n)
return antiquant_scale.npu(), bias
def apply(
self,
layer: torch.nn.Module,
x: torch.Tensor,
bias: Optional[torch.Tensor] = None,
tp_rank: Optional[int] = None,
) -> torch.Tensor:
return torch_npu.npu_weight_quant_batchmatmul(
x,
layer.weight,
antiquant_scale=layer.weight_scale_second.to(x.dtype),
antiquant_group_size=self.group_size,
)
def process_weights_after_loading(self, layer: torch.nn.Module):
if self.transpose_weight:
layer.weight.data = layer.weight.data.transpose(0, 1).contiguous()
layer.weight_scale.data = layer.weight_scale.data.flatten().to(
torch.float32)
layer.weight_offset.data = layer.weight_offset.data.flatten()
layer.weight_scale_second.data, scale_bias = self.process_scale_second(
layer.weight.data,
layer.weight_scale.data,
layer.weight_scale_second.data.transpose(0, 1).contiguous(),
)
param = torch.nn.Parameter(scale_bias, requires_grad=False)
layer.register_parameter("weight_scale_bias", param)
layer.weight.data = torch_npu.npu_convert_weight_to_int4pack(
layer.weight.data.to(torch.int32))
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
class AscendW4A8DynamicFusedMoEMethod:
"""FusedMoe method for Ascend W4A8_DYNAMIC.
"""
def __init__(self):
self.transpose_weight = True
self.ep_group = get_ep_group()
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
vllm_config = get_current_vllm_config()
self.group_size = vllm_config.quant_config.quant_description.get(
"group_size", 256)
quant_version = vllm_config.quant_config.quant_description.get(
"version", "0")
# NOTE: new quantize weights: 2 int4 pack into int8
self.new_quant_version = quant_version == "1.0.0"
self.tp_size = 1 if vllm_config.parallel_config.enable_expert_parallel else self.ep_group.world_size
if self.new_quant_version and self.tp_size > 16:
raise ValueError(
"The current weight does not support moe part tp>16.")
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
try:
device_group = get_mc2_group().device_group
# TODO: Try local_rank = ep_group.rank_in_group
local_rank = torch.distributed.get_rank(group=device_group)
backend = device_group._get_backend(torch.device("npu"))
self.moe_all_to_all_group_name = backend.get_hccl_comm_name(
local_rank)
except AttributeError:
self.moe_all_to_all_group_name = ""
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
def get_weight(self, num_experts: int,
intermediate_size_per_partition: int, hidden_sizes: int,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
params_dtype: torch.dtype) -> Dict[str, Any]:
param_dict = {}
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
if self.new_quant_version:
w13_output_size = intermediate_size_per_partition
w2_output_size = hidden_sizes // 2
else:
w13_output_size = 2 * intermediate_size_per_partition
w2_output_size = hidden_sizes
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
param_dict["w13_weight"] = torch.empty(num_experts,
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
w13_output_size,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
hidden_sizes,
dtype=torch.int8)
param_dict["w2_weight"] = torch.empty(num_experts,
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
w2_output_size,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
intermediate_size_per_partition,
dtype=torch.int8)
return param_dict
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
def get_dynamic_quant_param(self, num_experts: int,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
intermediate_size_per_partition: int,
hidden_sizes: int,
params_dtype: torch.dtype) -> Dict[str, Any]:
param_dict = {}
param_dict["w13_weight_scale"] = torch.empty(
num_experts,
2 * intermediate_size_per_partition,
1,
dtype=params_dtype)
param_dict["w13_weight_offset"] = torch.empty(
num_experts,
2 * intermediate_size_per_partition,
1,
dtype=params_dtype)
param_dict["w13_weight_scale_second"] = torch.empty(
num_experts,
2 * intermediate_size_per_partition,
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
hidden_sizes // self.group_size,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
dtype=params_dtype)
param_dict["w13_weight_offset_second"] = torch.empty(
num_experts,
2 * intermediate_size_per_partition,
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
hidden_sizes // self.group_size,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
dtype=params_dtype)
param_dict["w2_weight_scale"] = torch.empty(num_experts,
hidden_sizes,
1,
dtype=params_dtype)
param_dict["w2_weight_offset"] = torch.empty(num_experts,
hidden_sizes,
1,
dtype=params_dtype)
param_dict["w2_weight_scale_second"] = torch.empty(
num_experts,
hidden_sizes,
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
intermediate_size_per_partition // self.group_size,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
dtype=params_dtype)
param_dict["w2_weight_offset_second"] = torch.empty(
num_experts,
hidden_sizes,
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
intermediate_size_per_partition // self.group_size,
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
dtype=params_dtype)
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
if self.new_quant_version:
param_dict["w13_scale_bias"] = torch.empty(
num_experts,
2 * intermediate_size_per_partition,
1,
dtype=torch.float32)
param_dict["w2_scale_bias"] = torch.empty(num_experts,
hidden_sizes,
16 // self.tp_size,
dtype=torch.float32)
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
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, "Number of global experts mismatch"
# NOTE: now npu_moe_gating_top_k can only support `group_count=256` pattern
topk_weights, topk_ids, row_idx = 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)
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
fused_moe_state = get_forward_context().fused_moe_state
shared_gate_up, shared_dequant_scale = None, None
if shared_experts is not None and fused_moe_state == FusedMoEState.MC2:
share_up_out, _ = shared_experts.gate_up_proj(
(quantized_x_for_share, dynamic_scale_for_share))
shared_gate_up, shared_dequant_scale = share_up_out[
0], share_up_out[1]
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
# this is a naive implementation for experts load balance so as
# to avoid accumulating too much tokens on a single rank.
# currently it is only activated when doing profile runs.
if enable_force_load_balance:
topk_ids = torch.randint_like(topk_ids, 0, global_num_experts)
topk_weights = topk_weights.to(x.dtype)
return unified_fused_experts_eager(
hidden_states=x,
w1=layer.w13_weight,
w2=layer.w2_weight,
w1_scale=layer.w13_weight_scale_second,
w2_scale=layer.w2_weight_scale_second,
w1_scale_bias=layer.w13_scale_bias,
w2_scale_bias=layer.w2_scale_bias,
topk_weights=topk_weights,
topk_ids=topk_ids,
row_idx=row_idx,
expert_map=expert_map,
log2phy=log2phy,
global_redundant_expert_num=global_redundant_expert_num,
shared_experts=shared_experts,
shared_gate_up=shared_gate_up,
shared_dequant_scale=shared_dequant_scale,
mc2_mask=kwargs.get("mc2_mask", None))
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
def process_scale(self, weight: torch.Tensor, scale, per_group_scale):
group_num, k, n = weight.shape
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
# the weight of the new version is reduced by half by pack n, so it needs to be restored
if self.new_quant_version:
n = n * 2
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
per_group_scale = per_group_scale.reshape(group_num, -1, n)
group_num, quantgroup_num, n = per_group_scale.shape
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
bias = None
if not self.new_quant_version:
weight_high = weight.to(torch.float32).reshape([group_num, quantgroup_num, -1, n]) * \
per_group_scale.reshape([group_num, quantgroup_num, 1, n])
weight_high = weight_high.reshape([group_num, k, n])
bias = 8 * (weight_high.to(torch.float32) * scale).sum(axis=1)
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
scale_fp32 = (scale * per_group_scale).to(torch.float16).to(
torch.float32)
scale_fp32_np = scale_fp32.cpu().numpy()
scale_fp32_np.dtype = np.uint32
sscale_uint64 = np.zeros((group_num, quantgroup_num, n * 2),
dtype=np.uint32)
sscale_uint64[..., ::2] = scale_fp32_np
sscale_uint64_buffer = np.frombuffer(sscale_uint64.tobytes(),
dtype=np.int64).copy()
sscale_uint64_tensor = torch.from_numpy(sscale_uint64_buffer).reshape(
group_num, quantgroup_num, n)
sscale_uint64_tensor = sscale_uint64_tensor.npu()
return sscale_uint64_tensor, bias
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
def update_bias(self, layer, w13_bias, w2_bias):
if self.new_quant_version:
layer.w13_scale_bias.data = layer.w13_scale_bias.data.transpose(
1, 2).contiguous().sum(axis=1)
layer.w2_scale_bias.data = layer.w2_scale_bias.data.transpose(
1, 2).contiguous().sum(axis=1)
else:
w13_scale_bias = torch.nn.Parameter(w13_bias, requires_grad=False)
layer.register_parameter("w13_scale_bias", w13_scale_bias)
w2_scale_bias = torch.nn.Parameter(w2_bias, requires_grad=False)
layer.register_parameter("w2_scale_bias", w2_scale_bias)
def pack_to_int32(self, weight: torch.Tensor):
if self.new_quant_version:
group_num, k, n = weight.shape
assert n % 4 == 0, "the last dim of weight needs to be divided by 4"
packed_n = n // 4
# pack 4 int8(int4*2) to int32, because in pytorch, we need to use int32 to represent int4
packed_weight = torch.from_numpy(
np.frombuffer(weight.cpu().numpy().tobytes(), dtype=np.int32))
return packed_weight.reshape(group_num, k, packed_n).npu()
else:
return torch_npu.npu_quantize(weight.to(torch.float32),
torch.tensor([1.]).npu(), None,
torch.quint4x2, -1, False)
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
def process_weights_after_loading(self, layer):
if self.transpose_weight:
layer.w13_weight.data = layer.w13_weight.data.transpose(
1, 2).contiguous()
layer.w2_weight.data = layer.w2_weight.data.transpose(
1, 2).contiguous()
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_scale_second.data = layer.w13_weight_scale_second.data.transpose(
1, 2).contiguous()
layer.w2_weight_scale_second.data = layer.w2_weight_scale_second.data.transpose(
1, 2).contiguous()
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
layer.w13_weight_scale_second.data, w13_bias = self.process_scale(
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
layer.w13_weight, layer.w13_weight_scale.data,
layer.w13_weight_scale_second.data)
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
layer.w2_weight_scale_second.data, w2_bias = self.process_scale(
[main][Feature] Support deepseek w4a8 quantization (#2172) ### What this PR does / why we need it? Supports Deepseek-R1 w4a8 quantization. Since R1 w4a8 uses mixed quantization, only the MOE layer uses w4a8_dynamic quantization, so we added the w4a8_dynamic.py file, which includes the AscendW4A8DynamicFusedMoEMethod class. ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` and `tests/ut/quantization/test_quantizer.py` Adding e2e case in `tests/e2e/multicard/test_offline_inference_distributed.py::test_models_distributed_DeepSeek_W4A8DYNAMIC` to test deepseek w4a8_dynamic quantized model #### 1.How to get weights using Modelslim ##### Installation steps Use the branch master, the commit id is: 298e175d69b3b855111a1e09bbe2fcd12fdb4e24 git clone https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### The required transformers environment transformers>=4.48.2 ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} --mindie_format ##### Adapt to vllm-ascend Since mindie_format generates mindie format, some adaptation modifications are needed for vllm-ascend to use it: `quant_model_description_w8a8_dynamic.json` rename to `quant_model_description.json`, and add `"group_size": 256` Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; `quantization_config` is removed; tips:The group_size and weights match. If the w4a8 weights are not generated using msmodelslim, you can check the group_size in quantization_config in config.json. #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_USE_V1=1 # v1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export VLLM_USE_V1=1 # v1 export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/c494f96fbcf5e9f19f59e3dea6c2780aeb6c567f --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-06 10:17:44 +08:00
layer.w2_weight, layer.w2_weight_scale.data,
layer.w2_weight_scale_second.data)
[main][quantization] Adapt to the new format of ds w4a8 weight (#2392) ### What this PR does / why we need it? The deepseek w4a8 weights we supported before were in mindie-format format. It uses int8 to represent int4, so the weight size is similar to w8a8, and we need to do a few extra steps to make vllm-ascend load it normally. Now we can directly use the new weight format, which uses two int4 packs to save the weight, the weight size is reduced, and there is no need to do many extra operations to directly use it on vllm-ascend, but we are also compatible with the weights of the previous mindie format. The weight changes in the new version: 1. The weight is packed (2 int4 pack to int8) 2. The bias required in the apply method is directly generated by modelslim ### Does this PR introduce _any_ user-facing change? no ### How was this patch tested? Adding ut case in `tests/ut/quantization/test_w4a8_dynamic.py` #### 1.How to get weights using Modelslim ##### Installation steps we can use the branch br_release_MindStudio_8.1.RC2_TR5_20260624 git clone -b br_release_MindStudio_8.1.RC2_TR5_20260624 https://gitee.com/ascend/msit.git cd msit/msmodelslim bash install.sh ##### Generate w4a8 weights cd /example/DeepSeek Command reference: msmodelslim/example/DeepSeek/README.md Execute the [pre-check](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#%E8%BF%90%E8%A1%8C%E5%89%8D%E5%BF%85%E6%A3%80) and [DeepSeek-R1 w4a8 mix quantization](https://gitee.com/ascend/msit/blob/br_release_MindStudio_8.1.RC2_TR5_20260624/msmodelslim/example/DeepSeek/README.md#deepseek-r1-w4a8-%E6%B7%B7%E5%90%88%E9%87%8F%E5%8C%96%E5%89%8D%E4%B8%89%E5%B1%82-mlpw8a8-dynamic-%E9%87%8F%E5%8C%96mla%E5%85%B1%E4%BA%AB%E4%B8%93%E5%AE%B6w8a8%E9%87%8F%E5%8C%96%E8%B7%AF%E7%94%B1%E4%B8%93%E5%AE%B6w4a8-dynamic%E9%87%8F%E5%8C%96) chapter Reference command:python3 quant_deepseek_w4a8.py --model_path {Original weight path} --save_path {Generate weight path} ##### Adapt to vllm-ascend Modification in `config.json`:`"model_type":deepseekv2` is changed to `"model_type":deepseek_v3`; #### 2.How to run w4a8 ##### a.How to run eager mode export VLLM_ASCEND_MLA_PA=1 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --max-num-seqs $6 --enforce-eager eg: python -m vllm.entrypoints.openai.api_server --model=/weightpath/w4a8_4_layer --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --max-num-seqs 128 --enforce-eager ##### b.How to run graph mode export HCCL_BUFFSIZE=1024 python -m vllm.entrypoints.openai.api_server --model=$1 --trust-remote-code -tp $2 -dp $3 --enable_expert_parallel --quantization ascend --port $4 --max-model-len $5 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' eg: python -m vllm.entrypoints.openai.api_server --model=/weight/dsr1_w4a8_vllm --trust-remote-code -tp 4 -dp 4 --enable_expert_parallel --quantization ascend --port 8002 --max-model-len 5120 --additional_config='{"ascend_scheduler_config":{"enabled":true},"torchair_graph_config":{"enabled":true}}' - vLLM version: v0.10.0 - vLLM main: https://github.com/vllm-project/vllm/commit/103f1ec8d348a5f336f11d972d6285c4fb4736d4 --------- Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2025-08-20 20:25:18 +08:00
self.update_bias(layer, w13_bias, w2_bias)
layer.w13_weight.data = self.pack_to_int32(layer.w13_weight.data)
layer.w2_weight.data = self.pack_to_int32(layer.w2_weight.data)