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auto_gptq 0.7.1,利用工程量化出来的模型不可用,报错:(RayWorkerVllm pid=6035) ERROR 05-10 03:37:55 ray_utils.py:44] ValueError: torch.bfloat16 is not supported for quantization method gptq. Supported dtypes: [torch.float16] [repeated 2x across cluster] #3674

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camposs1979 opened this issue May 10, 2024 · 1 comment
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@camposs1979
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Reminder

  • I have read the README and searched the existing issues.

Reproduction

硬件环境:
4 * RTX3090:(这个环境我已经运行过Qwen1.5-72B-Chat-GTPQ-INT4(即Qwen72B的INT4量化版)

这是我调用Web脚本:
#!/bin/bash

CUDA_VISIBLE_DEVICES=0,1,2,3 python3.10 webui.py
--model_name_or_path ../model/qwen/Qwen1.5-72B-Chat-sft-INT4
--template qwen
--use_fast_tokenizer True
--repetition_penalty 1.03
--infer_backend vllm
--cutoff_len 8192
--flash_attn auto
......
File "/usr/local/lib/python3.10/dist-packages/vllm/model_executor/model_loader.py", line 70, in get_model
raise ValueError(
ValueError: torch.bfloat16 is not supported for quantization method gptq. Supported dtypes: [torch.float16]
(RayWorkerVllm pid=20366) INFO 05-10 03:50:19 selector.py:45] Cannot use FlashAttention because the package is not found. Please install it for better performance. [repeated 2x across cluster] (Ray deduplicates logs by default. Set RAY_DEDUP_LOGS=0 to disable log deduplication, or see https://docs.ray.io/en/master/ray-observability/ray-logging.html#log-deduplication for more options.)
...

这是我用来量化的脚本:
#!/bin/bash

DO NOT use quantized model or quantization_bit when merging lora weights

CUDA_VISIBLE_DEVICES=0,1,2,3,4,5 python3.10 export_model.py
--model_name_or_path /hy-tmp/models/Qwen1.5-72B-Chat-sft
--export_quantization_bit 4
--export_quantization_dataset ../data/c4_demo.json
--template qwen
--export_dir ../../models/Qwen1.5-72B-Chat-sft-INT4
--export_size 2
--export_device cpu
--export_legacy_format False

不知道是哪儿出了问题?

Expected behavior

期望采用当前硬件能够运行自己经过微调以后量化出来的Qwen1.5-72B-GTPQ-INT4。

System Info

(base) root@I19d213861d0060102e:/hy-tmp/LLaMA-Factory-main/src# python3.10 -m pip list
Package Version


accelerate 0.28.0
addict 2.4.0
aiofiles 23.2.1
aiohttp 3.9.3
aiosignal 1.3.1
aliyun-python-sdk-core 2.15.0
aliyun-python-sdk-kms 2.16.2
altair 5.2.0
annotated-types 0.6.0
anyio 4.3.0
async-timeout 4.0.3
attrs 23.2.0
auto_gptq 0.7.1
bitsandbytes 0.43.0
certifi 2019.11.28
cffi 1.16.0
chardet 3.0.4
charset-normalizer 3.3.2
click 8.1.7
cloudpickle 3.0.0
cmake 3.29.2
contourpy 1.2.0
crcmod 1.7
cryptography 42.0.5
cupy-cuda12x 12.1.0
cycler 0.12.1
datasets 2.18.0
dbus-python 1.2.16
deepspeed 0.14.0
dill 0.3.8
diskcache 5.6.3
distro 1.4.0
distro-info 0.23ubuntu1
docstring_parser 0.16
einops 0.7.0
exceptiongroup 1.2.0
fastapi 0.110.0
fastrlock 0.8.2
ffmpy 0.3.2
filelock 3.13.3
fire 0.6.0
fonttools 4.50.0
frozenlist 1.4.1
fsspec 2024.2.0
galore-torch 1.0
gast 0.5.4
gekko 1.0.7
gradio 3.50.2
gradio_client 0.6.1
h11 0.14.0
hjson 3.1.0
httpcore 1.0.4
httptools 0.6.1
httpx 0.27.0
huggingface-hub 0.22.0
idna 2.8
importlib_metadata 7.1.0
importlib_resources 6.4.0
interegular 0.3.3
Jinja2 3.1.3
jmespath 0.10.0
joblib 1.3.2
jsonschema 4.21.1
jsonschema-specifications 2023.12.1
kiwisolver 1.4.5
lark 1.1.9
llvmlite 0.42.0
markdown-it-py 3.0.0
MarkupSafe 2.1.5
matplotlib 3.8.3
mdurl 0.1.2
modelscope 1.13.3
mpmath 1.3.0
msgpack 1.0.8
multidict 6.0.5
multiprocess 0.70.16
nest-asyncio 1.6.0
networkx 3.2.1
ninja 1.11.1.1
numba 0.59.1
numpy 1.26.4
nvidia-cublas-cu12 12.1.3.1
nvidia-cuda-cupti-cu12 12.1.105
nvidia-cuda-nvrtc-cu12 12.1.105
nvidia-cuda-runtime-cu12 12.1.105
nvidia-cudnn-cu12 8.9.2.26
nvidia-cufft-cu12 11.0.2.54
nvidia-curand-cu12 10.3.2.106
nvidia-cusolver-cu12 11.4.5.107
nvidia-cusparse-cu12 12.1.0.106
nvidia-nccl-cu12 2.18.1
nvidia-nvjitlink-cu12 12.4.99
nvidia-nvtx-cu12 12.1.105
orjson 3.9.15
oss2 2.18.4
outlines 0.0.34
packaging 24.0
pandas 2.2.1
peft 0.10.0
pillow 10.2.0
pip 24.0
platformdirs 4.2.0
prometheus_client 0.20.0
protobuf 5.26.0
psutil 5.9.8
py-cpuinfo 9.0.0
pyarrow 15.0.2
pyarrow-hotfix 0.6
pycparser 2.21
pycryptodome 3.20.0
pydantic 2.6.4
pydantic_core 2.16.3
pydub 0.25.1
Pygments 2.17.2
PyGObject 3.36.0
pynvml 11.5.0
pyparsing 3.1.2
python-apt 2.0.1+ubuntu0.20.4.1
python-dateutil 2.9.0.post0
python-dotenv 1.0.1
python-multipart 0.0.9
pytz 2024.1
PyYAML 6.0.1
ray 2.10.0
referencing 0.34.0
regex 2023.12.25
requests 2.31.0
requests-unixsocket 0.2.0
rich 13.7.1
rouge 1.0.1
rpds-py 0.18.0
safetensors 0.4.2
scipy 1.12.0
semantic-version 2.10.0
sentencepiece 0.2.0
setuptools 69.2.0
shtab 1.7.1
simplejson 3.19.2
six 1.14.0
sniffio 1.3.1
sortedcontainers 2.4.0
sse-starlette 2.0.0
ssh-import-id 5.10
starlette 0.36.3
sympy 1.12
termcolor 2.4.0
tiktoken 0.6.0
tokenizers 0.15.2
tomli 2.0.1
toolz 0.12.1
torch 2.1.2
tqdm 4.66.2
transformers 4.39.1
triton 2.1.0
trl 0.8.1
typing_extensions 4.10.0
tyro 0.7.3
tzdata 2024.1
unattended-upgrades 0.1
urllib3 2.2.1
uvicorn 0.29.0
uvloop 0.19.0
vllm 0.4.0
watchfiles 0.21.0
websockets 11.0.3
wheel 0.34.2
xformers 0.0.23.post1
xxhash 3.4.1
yapf 0.40.2
yarl 1.9.4
zipp 3.18.1

Others

备注:当前的硬件环境下是成功运行过原版的Qwen1.5-72B-GTPQ-INT4

@hiyouga
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hiyouga commented May 11, 2024

已经修复,可以重新量化模型,或者把量化后模型 config.json 里面的 torch_dtype 改成 float16

@hiyouga hiyouga added the solved This problem has been already solved. label May 11, 2024
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