Model quantization is a technique that reduces the size and computational requirements of a model by lowering the data precision of the weights and activation values in the model, thereby saving the memory and improving the inference speed.
Since 0.9.0rc2 version, quantization feature is experimentally supported in vLLM Ascend. Users can enable quantization feature by specifying `--quantization ascend`. Currently, only Qwen, DeepSeek series models are well tested. We’ll support more quantization algorithm and models in the future.
## Install modelslim
To quantize a model, users should install [ModelSlim](https://gitee.com/ascend/msit/blob/master/msmodelslim/README.md) which is the Ascend compression and acceleration tool. It is an affinity-based compression tool designed for acceleration, using compression as its core technology and built upon the Ascend platform.
Install modelslim:
```bash
# The branch(br_release_MindStudio_8.1.RC2_TR5_20260624) has been verified
You can choose to convert the model yourself or use the quantized model we uploaded,
see https://www.modelscope.cn/models/vllm-ascend/Kimi-K2-Instruct-W8A8
This conversion process will require a larger CPU memory, please ensure that the RAM size is greater than 2TB
:::
### Adapts and change
1. Ascend does not support the `flash_attn` library. To run the model, you need to follow the [guide](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-v3r1) and comment out certain parts of the code in `modeling_deepseek.py` located in the weights folder.
2. The current version of transformers does not support loading weights in FP8 quantization format. you need to follow the [guide](https://gitee.com/ascend/msit/blob/master/msmodelslim/example/DeepSeek/README.md#deepseek-v3r1) and delete the quantization related fields from `config.json` in the weights folder
Enable quantization by specifying `--quantization ascend`, for more details, see DeepSeek-V3-W8A8 [tutorial](https://vllm-ascend.readthedocs.io/en/latest/tutorials/multi_node.html)
## FAQs
### 1. How to solve the KeyError: 'xxx.layers.0.self_attn.q_proj.weight' problem?
First, make sure you specify `ascend` quantization method. Second, check if your model is converted by this `br_release_MindStudio_8.1.RC2_TR5_20260624` modelslim version. Finally, if it still doesn't work, please
submit a issue, maybe some new models need to be adapted.
### 2. How to solve the error "Could not locate the configuration_deepseek.py"?
Please convert DeepSeek series models using `br_release_MindStudio_8.1.RC2_TR5_20260624` modelslim, this version has fixed the missing configuration_deepseek.py error.
### 3. When converting deepseek series models with modelslim, what should you pay attention?
When the mla portion of the weights used `W8A8_DYNAMIC` quantization, if torchair graph mode is enabled, please modify the configuration file in the CANN package to prevent incorrect inference results.
2. Add `"AddRmsNormDynamicQuantFusionPass":"off",` and `"MultiAddRmsNormDynamicQuantFusionPass":"off",` to the fusion_config.json you find, the location is as follows: