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MoE Backends in Axolotl
Axolotl supports selecting a Mixture-of-Experts (MoE) compute backend via the training config (YAML):
- Set
moe_backend: auto|torch_grouped|naive
Behavior
- auto (default): prefers PyTorch 2.8+ grouped GEMM; otherwise naive.
- torch_grouped: targets PyTorch 2.8+ grouped GEMM (H100/SM90+ recommended).
- naive: keeps the reference per-expert loop.
Notes
- Current implementation wires the backend selector and routes Mixtral MoE through it. Torch grouped uses cuBLASLt grouped GEMM when available; otherwise, the code falls back to the naive per-expert loop.
- No changes to training scripts are required; selection happens inside the model forward.
Example moe_backend: torch_grouped accelerate launch -m axolotl.cli.train path/to/config.yaml