# Additional Configuration

Additional configuration is a mechanism provided by vLLM to allow plugins to control internal behavior by themselves. 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**:

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

**Offline mode**:

```python
from vllm import LLM

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

### Configuration options

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

| Name                                | Type | Default | Description                                                                                               |
|-------------------------------------|------|---------|-----------------------------------------------------------------------------------------------------------|
| `xlite_graph_config`                | dict | `{}`    | Configuration options for Xlite graph mode                                                                |
| `weight_prefetch_config`            | dict | `{}`    | Configuration options for weight prefetch                                                                 |
| `finegrained_tp_config`             | dict | `{}`    | Configuration options for module tensor parallelism                                                       |
| `ascend_compilation_config`         | dict | `{}`    | Configuration options for ascend compilation                                                              |
| `eplb_config`                       | dict | `{}`    | Configuration options for ascend compilation |
| `npugraph_ex_config`                | dict | `{}`    | Configuration options for Npugraph_ex backend                                                             |
| `refresh`                           | bool | `false` | Whether to refresh global Ascend configuration content. This is usually used by rlhf or ut/e2e test case. |
| `dump_config_path`                  | str  | `None`  | Configuration file path for msprobe dump(eager mode).                                                     |
| `enable_async_exponential`          | bool | `False` | Whether to enable asynchronous exponential overlap. To enable asynchronous exponential, set this config to True.        |
| `enable_shared_expert_dp`           | bool | `False` | When the expert is shared in DP, it delivers better performance but consumes more memory. Currently only DeepSeek series models are supported. |
| `multistream_overlap_shared_expert` | bool | `False` | Whether to enable multi-stream shared expert. This option only takes effect on MoE models with shared experts. |
| `multistream_overlap_gate`          | bool | `False` | Whether to enable multi-stream overlap gate. This option only takes effect on MoE models with shared experts.  |
| `recompute_scheduler_enable`        | bool | `False` | Whether to enable recompute scheduler.                                                                    |
| `enable_cpu_binding`                | bool | `True`  | Whether to enable CPU binding. Only takes effect on ARM CPUs; when enabled, A3 uses NUMA-balanced binding strategy and other device types use NUMA-affinity's. |
| `SLO_limits_for_dynamic_batch`      | int  | `-1`    | SLO limits for dynamic batch. This is new scheduler to support dynamic batch feature                            |
| `enable_npugraph_ex`                | bool | `False` | Whether to enable npugraph_ex graph mode.                                                                 |
| `pa_shape_list`                     | list | `[]`    | The custom shape list of page attention ops.                                                              |
| `enable_kv_nz`                      | bool | `False` | Whether to enable KV cache NZ layout. This option only takes effects on models using MLA (e.g., DeepSeek).                                      |
| `layer_sharding` | dict | `{}` | Configuration options for Layer Sharding Linear |
| `sp_threshold` | int | `1000` | For dense models, only num_tokens > threshold will enable sequence parallelism. |

The details of each configuration option are as follows:

**xlite_graph_config**

| Name | Type | Default | Description |
| ---- | ---- | ------- | ----------- |
| `enabled` | bool | `False` | Whether to enable Xlite graph mode. Currently only Llama, Qwen dense series models, and Qwen3-VL are supported. |
| `full_mode` | bool | `False` | Whether to enable Xlite for both the prefill and decode stages. By default, Xlite is only enabled for the decode stage. |

**weight_prefetch_config**

| Name             | Type | Default                                                     | Description                        |
|------------------|------|-------------------------------------------------------------|------------------------------------|
| `enabled`        | bool | `False`                                                     | Whether to enable weight prefetch. |
| `prefetch_ratio` | dict | `{"attn": {"qkv": 1.0, "o": 1.0}, "moe": {"gate_up": 0.8}, "mlp": { "gate_up": 1.0,  "down": 1.0}}` | Prefetch ratio of each weight.     |

**finegrained_tp_config**

| Name | Type | Default | Description |
| ---- | ---- | ------- | ----------- |
| `lmhead_tensor_parallel_size`    | int  | `0` | The custom tensor parallel size of lm_head.    |
| `oproj_tensor_parallel_size`     | int  | `0` | The custom tensor parallel size of o_proj.     |
| `embedding_tensor_parallel_size` | int  | `0` | The custom tensor parallel size of embedding. |
| `mlp_tensor_parallel_size`       | int  | `0` | The custom tensor parallel size of mlp.       |

**ascend_compilation_config**

| Name | Type | Default | Description |
| ---- | ---- | ------- | ----------- |
| `fuse_norm_quant`  | bool | `True` | Whether to enable fuse_norm_quant pass. |
| `fuse_qknorm_rope` | bool | `True` | Whether to enable fuse_qknorm_rope pass. If Triton is not in the environment, set it to False. |
| `fuse_allreduce_rms` | bool | `False` | Whether to enable fuse_allreduce_rms pass. It's set to False because of conflict with SP. |

**eplb_config**

| Name | Type | Default | Description |
| ---- | ---- | ------- | ----------- |
| `dynamic_eplb`                   | bool| `False`| Whether to enable dynamic EPLB. |
| `expert_map_path`                | str | `None` | When using expert load balancing for an MoE model, an expert map path needs to be passed in.|
| `expert_heat_collection_interval`| int | `400`  | Forward iterations when EPLB begins. |
| `algorithm_execution_interval`   | int | `30`   | The forward iterations when the EPLB worker will finish CPU tasks. |
| `expert_map_record_path`         | str | `None` | Save the expert load calculation results to a new expert table in the specified directory.|
| `num_redundant_experts`          | int | `0`    | Specify redundant experts during initialization. |

**npugraph_ex_config**

| Name                   | Type | Default | Description                                                                            |
|------------------------| ---- |---------|----------------------------------------------------------------------------------------|
| `enable`               | bool | `True` | Whether to enable npugraph_ex backend.                                                 |
| `enable_static_kernel` | bool | `False` | Whether to enable static kernel. Suitable for scenarios where shape changes are minimal and some time is available for static kernel compilation. |
| `fuse_norm_quant`  | bool | `True` | Whether to enable fuse_norm_quant pass. |
| `fuse_qknorm_rope` | bool | `True` | Whether to enable fuse_qknorm_rope pass. If Triton is not in the environment, set it to False. |
| `fuse_allreduce_rms` | bool | `False` | Whether to enable fuse_allreduce_rms pass. It's set to False because of conflict with SP. |

### Example

An example of additional configuration is as follows:

```python
{
    "weight_prefetch_config": {
        "enabled": True,
        "prefetch_ratio": {
            "attn": {
                "qkv": 1.0,
                "o": 1.0,
            },
            "moe": {
                "gate_up": 0.8
            },
            "mlp": {
                "gate_up": 1.0,
                "down": 1.0
            }
        },
    },
    "finegrained_tp_config": {
        "lmhead_tensor_parallel_size": 8,
        "oproj_tensor_parallel_size": 8,
        "embedding_tensor_parallel_size": 8,
        "mlp_tensor_parallel_size": 8,
    },
    "enable_kv_nz": False,
    "multistream_overlap_shared_expert": True,
    "refresh": False
}
```
