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A pytorch toolkit for structured neural network pruning and layer dependency maintaining.

Project description

Torch-Pruning

A pytorch toolkit for structured neural network pruning and layer dependency maintaining

This tool will automatically detect and handle layer dependencies during pruning. It is able to handle various network architectures such as DenseNet, ResNet, and Inception. See examples/test_models.py for more details.

Known Issues: Conv with group>1 is not supported yet.

Dependency Visualization Example
Conv-Conv AlexNet
Conv-FC (Global Pooling or Flatten) ResNet, VGG
Skip Connection ResNet
Concatenation DenseNet, ASPP

Installation

pip install torch_pruning

Quickstart

Pruning with DependencyGraph

import torch
from torchvision.models import resnet18
import torch_pruning as pruning
model = resnet18(pretrained=True)
# build layer dependency for resnet18
DG = pruning.DependencyGraph()
DG.build_dependency(model, example_inputs=torch.randn(1,3,224,224))
# get a pruning plan according to the dependency graph. idxs is the indices of pruned filters.
pruning_plan = DG.get_pruning_plan( model.conv1, pruning.prune_conv, idxs=[2, 6, 9] )
print(pruning_plan)
# execute this plan (prune the model)
pruning_plan.exec()

Pruning the resnet.conv1 will affect several layers. If we print the pruning plan:

-------------
[ <DEP: prune_conv => prune_conv on conv1 (Conv2d(3, 64, kernel_size=(7, 7), stride=(2, 2), padding=(3, 3), bias=False))>, Index=[2, 6, 9], NumPruned=441]
[ <DEP: prune_conv => prune_batchnorm on bn1 (BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True))>, Index=[2, 6, 9], NumPruned=6]
[ <DEP: prune_batchnorm => _prune_elementwise_op on _ElementWiseOp()>, Index=[2, 6, 9], NumPruned=0]
[ <DEP: _prune_elementwise_op => _prune_elementwise_op on _ElementWiseOp()>, Index=[2, 6, 9], NumPruned=0]
[ <DEP: _prune_elementwise_op => prune_related_conv on layer1.0.conv1 (Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False))>, Index=[2, 6, 9], NumPruned=1728]
[ <DEP: _prune_elementwise_op => _prune_elementwise_op on _ElementWiseOp()>, Index=[2, 6, 9], NumPruned=0]
[ <DEP: _prune_elementwise_op => prune_batchnorm on layer1.0.bn2 (BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True))>, Index=[2, 6, 9], NumPruned=6]
[ <DEP: prune_batchnorm => prune_conv on layer1.0.conv2 (Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False))>, Index=[2, 6, 9], NumPruned=1728]
[ <DEP: _prune_elementwise_op => _prune_elementwise_op on _ElementWiseOp()>, Index=[2, 6, 9], NumPruned=0]
[ <DEP: _prune_elementwise_op => prune_related_conv on layer1.1.conv1 (Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False))>, Index=[2, 6, 9], NumPruned=1728]
[ <DEP: _prune_elementwise_op => _prune_elementwise_op on _ElementWiseOp()>, Index=[2, 6, 9], NumPruned=0]
[ <DEP: _prune_elementwise_op => prune_batchnorm on layer1.1.bn2 (BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True))>, Index=[2, 6, 9], NumPruned=6]
[ <DEP: prune_batchnorm => prune_conv on layer1.1.conv2 (Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False))>, Index=[2, 6, 9], NumPruned=1728]
[ <DEP: _prune_elementwise_op => _prune_elementwise_op on _ElementWiseOp()>, Index=[2, 6, 9], NumPruned=0]
[ <DEP: _prune_elementwise_op => prune_related_conv on layer2.0.conv1 (Conv2d(64, 128, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False))>, Index=[2, 6, 9], NumPruned=3456]
[ <DEP: _prune_elementwise_op => prune_related_conv on layer2.0.downsample.0 (Conv2d(64, 128, kernel_size=(1, 1), stride=(2, 2), bias=False))>, Index=[2, 6, 9], NumPruned=384]
11211 parameters will be pruned
-------------

Low-level pruning functions

You have to manually handle the broken dependencies without DependencyGraph.

See examples/example_pruning_fn.py for more details about pruning functions.

pruning.prune_conv( model.conv1, idxs=[2,6,9] )

# fix the broken dependencies manually
pruning.prune_batchnorm( model.bn1, idxs=[2,6,9] )
pruning.prune_related_conv( model.layer2[0].conv1, idxs=[2,6,9] )
...

Layer Dependency

A Simple Case

More Complicated Cases

the layer dependency becomes much more complicated when the model contains skip connections or concatenations.

Residual Block:

Concatenation:

See paper Pruning Filters for Efficient ConvNets for more details.

Example: ResNet18 on Cifar10

1. Train the model

cd examples
python prune_resnet18_cifar10.py --mode train # 11.1M, Acc=0.9248

2. Pruning and fintuning

python prune_resnet18_cifar10.py --mode prune --round 1 --total_epochs 30 --step_size 20 # 4.5M, Acc=0.9229
python prune_resnet18_cifar10.py --mode prune --round 2 --total_epochs 30 --step_size 20 # 1.9M, Acc=0.9207
python prune_resnet18_cifar10.py --mode prune --round 3 --total_epochs 30 --step_size 20 # 0.8M, Acc=0.9176
python prune_resnet18_cifar10.py --mode prune --round 4 --total_epochs 30 --step_size 20 # 0.4M, Acc=0.9102
python prune_resnet18_cifar10.py --mode prune --round 5 --total_epochs 30 --step_size 20 # 0.2M, Acc=0.9011
...

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