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FastDeploy/tests/model_executor/test_fused_moe_wint2_backend.py
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xunyoyo 8225e694c9 [CI]【Hackathon 10th Spring No.37】功能模块 fastdeploy/model_executor/layers/moe/fused_moe_wint2_backend.py单测补充 (#6286)
* Add wint2 MoE backend tests

* Align wint2 test dtypes for cutlass apply

* Use bfloat16 input in wint2 test

* Stub moe_expert_reduce in wint2 test

* Use 2 experts in wint2 test

---------

Co-authored-by: CSWYF3634076 <wangyafeng@baidu.com>
2026-02-04 10:46:26 +08:00

122 lines
5.2 KiB
Python

"""
# Copyright (c) 2024 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
from types import SimpleNamespace
import paddle
from fastdeploy.model_executor.layers.moe import (
fused_moe_wint2_backend as wint2_backend,
)
paddle.set_device("gpu")
class _DummyLayer(paddle.nn.Layer):
def __init__(self, hidden_size=128, moe_intermediate_size=128, num_local_experts=2):
super().__init__()
self.num_local_experts = num_local_experts
self.num_experts = num_local_experts
self.hidden_size = hidden_size
self.moe_intermediate_size = moe_intermediate_size
self.top_k = 1
self.n_group = 1
self.topk_group = 1
self.topk_method = "topk"
self.gate_correction_bias = paddle.zeros([self.num_experts], dtype="float32")
self.routed_scaling_factor = 1.0
self.renormalize = True
self.expert_id_offset = 0
self.fd_config = SimpleNamespace()
self.weight_key_map = {
"up_gate_proj_expert_weight_key": "up_w_{}",
"down_proj_expert_weight_key": "down_w_{}",
"up_gate_proj_expert_weight_scale_key": "up_scale_{}",
"down_proj_expert_weight_scale_key": "down_scale_{}",
"up_gate_proj_expert_super_scales_key": "up_super_{}",
"down_proj_expert_super_scales_key": "down_super_{}",
"up_gate_proj_expert_code_scale_key": "up_code_scale_{}",
"down_proj_expert_code_scale_key": "down_code_scale_{}",
"up_gate_proj_expert_code_zp_key": "up_code_zp_{}",
"down_proj_expert_code_zp_key": "down_code_zp_{}",
}
def load_experts_weight(self, state_dict, *_args, **_kwargs):
return state_dict["up"], state_dict["down"], None, None
def _make_state_dict(layer):
super_dtype = layer.up_gate_proj_super_scales.dtype if hasattr(layer, "up_gate_proj_super_scales") else "float32"
up = [
paddle.ones([layer.hidden_size // 4, layer.moe_intermediate_size * 2], dtype="uint8")
for _ in range(layer.num_local_experts)
]
down = [
paddle.ones([layer.moe_intermediate_size // 4, layer.hidden_size], dtype="uint8")
for _ in range(layer.num_local_experts)
]
state = {"up": up, "down": down}
for idx in range(layer.num_local_experts):
state.update(
{
f"up_scale_{idx}": paddle.ones(
[layer.hidden_size // 128, layer.moe_intermediate_size * 2], dtype="uint8"
),
f"down_scale_{idx}": paddle.ones(
[layer.moe_intermediate_size // 128, layer.hidden_size], dtype="uint8"
),
f"up_super_{idx}": paddle.ones([layer.moe_intermediate_size * 2], dtype=super_dtype),
f"down_super_{idx}": paddle.ones([layer.hidden_size], dtype=super_dtype),
f"up_code_scale_{idx}": paddle.ones([layer.moe_intermediate_size * 2], dtype="float32"),
f"down_code_scale_{idx}": paddle.ones([layer.hidden_size], dtype="float32"),
f"up_code_zp_{idx}": paddle.ones([layer.moe_intermediate_size * 2], dtype="float32"),
f"down_code_zp_{idx}": paddle.ones([layer.hidden_size], dtype="float32"),
}
)
return state
def test_wint2_paths(monkeypatch):
quant_config = SimpleNamespace(moe_quant_type="w4w2")
layer = _DummyLayer()
cutlass_method = wint2_backend.CutlassWint2FusedMoeMethod(quant_config)
prev_dtype = paddle.get_default_dtype()
paddle.set_default_dtype("float16")
cutlass_method.create_weights(layer)
paddle.set_default_dtype(prev_dtype)
up, down = _make_state_dict(layer)["up"], _make_state_dict(layer)["down"]
cutlass_method.check(layer, up, down)
wint2_backend.Wint2MoeMethod.process_loaded_weights(cutlass_method, layer, None)
cutlass_method.process_loaded_weights(layer, None)
cutlass_method.process_prequanted_weights(layer, _make_state_dict(layer))
gate = paddle.nn.Linear(layer.hidden_size, layer.num_experts, bias_attr=False)
x = paddle.ones([2, layer.hidden_size], dtype="float16")
monkeypatch.setattr(
wint2_backend,
"moe_expert_reduce",
lambda _ffn_out, *_args, **_kwargs: paddle.zeros([x.shape[0], layer.hidden_size], dtype=x.dtype),
)
out = cutlass_method.apply(layer, x, gate, topk_ids_hookfunc=lambda **_k: None)
assert out.shape == [2, layer.hidden_size]
triton_method = wint2_backend.TritonWint2FusedMoeMethod(quant_config)
triton_method.create_weights(layer)
triton_method.process_prequanted_weights(layer, _make_state_dict(layer))
out_triton = triton_method.apply(layer, x, gate, topk_ids_hookfunc=lambda **_k: None)
assert out_triton.shape == [2, layer.hidden_size]