222 lines
6.9 KiB
Python
222 lines
6.9 KiB
Python
# Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import copy
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import paddle
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from paddle import nn
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from . import utils
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class Identity(nn.Layer):
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'''a layer to replace bn or relu layers'''
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def __init__(self, *args, **kwargs):
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super().__init__()
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def forward(self, input):
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return input
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def fuse_conv_bn(model):
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is_train = False
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if model.training:
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model.eval()
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is_train = True
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fuse_list = []
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tmp_pair = [None, None]
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for name, layer in model.named_sublayers():
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if isinstance(layer, nn.Conv2D):
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tmp_pair[0] = name
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if isinstance(layer, nn.BatchNorm2D):
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tmp_pair[1] = name
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if tmp_pair[0] and tmp_pair[1] and len(tmp_pair) == 2:
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fuse_list.append(tmp_pair)
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tmp_pair = [None, None]
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model = fuse_layers(model, fuse_list)
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if is_train:
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model.train()
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def fuse_layers(model, layers_to_fuse, inplace=False):
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'''
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fuse layers in layers_to_fuse
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Args:
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model(paddle.nn.Layer): The model to be fused.
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layers_to_fuse(list): The layers' names to be fused. For
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example,"fuse_list = [["conv1", "bn1"], ["conv2", "bn2"]]".
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A TypeError would be raised if "fuse" was set as
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True but "fuse_list" was None.
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Default: None.
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inplace(bool): Whether apply fusing to the input model.
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Default: False.
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Return
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fused_model(paddle.nn.Layer): The fused model.
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'''
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if inplace is False:
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model = copy.deepcopy(model)
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for layers in layers_to_fuse:
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_fuse_layers(model, layers)
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return model
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def _fuse_layers(model, layers_list):
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'''fuse all the layers in layers_list'''
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layer_list = []
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for layer_name in layers_list:
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parent_layer, sub_name = utils.find_parent_layer_and_sub_name(
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model, layer_name
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)
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layer_list.append(getattr(parent_layer, sub_name))
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new_layers = _fuse_func(layer_list)
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for i, item in enumerate(layers_list):
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parent_layer, sub_name = utils.find_parent_layer_and_sub_name(
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model, item
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)
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setattr(parent_layer, sub_name, new_layers[i])
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def _fuse_func(layer_list):
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'''choose the fuse method and fuse layers'''
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types = tuple(type(m) for m in layer_list)
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fusion_method = types_to_fusion_method.get(types, None)
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new_layers = [None] * len(layer_list)
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fused_layer = fusion_method(*layer_list)
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for handle_id, pre_hook_fn in layer_list[0]._forward_pre_hooks.items():
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fused_layer.register_forward_pre_hook(pre_hook_fn)
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del layer_list[0]._forward_pre_hooks[handle_id]
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for handle_id, hook_fn in layer_list[-1]._forward_post_hooks.items():
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fused_layer.register_forward_post_hook(hook_fn)
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del layer_list[-1]._forward_post_hooks[handle_id]
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new_layers[0] = fused_layer
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for i in range(1, len(layer_list)):
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identity = Identity()
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identity.training = layer_list[0].training
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new_layers[i] = identity
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return new_layers
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def _fuse_conv_bn(conv, bn):
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'''fuse conv and bn for train or eval'''
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assert conv.training == bn.training, (
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"Conv and BN both must be in the same mode (train or eval)."
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)
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if conv.training:
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assert bn._num_features == conv._out_channels, (
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'Output channel of Conv2d must match num_features of BatchNorm2d'
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)
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raise NotImplementedError
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else:
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return _fuse_conv_bn_eval(conv, bn)
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def _fuse_conv_bn_eval(conv, bn):
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'''fuse conv and bn for eval'''
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assert not (conv.training or bn.training), "Fusion only for eval!"
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fused_conv = copy.deepcopy(conv)
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fused_weight, fused_bias = _fuse_conv_bn_weights(
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fused_conv.weight,
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fused_conv.bias,
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bn._mean,
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bn._variance,
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bn._epsilon,
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bn.weight,
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bn.bias,
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)
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fused_conv.weight.set_value(fused_weight)
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if fused_conv.bias is None:
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fused_conv.bias = paddle.create_parameter(
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shape=[fused_conv._out_channels], is_bias=True, dtype=bn.bias.dtype
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)
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fused_conv.bias.set_value(fused_bias)
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return fused_conv
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def _fuse_conv_bn_weights(conv_w, conv_b, bn_rm, bn_rv, bn_eps, bn_w, bn_b):
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'''fuse weights and bias of conv and bn'''
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if conv_b is None:
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conv_b = paddle.zeros_like(bn_rm)
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if bn_w is None:
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bn_w = paddle.ones_like(bn_rm)
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if bn_b is None:
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bn_b = paddle.zeros_like(bn_rm)
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bn_var_rsqrt = paddle.rsqrt(bn_rv + bn_eps)
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conv_w = conv_w * (bn_w * bn_var_rsqrt).reshape(
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[-1] + [1] * (len(conv_w.shape) - 1)
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)
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conv_b = (conv_b - bn_rm) * bn_var_rsqrt * bn_w + bn_b
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return conv_w, conv_b
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def _fuse_linear_bn(linear, bn):
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'''fuse linear and bn'''
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assert linear.training == bn.training, (
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"Linear and BN both must be in the same mode (train or eval)."
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)
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if linear.training:
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assert bn._num_features == linear.weight.shape[1], (
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'Output channel of Linear must match num_features of BatchNorm'
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)
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raise NotImplementedError
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else:
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return _fuse_linear_bn_eval(linear, bn)
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def _fuse_linear_bn_eval(linear, bn):
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'''fuse linear and bn for eval'''
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assert not (linear.training or bn.training), "Fusion only for eval!"
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fused_linear = copy.deepcopy(linear)
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fused_weight, fused_bias = _fuse_linear_bn_weights(
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fused_linear.weight,
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fused_linear.bias,
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bn._mean,
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bn._variance,
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bn._epsilon,
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bn.weight,
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bn.bias,
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)
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fused_linear.weight.set_value(fused_weight)
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if fused_linear.bias is None:
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fused_linear.bias = paddle.create_parameter(
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shape=[fused_linear.weight.shape[1]],
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is_bias=True,
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dtype=bn.bias.dtype,
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)
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fused_linear.bias.set_value(fused_bias)
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return fused_linear
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def _fuse_linear_bn_weights(
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linear_w, linear_b, bn_rm, bn_rv, bn_eps, bn_w, bn_b
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):
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'''fuse weights and bias of linear and bn'''
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if linear_b is None:
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linear_b = paddle.zeros_like(bn_rm)
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bn_scale = bn_w * paddle.rsqrt(bn_rv + bn_eps)
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fused_w = linear_w * bn_scale.unsqueeze(-1)
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fused_b = (linear_b - bn_rm) * bn_scale + bn_b
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return fused_w, fused_b
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types_to_fusion_method = {
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(nn.Conv2D, nn.BatchNorm2D): _fuse_conv_bn,
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(nn.Linear, nn.BatchNorm1D): _fuse_linear_bn,
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}
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