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function.py
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function.py
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import torch
import torch.nn as nn
from copy import deepcopy
from abc import ABC, abstractclassmethod
from typing import Sequence, Tuple
from .. import ops
__all__=[
'BasePruningFunc',
'PrunerBox',
'prune_conv_out_channels',
'prune_conv_in_channels',
'prune_depthwise_conv_out_channels',
'prune_depthwise_conv_in_channels',
'prune_batchnorm_out_channels',
'prune_batchnorm_in_channels',
'prune_linear_out_channels',
'prune_linear_in_channels',
'prune_prelu_out_channels',
'prune_prelu_in_channels',
'prune_layernorm_out_channels',
'prune_layernorm_in_channels',
'prune_embedding_out_channels',
'prune_embedding_in_channels',
'prune_parameter_out_channels',
'prune_parameter_in_channels',
'prune_multihead_attention_out_channels',
'prune_multihead_attention_in_channels',
'prune_groupnorm_out_channels',
'prune_groupnorm_in_channels',
'prune_instancenorm_out_channels',
'prune_instancenorm_in_channels',
]
class BasePruningFunc(ABC):
""" Base class for layer pruner.
It should provide the following functionalities:
- prune_out_channels: prune out channels of a layer
- prune_in_channels: prune in channels of a layer
- get_out_channels: get the number of output channels of a layer
- get_in_channels: get the number of input channels of a layer
To build the intra-layer dependency, please specify prune_out_channels = prune_in_channels.
Example:
```python
class MyPruner(BasePruningFunc):
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
# prune out channels of a layer
pass
prune_in_channels = prune_out_channels # this line enables the intra-layer dependency
```
If prune_out_channels != prune_in_channels, there will be no intra-layer dependency.
"""
TARGET_MODULES = ops.TORCH_OTHERS # None
def __init__(self, pruning_dim=1):
self.pruning_dim = pruning_dim
@abstractclassmethod
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]):
raise NotImplementedError
@abstractclassmethod
def prune_in_channels(self, layer: nn.Module, idxs: Sequence[int]):
raise NotImplementedError
@abstractclassmethod
def get_out_channels(self, layer: nn.Module):
raise NotImplementedError
@abstractclassmethod
def get_in_channels(self, layer: nn.Module):
raise NotImplementedError
def check(self, layer, idxs, to_output):
if self.TARGET_MODULES is not None:
assert isinstance(layer, self.TARGET_MODULES), 'Mismatched pruner {} and module {}'.format(
self.__str__, layer)
if to_output:
prunable_channels = self.get_out_channels(layer)
else:
prunable_channels = self.get_in_channels(layer)
if prunable_channels is not None:
assert all(idx < prunable_channels and idx >=
0 for idx in idxs), "All pruning indices should fall into [{}, {})".format(0, prunable_channels)
def __call__(self, layer: nn.Module, idxs: Sequence[int], to_output: bool = True, inplace: bool = True, dry_run: bool = False) -> Tuple[nn.Module, int]:
idxs.sort()
self.check(layer, idxs, to_output)
pruning_fn = self.prune_out_channels if to_output else self.prune_in_channels
if not inplace:
layer = deepcopy(layer)
layer = pruning_fn(layer, idxs)
return layer
def get_in_channel_groups(self, layer):
return 1
def get_out_channel_groups(self, layer):
return 1
def _prune_parameter_and_grad(self, weight, keep_idxs, pruning_dim):
pruned_weight = torch.nn.Parameter(torch.index_select(weight, pruning_dim, torch.LongTensor(keep_idxs).to(weight.device).contiguous()))
if weight.grad is not None:
pruned_weight.grad = torch.index_select(weight.grad, pruning_dim, torch.LongTensor(keep_idxs).to(weight.device))
return pruned_weight.to(weight.device)
class ConvPruner(BasePruningFunc):
TARGET_MODULE = ops.TORCH_CONV
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
keep_idxs = list(set(range(layer.out_channels)) - set(idxs))
keep_idxs.sort()
layer.out_channels = layer.out_channels-len(idxs)
if not layer.transposed:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
else:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 1)
if layer.bias is not None:
layer.bias = self._prune_parameter_and_grad(layer.bias, keep_idxs, 0)
return layer
def prune_in_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
keep_idxs = list(set(range(layer.in_channels)) - set(idxs))
keep_idxs.sort()
layer.in_channels = layer.in_channels - len(idxs)
if layer.groups>1:
keep_idxs = keep_idxs[:len(keep_idxs)//layer.groups]
if not layer.transposed:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 1)
else:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
# no bias pruning because it does not change the output channels
return layer
def get_out_channels(self, layer):
return layer.out_channels
def get_in_channels(self, layer):
return layer.in_channels
def get_in_channel_groups(self, layer):
return layer.groups
def get_out_channel_groups(self, layer):
return layer.groups
class DepthwiseConvPruner(ConvPruner):
TARGET_MODULE = ops.TORCH_CONV
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
keep_idxs = list(set(range(layer.out_channels)) - set(idxs))
keep_idxs.sort()
layer.out_channels = layer.out_channels-len(idxs)
layer.in_channels = layer.in_channels-len(idxs)
layer.groups = layer.groups-len(idxs)
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
if layer.bias is not None:
layer.bias = self._prune_parameter_and_grad(layer.bias, keep_idxs, 0)
return layer
prune_in_channels = prune_out_channels
# def prune_input(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
# return self.prune_output(layer, idxs)
class LinearPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_LINEAR
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
keep_idxs = list(set(range(layer.out_features)) - set(idxs))
keep_idxs.sort()
layer.out_features = layer.out_features-len(idxs)
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
if layer.bias is not None:
layer.bias = self._prune_parameter_and_grad(layer.bias, keep_idxs, 0)
return layer
def prune_in_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
keep_idxs = list(set(range(layer.in_features)) - set(idxs))
keep_idxs.sort()
layer.in_features = layer.in_features-len(idxs)
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 1)
return layer
def get_out_channels(self, layer):
return layer.out_features
def get_in_channels(self, layer):
return layer.in_features
class BatchnormPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_BATCHNORM
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
keep_idxs = list(set(range(layer.num_features)) - set(idxs))
keep_idxs.sort()
layer.num_features = layer.num_features-len(idxs)
layer.running_mean = layer.running_mean.data[keep_idxs]
layer.running_var = layer.running_var.data[keep_idxs]
if layer.affine:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
layer.bias = self._prune_parameter_and_grad(layer.bias, keep_idxs, 0)
return layer
prune_in_channels = prune_out_channels
# def prune_in_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
# return self.prune_out_channels(layer=layer, idxs=idxs)
def get_out_channels(self, layer):
return layer.num_features
def get_in_channels(self, layer):
return layer.num_features
class LayernormPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_LAYERNORM
def __init__(self, metrcis=None, pruning_dim=-1):
super().__init__(metrcis)
self.pruning_dim = pruning_dim
def check(self, layer, idxs):
layer.dim = self.pruning_dim
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
pruning_dim = self.pruning_dim
if len(layer.normalized_shape) < -pruning_dim:
return layer
num_features = layer.normalized_shape[pruning_dim]
keep_idxs = torch.tensor(list(set(range(num_features)) - set(idxs)))
keep_idxs.sort()
if layer.elementwise_affine:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, pruning_dim)
if layer.bias is not None:
layer.bias = self._prune_parameter_and_grad(layer.bias, keep_idxs, pruning_dim)
if pruning_dim != -1:
layer.normalized_shape = layer.normalized_shape[:pruning_dim] + (
keep_idxs.size(0), ) + layer.normalized_shape[pruning_dim+1:]
else:
layer.normalized_shape = layer.normalized_shape[:pruning_dim] + (
keep_idxs.size(0), )
return layer
prune_in_channels = prune_out_channels
def get_out_channels(self, layer):
return layer.normalized_shape[self.pruning_dim]
def get_in_channels(self, layer):
return layer.normalized_shape[self.pruning_dim]
class GroupNormPruner(BasePruningFunc):
def prune_out_channels(self, layer: nn.PReLU, idxs: list) -> nn.Module:
keep_idxs = list(set(range(layer.num_channels)) - set(idxs))
keep_idxs.sort()
layer.num_channels = layer.num_channels-len(idxs)
if layer.affine:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
layer.bias = self._prune_parameter_and_grad(layer.bias, keep_idxs, 0)
return layer
prune_in_channels = prune_out_channels
def get_out_channels(self, layer):
return layer.num_channels
def get_in_channels(self, layer):
return layer.num_channels
def get_in_channel_groups(self, layer):
return layer.num_groups
def get_out_channel_groups(self, layer):
return layer.num_groups
class InstanceNormPruner(BasePruningFunc):
def prune_out_channels(self, layer: nn.Module, idxs: Sequence[int]) -> nn.Module:
keep_idxs = list(set(range(layer.num_features)) - set(idxs))
keep_idxs.sort()
layer.num_features = layer.num_features-len(idxs)
if layer.affine:
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
layer.bias = self._prune_parameter_and_grad(layer.bias, keep_idxs, 0)
return layer
prune_in_channels = prune_out_channels
def get_out_channels(self, layer):
return layer.num_features
def get_in_channels(self, layer):
return layer.num_features
class PReLUPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_PRELU
def prune_out_channels(self, layer: nn.PReLU, idxs: list) -> nn.Module:
if layer.num_parameters == 1:
return layer
keep_idxs = list(set(range(layer.num_parameters)) - set(idxs))
keep_idxs.sort()
layer.num_parameters = layer.num_parameters-len(idxs)
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 0)
return layer
prune_in_channels = prune_out_channels
# def prune_in_channels(self, layer:nn.Module, idxs: Sequence[int]) -> nn.Module:
# return self.prune_out_channels(layer=layer, idxs=idxs)
def get_out_channels(self, layer):
if layer.num_parameters == 1:
return None
else:
return layer.num_parameters
def get_in_channels(self, layer):
return self.get_out_channels(layer=layer)
class EmbeddingPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_EMBED
def prune_out_channels(self, layer: nn.Embedding, idxs: list) -> nn.Module:
num_features = layer.embedding_dim
keep_idxs = list(set(range(num_features)) - set(idxs))
keep_idxs.sort()
layer.weight = self._prune_parameter_and_grad(layer.weight, keep_idxs, 1)
layer.embedding_dim = len(keep_idxs)
return layer
prune_in_channels = prune_out_channels
# def prune_in_channels(self, layer: nn.Embedding, idxs: list)-> nn.Module:
# return self.prune_out_channels(layer=layer, idxs=idxs)
def get_out_channels(self, layer):
return layer.embedding_dim
def get_in_channels(self, layer):
return self.get_out_channels(layer=layer)
class LSTMPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_LSTM
def prune_out_channels(self, layer: nn.LSTM, idxs: list) -> nn.Module:
assert layer.num_layers==1
num_layers = layer.num_layers
num_features = layer.hidden_size
keep_idxs = list(set(range(num_features)) - set(idxs))
keep_idxs.sort()
keep_idxs = torch.tensor(keep_idxs)
expanded_keep_idxs = torch.cat([ keep_idxs+i*num_features for i in range(4) ], dim=0)
if layer.bidirectional:
postfix = ['', '_reverse']
else:
postfix = ['']
#for l in range(num_layers):
for pf in postfix:
setattr(layer, 'weight_hh_l0'+pf, self._prune_parameter_and_grad(
getattr(layer, 'weight_hh_l0'+pf), keep_idxs, 0))
if layer.bias:
setattr(layer, 'bias_hh_l0'+pf, self._prune_parameter_and_grad(
getattr(layer, 'bias_hh_l0'+pf), keep_idxs, 0))
setattr(layer, 'weight_hh_l0'+pf, self._prune_parameter_and_grad(
getattr(layer, 'weight_hh_l0'+pf), keep_idxs, 0))
setattr(layer, 'weight_ih_l0'+pf, self._prune_parameter_and_grad(
getattr(layer, 'weight_ih_l0'+pf), expanded_keep_idxs, 1))
if layer.bias:
setattr(layer, 'bias_ih_l0'+pf, self._prune_parameter_and_grad(
getattr(layer, 'bias_ih_l0'+pf), keep_idxs, 0))
layer.hidden_size = len(keep_idxs)
def prune_in_channels(self, layer: nn.LSTM, idxs: list):
num_features = layer.input_size
keep_idxs = list(set(range(num_features)) - set(idxs))
keep_idxs.sort()
setattr(layer, 'weight_ih_l0', self._prune_parameter_and_grad(
getattr(layer, 'weight_ih_l0'), keep_idxs, 1))
if layer.bidirectional:
setattr(layer, 'weight_ih_l0_reverse', self._prune_parameter_and_grad(
getattr(layer, 'weight_ih_l0_reverse'), keep_idxs, 1))
layer.input_size = len(keep_idxs)
def get_out_channels(self, layer):
return layer.hidden_size
def get_in_channels(self, layer):
return layer.input_size
class ParameterPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_PARAMETER
def __init__(self, pruning_dim=-1):
super().__init__(pruning_dim=pruning_dim)
def prune_out_channels(self, tensor, idxs: list) -> nn.Module:
keep_idxs = list(set(range(tensor.data.shape[self.pruning_dim])) - set(idxs))
keep_idxs.sort()
pruned_parameter = self._prune_parameter_and_grad(tensor, keep_idxs, self.pruning_dim)
return pruned_parameter
prune_in_channels = prune_out_channels
def get_out_channels(self, parameter):
return parameter.shape[self.pruning_dim]
def get_in_channels(self, parameter):
return parameter.shape[self.pruning_dim]
class MultiheadAttentionPruner(BasePruningFunc):
TARGET_MODULES = ops.TORCH_MHA
def check(self, layer, idxs, to_output):
super().check(layer, idxs, to_output)
assert (layer.embed_dim - len(idxs)) % layer.num_heads == 0, "embed_dim (%d) of MultiheadAttention after pruning must divide evenly by `num_heads` (%d)" % (layer.embed_dim, layer.num_heads)
def prune_out_channels(self, layer, idxs: list) -> nn.Module:
keep_idxs = list(set(range(layer.embed_dim)) - set(idxs))
keep_idxs.sort()
if layer.q_proj_weight is not None:
layer.q_proj_weight = self._prune_parameter_and_grad(layer.q_proj_weight, keep_idxs, 0)
if layer.k_proj_weight is not None:
layer.k_proj_weight = self._prune_parameter_and_grad(layer.k_proj_weight, keep_idxs, 0)
if layer.v_proj_weight is not None:
layer.v_proj_weight = self._prune_parameter_and_grad(layer.v_proj_weight, keep_idxs, 0)
pruning_idxs_repeated = idxs + \
[i+layer.embed_dim for i in idxs] + \
[i+2*layer.embed_dim for i in idxs]
keep_idxs_3x_repeated = list(
set(range(3*layer.embed_dim)) - set(pruning_idxs_repeated))
keep_idxs_3x_repeated.sort()
if layer.in_proj_weight is not None:
layer.in_proj_weight = self._prune_parameter_and_grad(layer.in_proj_weight, keep_idxs_3x_repeated, 0)
layer.in_proj_weight = self._prune_parameter_and_grad(layer.in_proj_weight, keep_idxs, 1)
if layer.in_proj_bias is not None:
layer.in_proj_bias = self._prune_parameter_and_grad(layer.in_proj_bias, keep_idxs_3x_repeated, 0)
if layer.bias_k is not None:
layer.bias_k = self._prune_parameter_and_grad(layer.bias_k, keep_idxs, 2)
if layer.bias_v is not None:
layer.bias_v = self._prune_parameter_and_grad(layer.bias_v, keep_idxs, 2)
linear = layer.out_proj
keep_idxs = list(set(range(linear.out_features)) - set(idxs))
keep_idxs.sort()
linear.out_features = linear.out_features-len(idxs)
linear.weight = self._prune_parameter_and_grad(linear.weight, keep_idxs, 0)
if linear.bias is not None:
linear.bias = self._prune_parameter_and_grad(linear.bias, keep_idxs, 0)
keep_idxs = list(set(range(linear.in_features)) - set(idxs))
keep_idxs.sort()
linear.in_features = linear.in_features-len(idxs)
linear.weight = self._prune_parameter_and_grad(linear.weight, keep_idxs, 1)
layer.embed_dim = layer.embed_dim - len(idxs)
layer.head_dim = layer.embed_dim // layer.num_heads
layer.kdim = layer.embed_dim
layer.vdim = layer.embed_dim
return layer
prune_in_channels = prune_out_channels
def get_out_channels(self, layer):
return layer.embed_dim
def get_in_channels(self, layer):
return self.get_out_channels(layer)
PrunerBox = {
ops.OPTYPE.CONV: ConvPruner(),
ops.OPTYPE.LINEAR: LinearPruner(),
ops.OPTYPE.BN: BatchnormPruner(),
ops.OPTYPE.DEPTHWISE_CONV: DepthwiseConvPruner(),
ops.OPTYPE.PRELU: PReLUPruner(),
ops.OPTYPE.LN: LayernormPruner(),
ops.OPTYPE.EMBED: EmbeddingPruner(),
ops.OPTYPE.PARAMETER: ParameterPruner(),
ops.OPTYPE.MHA: MultiheadAttentionPruner(),
ops.OPTYPE.LSTM: LSTMPruner(),
ops.OPTYPE.GN: GroupNormPruner(),
ops.OPTYPE.IN: InstanceNormPruner(),
}
# Alias
prune_conv_out_channels = PrunerBox[ops.OPTYPE.CONV].prune_out_channels
prune_conv_in_channels = PrunerBox[ops.OPTYPE.CONV].prune_in_channels
prune_depthwise_conv_out_channels = PrunerBox[ops.OPTYPE.DEPTHWISE_CONV].prune_out_channels
prune_depthwise_conv_in_channels = PrunerBox[ops.OPTYPE.DEPTHWISE_CONV].prune_in_channels
prune_batchnorm_out_channels = PrunerBox[ops.OPTYPE.BN].prune_out_channels
prune_batchnorm_in_channels = PrunerBox[ops.OPTYPE.BN].prune_in_channels
prune_linear_out_channels = PrunerBox[ops.OPTYPE.LINEAR].prune_out_channels
prune_linear_in_channels = PrunerBox[ops.OPTYPE.LINEAR].prune_in_channels
prune_prelu_out_channels = PrunerBox[ops.OPTYPE.PRELU].prune_out_channels
prune_prelu_in_channels = PrunerBox[ops.OPTYPE.PRELU].prune_in_channels
prune_layernorm_out_channels = PrunerBox[ops.OPTYPE.LN].prune_out_channels
prune_layernorm_in_channels = PrunerBox[ops.OPTYPE.LN].prune_in_channels
prune_embedding_out_channels = PrunerBox[ops.OPTYPE.EMBED].prune_out_channels
prune_embedding_in_channels = PrunerBox[ops.OPTYPE.EMBED].prune_in_channels
prune_parameter_out_channels = PrunerBox[ops.OPTYPE.PARAMETER].prune_out_channels
prune_parameter_in_channels = PrunerBox[ops.OPTYPE.PARAMETER].prune_in_channels
prune_multihead_attention_out_channels = PrunerBox[ops.OPTYPE.MHA].prune_out_channels
prune_multihead_attention_in_channels = PrunerBox[ops.OPTYPE.MHA].prune_in_channels
prune_lstm_out_channels = PrunerBox[ops.OPTYPE.LSTM].prune_out_channels
prune_lstm_in_channels = PrunerBox[ops.OPTYPE.LSTM].prune_in_channels
prune_groupnorm_out_channels = PrunerBox[ops.OPTYPE.GN].prune_out_channels
prune_groupnorm_in_channels = PrunerBox[ops.OPTYPE.GN].prune_in_channels
prune_instancenorm_out_channels = PrunerBox[ops.OPTYPE.IN].prune_out_channels
prune_instancenorm_in_channels = PrunerBox[ops.OPTYPE.IN].prune_in_channels