7.2 KiB
Experts backends
All Mixture-of-Experts (MoE) implementations perform the same high-level computation. For each token, a router selects k experts. The token hidden state is then projected through the selected experts' parameters and aggregated with routing weights. The difference between experts backends is how those expert matrix multiplications execute.
The [ExpertsInterface] provides optimized experts backends. It decouples the experts implementation from the model code to simplify experimentation with different functions. Add new backends through the same interface.
| experts backend | description | GPU | CPU |
|---|---|---|---|
"eager" |
Reference implementation that loops over selected experts and applies projections on their tokens. | Reasonable baseline performance without requiring compilation. | Slower than grouped_mm but faster than batched_mm. |
"batched_mm" |
Duplicates selected expert parameters for each token and projects all tokens in a single batched GEMM using torch.bmm. |
Fastest for small inputs, especially with compilation. Uses more memory due to parameter duplication. | Not recommended (significantly slower than other backends). |
"grouped_mm" |
Orders tokens by selected experts and uses torch.nn.functional.grouped_mm to project all tokens in a single grouped GEMM (requires PyTorch 2.9+). |
Best for larger inputs and more memory efficient as it avoids duplicating expert parameters. Fast with compilation. | Most efficient backend for all input sizes. |
Note
When using
experts_implementation="grouped_mm"on GPU, the model automatically switches to"batched_mm"during the decode stage of generation (after prefill). This is becausebatched_mmis significantly faster on lower token count during autoregressive decoding on GPU. On CPU,grouped_mmremains active throughout generation as it is more efficient for all input sizes.
Set an experts backend
Use the experts_implementation argument in [~PreTrainedModel.from_pretrained] to instantiate a model with a specific experts backend.
from transformers import AutoModelForCausalLM
model = AutoModelForCausalLM.from_pretrained(
"Qwen/Qwen1.5-MoE-A2.7B",
dtype="bfloat16",
experts_implementation="batched_mm",
)
Switch between experts backends at runtime without reloading the model using [~PreTrainedModel.set_experts_implementation].
model.set_experts_implementation("eager")
Backbone-specific experts backend
Multimodal models can have multiple sub-configs (for example, different backbones). You can set a different experts backend per sub-config by passing a dict to experts_implementation at load time.
Keys in the mapping must match sub-config names.
from transformers import AutoModelForImageTextToText
experts_implementation_per_backbone = {
"text_config": "grouped_mm",
"vision_config": "eager",
}
model = AutoModelForImageTextToText.from_pretrained(
"Qwen/Qwen3-VL-Moe",
experts_implementation=experts_implementation_per_backbone,
)
Set the experts backend globally with an empty key.
model = AutoModelForCausalLM.from_pretrained(
"Qwen/Qwen1.5-MoE-A2.7B",
experts_implementation={"": "batched_mm"},
)
torch.compile
All three backends ("eager", "batched_mm", "grouped_mm") are compatible with torch.compile to certain extents. The following table summarizes compatibility:
| Implementation | compilation modes | dtypes | fullgraph=True |
|---|---|---|---|
grouped_mm |
None, max-autotune-no-cudagraphs |
bfloat16 |
Yes |
grouped_mm (fallback) |
None, max-autotune-no-cudagraphs |
bfloat16, float16, float32 |
Yes |
batched_mm |
all | bfloat16, float16, float32 |
Yes |
eager |
all | bfloat16, float16, float32 |
No |
Notes:
- The
grouped_mmexperts backend currently only supportsbfloat16when compiled withtorch.compile. Additionally, it is not compatible with CUDA graphs, so you must usemode=Noneormode="max-autotune-no-cudagraphs"when compiling. - The
eagerexperts backend uses a data-dependent operation to find which experts are used in a forward pass. This operation is not compatible with full graph compilation (fullgraph=True).
import torch
from transformers import AutoModelForCausalLM
model = AutoModelForCausalLM.from_pretrained(
"Qwen/Qwen1.5-MoE-A2.7B",
dtype="bfloat16",
experts_implementation="grouped_mm",
).eval().cuda()
# Works for grouped_mm (no CUDA graphs)
model.forward = torch.compile(model.forward, mode="max-autotune-no-cudagraphs")
Benchmarks
This benchmark compares different input sizes and experts implementations with and without torch.compile.