Files
xc-llm-ascend/docs/source/user_guide/feature_guide/graph_mode.md
lvjunqi 55beac9c91 [Feat]Xlite Qwen3-vl Support (#5228)
### What this PR does / why we need it?
This patch adds support for the Qwen3-VL model in Xlite. For more
details about Xlite, please refer to the following
link:https://atomgit.com/openeuler/GVirt/blob/master/xlite/README.md.
The latest performance comparison data between xlite and the default
aclgraph mode is as follows:

### Does this PR introduce _any_ user-facing change?
XLite graph mode supports the Qwen3-VL model.

### How was this patch tested?
vLLM version: v0.12.0 

- vLLM version: release/v0.13.0
- vLLM main:
ad32e3e19c

Signed-off-by: lvjunqi <lvjunqi1@huawei.com>
Co-authored-by: lvjunqi <lvjunqi1@huawei.com>
2025-12-22 16:30:52 +08:00

2.6 KiB

Graph Mode Guide

This feature is currently experimental. In future versions, there may be behavioral changes around configuration, coverage, performance improvement.

This guide provides instructions for using Ascend Graph Mode with vLLM Ascend. Please note that graph mode is only available on V1 Engine. And only Qwen, DeepSeek series models are well tested from 0.9.0rc1. We will make it stable and generalized in the next release.

Getting Started

From v0.9.1rc1 with V1 Engine, vLLM Ascend will run models in graph mode by default to keep the same behavior with vLLM. If you hit any issues, please feel free to open an issue on GitHub and fallback to the eager mode temporarily by setting enforce_eager=True when initializing the model.

There are two kinds for graph mode supported by vLLM Ascend:

  • ACLGraph: This is the default graph mode supported by vLLM Ascend. In v0.9.1rc1, Qwen and Deepseek series models are well tested.
  • XliteGraph: This is the openeuler xlite graph mode. In v0.11.0, only Llama, Qwen dense series models, and Qwen3-vl are supported.

Using ACLGraph

ACLGraph is enabled by default. Take Qwen series models as an example, just set to use V1 Engine is enough.

Offline example:

import os

from vllm import LLM

model = LLM(model="path/to/Qwen2-7B-Instruct")
outputs = model.generate("Hello, how are you?")

Online example:

vllm serve Qwen/Qwen2-7B-Instruct

Using XliteGraph

If you want to run Llama, Qwen dense series models, or Qwen3-vl with xlite graph mode, please install xlite, and set xlite_graph_config.

pip install xlite

Offline example:

import os
from vllm import LLM

# xlite supports the decode-only mode by default, and the full mode can be enabled by setting: "full_mode": True
model = LLM(model="path/to/Qwen3-32B", tensor_parallel_size=8, additional_config={"xlite_graph_config": {"enabled": True, "full_mode": True}})
outputs = model.generate("Hello, how are you?")

Online example:

vllm serve path/to/Qwen3-32B --tensor-parallel-size 8 --additional-config='{"xlite_graph_config": {"enabled": true, "full_mode": true}}'

You can find more details abort xlite here

Fallback to the Eager Mode

If ACLGraph and XliteGraph all fail to run, you should fallback to the eager mode.

Offline example:

import os
from vllm import LLM

model = LLM(model="someother_model_weight", enforce_eager=True)
outputs = model.generate("Hello, how are you?")

Online example:

vllm serve someother_model_weight --enforce-eager