Files
xc-llm-ascend/docs/source/user_guide/additional_config.md
wangxiyuan e1ab6d318e [Misc] Refactor additional_config (#1029)
More and more config options are added to additional_config. This PR
provide a new AscendConfig to manage these config options by an easier
way to make code cleaner and readable.

 This PR also added the `additional_config` doc for users.

Added the test_ascend_config.py to make sure the new AscendConfig works
as expect.

TODO: Add e2e test with torchair and deepseek once the CI resource is
available.

Signed-off-by: wangxiyuan <wangxiyuan1007@gmail.com>
2025-06-05 16:28:01 +08:00

2.3 KiB

Additional Configuration

addintional configuration is a mechanism provided by vLLM to allow plugins to control inner behavior by their own. vLLM Ascend uses this mechanism to make the project more flexible.

How to use

With either online mode or offline mode, users can use additional configuration. Take Qwen3 as an example:

Online mode:

vllm serve Qwen/Qwen3-8B --additional-config='{"config_key":"config_value"}'

Offline mode:

from vllm import LLM

LLM(model="Qwen/Qwen3-8B", additional_config={"config_key":"config_value"})

Configuration options

The following table lists the additional configuration options available in vLLM Ascend:

Name Type Default Description
torchair_graph_config dict {} The config options for torchair graph mode
ascend_scheduler_config dict {} The config options for ascend scheduler
expert_tensor_parallel_size str 1 Expert tensor parallel size the model to use.

The details of each config option are as follows:

torchair_graph_config

Name Type Default Description
enabled bool False Whether to enable torchair graph mode
use_cached_graph bool False Whether to use cached graph
graph_batch_sizes list[int] [] The batch size for torchair graph cache
graph_batch_sizes_init bool False Init graph batch size dynamically if graph_batch_sizes is empty

ascend_scheduler_config

Name Type Default Description
enabled bool False Whether to enable ascend scheduler for V1 engine

ascend_scheduler_config also support the options from vllm scheduler config. For example, you can add chunked_prefill_enabled: true to ascend_scheduler_config as well.

Example

A full example of additional configuration is as follows:

{
    "torchair_graph_config": {
        "enabled": true,
        "use_cached_graph": true,
        "graph_batch_sizes": [1, 2, 4, 8],
        "graph_batch_sizes_init": true
    },
    "ascend_scheduler_config": {
        "enabled": true,
        "chunked_prefill_enabled": true,
    },
    "expert_tensor_parallel_size": 1
}