### What this PR does / why we need it?
1. Rename num_iterations_eplb_update to expert_heat_collection_interval.
2. Rename num_wait_worker_iterations to algorithm_execution_interval.
3. Rename init_redundancy_expert to num_redundant_experts because the
variable with the same meaning in vLLM is named this way.
4. Delete gate_eplb because we don't need this feature.
5. Move eplb config into a dict in additional config.
6. Depend on pr5817
### Does this PR introduce _any_ user-facing change?
before this pr:
`--additional-config '{"dynamic_eplb":true,
"num_iterations_eplb_update": 4000, "num_wait_worker_iterations": 150,
"init_redundancy_expert": 16, "expert_map_path": "xxx.json"}'`
after this pr:
`--additional-config
'{"eplb_config":{"dynamic_eplb":true,"expert_heat_collection_interval":4000,
"algorithm_execution_interval":150,"num_redundant_experts": 16,
"expert_map_path": "xxx.json"}}'`
### How was this patch tested?
#### test qwen3-235b eplb num_redundant_experts=16
without pr5817
| dataset | version | metric | mode | vllm-api-general-chat |
|----- | ----- | ----- | ----- | -----|
| aime2024 | 604a78 | accuracy | gen | 83.33 |
with pr5817
| dataset | version | metric | mode | vllm-api-general-chat |
|----- | ----- | ----- | ----- | -----|
| aime2024 | 604a78 | accuracy | gen | 86.67 |
- vLLM version: v0.13.0
- vLLM main:
45c1ca1ca1
Signed-off-by: shenchuxiaofugui <1311027364@qq.com>
7.0 KiB
7.0 KiB
Additional Configuration
Additional configuration is a mechanism provided by vLLM to allow plugins to control inner 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:
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 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 |
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 async exponential overlap. To enable async 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 multistream shared expert. This option only takes effect on MoE models with shared experts. |
multistream_overlap_gate |
bool | False |
Whether to enable multistream 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 | False |
Whether to enable CPU binding. |
SLO_limits_for_dynamic_batch |
int | -1 |
SLO limits for dynamic batch. This is new scheduler to support dynamic 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 kvcache NZ layout. This option only takes effects on models using MLA (e.g., DeepSeek). |
layer_sharding |
dict | {} |
Configuration options for layer sharding linear |
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}} |
Prefetch ratio of each weight. |
finegrained_tp_config
| Name | Type | Default | Description |
|---|---|---|---|
lmhead_tensor_parallel_size |
int | 0 |
The custom tensor parallel size of lmhead. |
oproj_tensor_parallel_size |
int | 0 |
The custom tensor parallel size of oproj. |
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 | False |
Whether to enable fuse_qknorm_rope pass. It's set to True by default when Triton is installed. |
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. |
Example
An example of additional configuration is as follows:
{
"weight_prefetch_config": {
"enabled": True,
"prefetch_ratio": {
"attn": {
"qkv": 1.0,
"o": 1.0,
},
"moe": {
"gate_up": 0.8
}
},
},
"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
}