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A tool to count OPs and paramters of MXNet model.

Project description

MXOP: MXNet-OpSummary

It only works for gluon yet.

Reference: THOP: PyTorch-OpCounter

Installation

  • PyPi
    pip install --index-url https://pypi.org/simple/ mxop
    
  • Github (latest)
    pip install --upgrade git+https://github.com/hey-yahei/OpSummary.MXNet.git
    

Usage

Gluon

  • Count OPs
    from mxop.gluon import count_ops
    op_counter = count_ops(net)   # net is the gluon model you want to count OPs 
    
  • Count parameters
    from mxop.gluon import count_params
    params_counter = count_params(net, input_size)   # net is the gluon model you want to count parameters
                                                     # input_size is the shape of your input 
    
  • Print summary
    from mxop.gluon import op_summary
    op_summary(net, input_size)   # net is the gluon model you want to count
                                  # input_size is the shape of your input 
    

Test

Run tests/test_gluon_utils.py to count OPs and parameters for all models in model zoo of MXNet.

Result:

Model Params(M) Multiplication(G) *Params(M) *Multiplication(G) Top1 Acc Top5 Acc
AlexNet 61.10 0.71 2.47 0.66 0.5492 0.7803
VGG11 132.86 7.61 9.22 7.49 0.6662 0.8734
VGG13 133.04 11.30 9.40 11.18 0.6774 0.8811
VGG16 138.63 15.47 14.71 15.35 0.7323 0.9132
VGG19 143.67 19.63 20.02 19.51 0.7411 0.9135
VGG11_bn 132.87 7.62 9.23 7.49 0.6859 0.8872
VGG13_bn 133.06 11.32 9.42 11.20 0.6884 0.8882
VGG16_bn 138.37 15.48 14.73 15.36 0.7310 0.9176
VGG19_bn 143.69 19.65 20.05 19.52 0.7433 0.9185
Inception_v3 23.87 5.72 21.82 5.72 0.7755 0.9364
ResNet18_v1 11.70 1.82 11.19 1.82 0.7093 0.8992
ResNet34_v1 21.81 3.67 21.3 3.67 0.7437 0.9187
ResNet50_v1 25.63 3.87 23.58 3.87 0.7647 0.9313
ResNet101_v1 44.70 7.59 42.65 7.58 0.7834 0.9401
ResNet152_v1 60.40 11.30 58.36 11.30 0.7900 0.9438
ResNet18_v2 11.70 1.82 11.18 1.82 0.7100 0.8992
ResNet34_v2 21.81 3.67 21.30 3.67 0.7440 0.9208
ResNet50_v2 25.60 4.10 23.55 4.10 0.7711 0.9343
ResNet101_v2 44.64 7.82 42.59 7.81 0.7853 0.9417
ResNet152_v2 60.33 11.54 58.28 11.53 0.7921 0.9431
DenseNet121 8.06 2.85 7.04 2.85 0.7497 0.9225
DenseNet161 28.90 7.76 26.69 7.76 0.7770 0.9380
DenseNet169 14.31 3.38 12.64 3.38 0.7617 0.9317
DenseNet201 20.24 4.32 18.32 4.31 0.7732 0.9362
MobileNet_v1_1.00 4.25 0.57 3.23 0.57 0.7105 0.9006
MobileNet_v1_0.75 2.60 0.33 1.83 0.33 0.6738 0.8782
MobileNet_v1_0.50 1.34 0.15 0.83 0.15 0.6307 0.8475
MobileNet_v1_0.25 0.48 0.04 0.22 0.04 0.5185 0.7608
MobileNet_v2_1.00 3.54 0.32 2.26 0.32 0.7192 0.9056
MobileNet_v2_0.75 2.65 0.19 1.37 0.19 0.6961 0.8895
MobileNet_v2_0.50 1.98 0.10 0.70 0.09 0.6449 0.8547
MobileNet_v2_0.25 1.53 0.03 0.25 0.03 0.5074 0.7456
SqueezeNet1_0 1.25 0.82 0.74 0.73 0.5611 0.7909
SqueezeNet1_1 1.24 0.35 0.72 0.26 0.5496 0.7817

To compare for classification models used as backbone--
*Params col shows the number of parameters for models without last several layers.
*Multiplication col shows the number of Multiplication for models without last several layers.

Parameters

Multiplication

TODO

  • Count OPs and parameters for each layer.
  • Support Symbol model for MXNet.
  • Support quantized models.

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