mirror of
https://github.com/wassname/torchsummaryX.git
synced 2026-06-27 16:47:38 +08:00
Update README.md
This commit is contained in:
@@ -36,18 +36,21 @@ class Net(nn.Module):
|
||||
summary(Net(), torch.zeros((1, 1, 28, 28)))
|
||||
```
|
||||
```
|
||||
========================================================================
|
||||
Kernel Shape Output Shape Params (K) Mult-Adds (M)
|
||||
=================================================================
|
||||
Kernel Shape Output Shape Params Mult-Adds
|
||||
Layer
|
||||
0_conv1 [1, 10, 5, 5] [1, 10, 24, 24] 0.26 0.144
|
||||
1_conv2 [10, 20, 5, 5] [1, 20, 8, 8] 5.02 0.32
|
||||
2_conv2_drop - [1, 20, 8, 8] - -
|
||||
3_fc1 [320, 50] [1, 50] 16.05 0.016
|
||||
4_fc2 [50, 10] [1, 10] 0.51 0.0005
|
||||
------------------------------------------------------------------------
|
||||
Params (K): 21.84
|
||||
Mult-Adds (M): 0.4805
|
||||
========================================================================
|
||||
0_conv1 [1, 10, 5, 5] [1, 10, 24, 24] 260.0 144.0k
|
||||
1_conv2 [10, 20, 5, 5] [1, 20, 8, 8] 5.02k 320.0k
|
||||
2_conv2_drop - [1, 20, 8, 8] - -
|
||||
3_fc1 [320, 50] [1, 50] 16.05k 16.0k
|
||||
4_fc2 [50, 10] [1, 10] 510.0 500.0
|
||||
-----------------------------------------------------------------
|
||||
Totals
|
||||
Total params 21.84k
|
||||
Trainable params 21.84k
|
||||
Non-trainable params 0.0
|
||||
Mult-Adds 480.5k
|
||||
=================================================================
|
||||
```
|
||||
|
||||
RNN
|
||||
@@ -74,16 +77,19 @@ inputs = torch.zeros((100, 1), dtype=torch.long) # [length, batch_size]
|
||||
summary(Net(), inputs)
|
||||
```
|
||||
```
|
||||
==================================================================
|
||||
Kernel Shape Output Shape Params (K) Mult-Adds (M)
|
||||
===========================================================
|
||||
Kernel Shape Output Shape Params Mult-Adds
|
||||
Layer
|
||||
0_embedding [300, 20] [100, 1, 300] 6.00 0.006000
|
||||
1_encoder - [100, 1, 512] 3768.32 3.760128
|
||||
2_decoder [512, 20] [100, 1, 20] 10.26 0.010240
|
||||
------------------------------------------------------------------
|
||||
Params (K): 3784.5800000000004
|
||||
Mult-Adds (M): 3.7763679999999997
|
||||
==================================================================
|
||||
0_embedding [300, 20] [100, 1, 300] 6000 6000
|
||||
1_encoder - [100, 1, 512] 3768320 3760128
|
||||
2_decoder [512, 20] [100, 1, 20] 10260 10240
|
||||
-----------------------------------------------------------
|
||||
Totals
|
||||
Total params 3784580
|
||||
Trainable params 3784580
|
||||
Non-trainable params 0
|
||||
Mult-Adds 3776368
|
||||
===========================================================
|
||||
```
|
||||
|
||||
Recursive NN
|
||||
@@ -100,15 +106,18 @@ class Net(nn.Module):
|
||||
summary(Net(), torch.zeros((1, 64, 28, 28)))
|
||||
```
|
||||
```
|
||||
===================================================================
|
||||
Kernel Shape Output Shape Params (K) Mult-Adds (M)
|
||||
============================================================
|
||||
Kernel Shape Output Shape Params Mult-Adds
|
||||
Layer
|
||||
0_conv1 [64, 64, 3, 3] [1, 64, 28, 28] 36.928 28.901376
|
||||
1_conv1 [64, 64, 3, 3] [1, 64, 28, 28] - 28.901376
|
||||
-------------------------------------------------------------------
|
||||
Params (K): 36.928
|
||||
Mult-Adds (M): 57.802752
|
||||
===================================================================
|
||||
0_conv1 [64, 64, 3, 3] [1, 64, 28, 28] 36.928k 28901376
|
||||
1_conv1 [64, 64, 3, 3] [1, 64, 28, 28] - 28901376
|
||||
------------------------------------------------------------
|
||||
Totals
|
||||
Total params 36.928k
|
||||
Trainable params 36.928k
|
||||
Non-trainable params 0.0
|
||||
Mult-Adds 57.802752M
|
||||
============================================================
|
||||
```
|
||||
|
||||
Multiple arguments
|
||||
@@ -125,18 +134,6 @@ class Net(nn.Module):
|
||||
summary(Net(), torch.zeros((1, 64, 28, 28)), "args1", args2="args2")
|
||||
```
|
||||
|
||||
```
|
||||
===================================================================
|
||||
Kernel Shape Output Shape Params (K) Mult-Adds (M)
|
||||
Layer
|
||||
0_conv1 [64, 64, 3, 3] [1, 64, 28, 28] 36.928 28.901376
|
||||
1_conv1 [64, 64, 3, 3] [1, 64, 28, 28] - 28.901376
|
||||
-------------------------------------------------------------------
|
||||
Params (K): 36.928
|
||||
Mult-Adds (M): 57.802752
|
||||
===================================================================
|
||||
```
|
||||
|
||||
Large models with long layer names
|
||||
```python
|
||||
import torchvision
|
||||
@@ -144,132 +141,137 @@ model = torchvision.models.resnet18()
|
||||
summary(model, torch.zeros(4, 3, 224, 224))
|
||||
```
|
||||
```
|
||||
Layer
|
||||
0_conv1 [3, 64, 7, 7] [4, 64, 112, 112]
|
||||
1_bn1 [64] [4, 64, 112, 112]
|
||||
2_relu - [4, 64, 112, 112]
|
||||
3_maxpool - [4, 64, 56, 56]
|
||||
4_layer1.0.Conv2d_conv1 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
5_layer1.0.BatchNorm2d_bn1 [64] [4, 64, 56, 56]
|
||||
6_layer1.0.ReLU_relu - [4, 64, 56, 56]
|
||||
7_layer1.0.Conv2d_conv2 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
8_layer1.0.BatchNorm2d_bn2 [64] [4, 64, 56, 56]
|
||||
9_layer1.0.ReLU_relu - [4, 64, 56, 56]
|
||||
10_layer1.1.Conv2d_conv1 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
11_layer1.1.BatchNorm2d_bn1 [64] [4, 64, 56, 56]
|
||||
12_layer1.1.ReLU_relu - [4, 64, 56, 56]
|
||||
13_layer1.1.Conv2d_conv2 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
14_layer1.1.BatchNorm2d_bn2 [64] [4, 64, 56, 56]
|
||||
15_layer1.1.ReLU_relu - [4, 64, 56, 56]
|
||||
16_layer2.0.Conv2d_conv1 [64, 128, 3, 3] [4, 128, 28, 28]
|
||||
17_layer2.0.BatchNorm2d_bn1 [128] [4, 128, 28, 28]
|
||||
18_layer2.0.ReLU_relu - [4, 128, 28, 28]
|
||||
19_layer2.0.Conv2d_conv2 [128, 128, 3, 3] [4, 128, 28, 28]
|
||||
20_layer2.0.BatchNorm2d_bn2 [128] [4, 128, 28, 28]
|
||||
21_layer2.0.downsample.Conv2d_0 [64, 128, 1, 1] [4, 128, 28, 28]
|
||||
22_layer2.0.downsample.BatchNorm2d_1 [128] [4, 128, 28, 28]
|
||||
23_layer2.0.ReLU_relu - [4, 128, 28, 28]
|
||||
24_layer2.1.Conv2d_conv1 [128, 128, 3, 3] [4, 128, 28, 28]
|
||||
25_layer2.1.BatchNorm2d_bn1 [128] [4, 128, 28, 28]
|
||||
26_layer2.1.ReLU_relu - [4, 128, 28, 28]
|
||||
27_layer2.1.Conv2d_conv2 [128, 128, 3, 3] [4, 128, 28, 28]
|
||||
28_layer2.1.BatchNorm2d_bn2 [128] [4, 128, 28, 28]
|
||||
29_layer2.1.ReLU_relu - [4, 128, 28, 28]
|
||||
30_layer3.0.Conv2d_conv1 [128, 256, 3, 3] [4, 256, 14, 14]
|
||||
31_layer3.0.BatchNorm2d_bn1 [256] [4, 256, 14, 14]
|
||||
32_layer3.0.ReLU_relu - [4, 256, 14, 14]
|
||||
33_layer3.0.Conv2d_conv2 [256, 256, 3, 3] [4, 256, 14, 14]
|
||||
34_layer3.0.BatchNorm2d_bn2 [256] [4, 256, 14, 14]
|
||||
35_layer3.0.downsample.Conv2d_0 [128, 256, 1, 1] [4, 256, 14, 14]
|
||||
36_layer3.0.downsample.BatchNorm2d_1 [256] [4, 256, 14, 14]
|
||||
37_layer3.0.ReLU_relu - [4, 256, 14, 14]
|
||||
38_layer3.1.Conv2d_conv1 [256, 256, 3, 3] [4, 256, 14, 14]
|
||||
39_layer3.1.BatchNorm2d_bn1 [256] [4, 256, 14, 14]
|
||||
40_layer3.1.ReLU_relu - [4, 256, 14, 14]
|
||||
41_layer3.1.Conv2d_conv2 [256, 256, 3, 3] [4, 256, 14, 14]
|
||||
42_layer3.1.BatchNorm2d_bn2 [256] [4, 256, 14, 14]
|
||||
43_layer3.1.ReLU_relu - [4, 256, 14, 14]
|
||||
44_layer4.0.Conv2d_conv1 [256, 512, 3, 3] [4, 512, 7, 7]
|
||||
45_layer4.0.BatchNorm2d_bn1 [512] [4, 512, 7, 7]
|
||||
46_layer4.0.ReLU_relu - [4, 512, 7, 7]
|
||||
47_layer4.0.Conv2d_conv2 [512, 512, 3, 3] [4, 512, 7, 7]
|
||||
48_layer4.0.BatchNorm2d_bn2 [512] [4, 512, 7, 7]
|
||||
49_layer4.0.downsample.Conv2d_0 [256, 512, 1, 1] [4, 512, 7, 7]
|
||||
50_layer4.0.downsample.BatchNorm2d_1 [512] [4, 512, 7, 7]
|
||||
51_layer4.0.ReLU_relu - [4, 512, 7, 7]
|
||||
52_layer4.1.Conv2d_conv1 [512, 512, 3, 3] [4, 512, 7, 7]
|
||||
53_layer4.1.BatchNorm2d_bn1 [512] [4, 512, 7, 7]
|
||||
54_layer4.1.ReLU_relu - [4, 512, 7, 7]
|
||||
55_layer4.1.Conv2d_conv2 [512, 512, 3, 3] [4, 512, 7, 7]
|
||||
56_layer4.1.BatchNorm2d_bn2 [512] [4, 512, 7, 7]
|
||||
57_layer4.1.ReLU_relu - [4, 512, 7, 7]
|
||||
58_avgpool - [4, 512, 1, 1]
|
||||
59_fc [512, 1000] [4, 1000]
|
||||
=================================================================================================
|
||||
Kernel Shape Output Shape \
|
||||
Layer
|
||||
0_conv1 [3, 64, 7, 7] [4, 64, 112, 112]
|
||||
1_bn1 [64] [4, 64, 112, 112]
|
||||
2_relu - [4, 64, 112, 112]
|
||||
3_maxpool - [4, 64, 56, 56]
|
||||
4_layer1.0.Conv2d_conv1 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
5_layer1.0.BatchNorm2d_bn1 [64] [4, 64, 56, 56]
|
||||
6_layer1.0.ReLU_relu - [4, 64, 56, 56]
|
||||
7_layer1.0.Conv2d_conv2 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
8_layer1.0.BatchNorm2d_bn2 [64] [4, 64, 56, 56]
|
||||
9_layer1.0.ReLU_relu - [4, 64, 56, 56]
|
||||
10_layer1.1.Conv2d_conv1 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
11_layer1.1.BatchNorm2d_bn1 [64] [4, 64, 56, 56]
|
||||
12_layer1.1.ReLU_relu - [4, 64, 56, 56]
|
||||
13_layer1.1.Conv2d_conv2 [64, 64, 3, 3] [4, 64, 56, 56]
|
||||
14_layer1.1.BatchNorm2d_bn2 [64] [4, 64, 56, 56]
|
||||
15_layer1.1.ReLU_relu - [4, 64, 56, 56]
|
||||
16_layer2.0.Conv2d_conv1 [64, 128, 3, 3] [4, 128, 28, 28]
|
||||
17_layer2.0.BatchNorm2d_bn1 [128] [4, 128, 28, 28]
|
||||
18_layer2.0.ReLU_relu - [4, 128, 28, 28]
|
||||
19_layer2.0.Conv2d_conv2 [128, 128, 3, 3] [4, 128, 28, 28]
|
||||
20_layer2.0.BatchNorm2d_bn2 [128] [4, 128, 28, 28]
|
||||
21_layer2.0.downsample.Conv2d_0 [64, 128, 1, 1] [4, 128, 28, 28]
|
||||
22_layer2.0.downsample.BatchNorm2d_1 [128] [4, 128, 28, 28]
|
||||
23_layer2.0.ReLU_relu - [4, 128, 28, 28]
|
||||
24_layer2.1.Conv2d_conv1 [128, 128, 3, 3] [4, 128, 28, 28]
|
||||
25_layer2.1.BatchNorm2d_bn1 [128] [4, 128, 28, 28]
|
||||
26_layer2.1.ReLU_relu - [4, 128, 28, 28]
|
||||
27_layer2.1.Conv2d_conv2 [128, 128, 3, 3] [4, 128, 28, 28]
|
||||
28_layer2.1.BatchNorm2d_bn2 [128] [4, 128, 28, 28]
|
||||
29_layer2.1.ReLU_relu - [4, 128, 28, 28]
|
||||
30_layer3.0.Conv2d_conv1 [128, 256, 3, 3] [4, 256, 14, 14]
|
||||
31_layer3.0.BatchNorm2d_bn1 [256] [4, 256, 14, 14]
|
||||
32_layer3.0.ReLU_relu - [4, 256, 14, 14]
|
||||
33_layer3.0.Conv2d_conv2 [256, 256, 3, 3] [4, 256, 14, 14]
|
||||
34_layer3.0.BatchNorm2d_bn2 [256] [4, 256, 14, 14]
|
||||
35_layer3.0.downsample.Conv2d_0 [128, 256, 1, 1] [4, 256, 14, 14]
|
||||
36_layer3.0.downsample.BatchNorm2d_1 [256] [4, 256, 14, 14]
|
||||
37_layer3.0.ReLU_relu - [4, 256, 14, 14]
|
||||
38_layer3.1.Conv2d_conv1 [256, 256, 3, 3] [4, 256, 14, 14]
|
||||
39_layer3.1.BatchNorm2d_bn1 [256] [4, 256, 14, 14]
|
||||
40_layer3.1.ReLU_relu - [4, 256, 14, 14]
|
||||
41_layer3.1.Conv2d_conv2 [256, 256, 3, 3] [4, 256, 14, 14]
|
||||
42_layer3.1.BatchNorm2d_bn2 [256] [4, 256, 14, 14]
|
||||
43_layer3.1.ReLU_relu - [4, 256, 14, 14]
|
||||
44_layer4.0.Conv2d_conv1 [256, 512, 3, 3] [4, 512, 7, 7]
|
||||
45_layer4.0.BatchNorm2d_bn1 [512] [4, 512, 7, 7]
|
||||
46_layer4.0.ReLU_relu - [4, 512, 7, 7]
|
||||
47_layer4.0.Conv2d_conv2 [512, 512, 3, 3] [4, 512, 7, 7]
|
||||
48_layer4.0.BatchNorm2d_bn2 [512] [4, 512, 7, 7]
|
||||
49_layer4.0.downsample.Conv2d_0 [256, 512, 1, 1] [4, 512, 7, 7]
|
||||
50_layer4.0.downsample.BatchNorm2d_1 [512] [4, 512, 7, 7]
|
||||
51_layer4.0.ReLU_relu - [4, 512, 7, 7]
|
||||
52_layer4.1.Conv2d_conv1 [512, 512, 3, 3] [4, 512, 7, 7]
|
||||
53_layer4.1.BatchNorm2d_bn1 [512] [4, 512, 7, 7]
|
||||
54_layer4.1.ReLU_relu - [4, 512, 7, 7]
|
||||
55_layer4.1.Conv2d_conv2 [512, 512, 3, 3] [4, 512, 7, 7]
|
||||
56_layer4.1.BatchNorm2d_bn2 [512] [4, 512, 7, 7]
|
||||
57_layer4.1.ReLU_relu - [4, 512, 7, 7]
|
||||
58_avgpool - [4, 512, 1, 1]
|
||||
59_fc [512, 1000] [4, 1000]
|
||||
|
||||
Params (K) Mult-Adds (M)
|
||||
Layer
|
||||
0_conv1 9.408 118.014
|
||||
1_bn1 0.128 6.4e-05
|
||||
2_relu - -
|
||||
3_maxpool - -
|
||||
4_layer1.0.Conv2d_conv1 36.864 115.606
|
||||
5_layer1.0.BatchNorm2d_bn1 0.128 6.4e-05
|
||||
6_layer1.0.ReLU_relu - -
|
||||
7_layer1.0.Conv2d_conv2 36.864 115.606
|
||||
8_layer1.0.BatchNorm2d_bn2 0.128 6.4e-05
|
||||
9_layer1.0.ReLU_relu - -
|
||||
10_layer1.1.Conv2d_conv1 36.864 115.606
|
||||
11_layer1.1.BatchNorm2d_bn1 0.128 6.4e-05
|
||||
12_layer1.1.ReLU_relu - -
|
||||
13_layer1.1.Conv2d_conv2 36.864 115.606
|
||||
14_layer1.1.BatchNorm2d_bn2 0.128 6.4e-05
|
||||
15_layer1.1.ReLU_relu - -
|
||||
16_layer2.0.Conv2d_conv1 73.728 57.8028
|
||||
17_layer2.0.BatchNorm2d_bn1 0.256 0.000128
|
||||
18_layer2.0.ReLU_relu - -
|
||||
19_layer2.0.Conv2d_conv2 147.456 115.606
|
||||
20_layer2.0.BatchNorm2d_bn2 0.256 0.000128
|
||||
21_layer2.0.downsample.Conv2d_0 8.192 6.42253
|
||||
22_layer2.0.downsample.BatchNorm2d_1 0.256 0.000128
|
||||
23_layer2.0.ReLU_relu - -
|
||||
24_layer2.1.Conv2d_conv1 147.456 115.606
|
||||
25_layer2.1.BatchNorm2d_bn1 0.256 0.000128
|
||||
26_layer2.1.ReLU_relu - -
|
||||
27_layer2.1.Conv2d_conv2 147.456 115.606
|
||||
28_layer2.1.BatchNorm2d_bn2 0.256 0.000128
|
||||
29_layer2.1.ReLU_relu - -
|
||||
30_layer3.0.Conv2d_conv1 294.912 57.8028
|
||||
31_layer3.0.BatchNorm2d_bn1 0.512 0.000256
|
||||
32_layer3.0.ReLU_relu - -
|
||||
33_layer3.0.Conv2d_conv2 589.824 115.606
|
||||
34_layer3.0.BatchNorm2d_bn2 0.512 0.000256
|
||||
35_layer3.0.downsample.Conv2d_0 32.768 6.42253
|
||||
36_layer3.0.downsample.BatchNorm2d_1 0.512 0.000256
|
||||
37_layer3.0.ReLU_relu - -
|
||||
38_layer3.1.Conv2d_conv1 589.824 115.606
|
||||
39_layer3.1.BatchNorm2d_bn1 0.512 0.000256
|
||||
40_layer3.1.ReLU_relu - -
|
||||
41_layer3.1.Conv2d_conv2 589.824 115.606
|
||||
42_layer3.1.BatchNorm2d_bn2 0.512 0.000256
|
||||
43_layer3.1.ReLU_relu - -
|
||||
44_layer4.0.Conv2d_conv1 1179.65 57.8028
|
||||
45_layer4.0.BatchNorm2d_bn1 1.024 0.000512
|
||||
46_layer4.0.ReLU_relu - -
|
||||
47_layer4.0.Conv2d_conv2 2359.3 115.606
|
||||
48_layer4.0.BatchNorm2d_bn2 1.024 0.000512
|
||||
49_layer4.0.downsample.Conv2d_0 131.072 6.42253
|
||||
50_layer4.0.downsample.BatchNorm2d_1 1.024 0.000512
|
||||
51_layer4.0.ReLU_relu - -
|
||||
52_layer4.1.Conv2d_conv1 2359.3 115.606
|
||||
53_layer4.1.BatchNorm2d_bn1 1.024 0.000512
|
||||
54_layer4.1.ReLU_relu - -
|
||||
55_layer4.1.Conv2d_conv2 2359.3 115.606
|
||||
56_layer4.1.BatchNorm2d_bn2 1.024 0.000512
|
||||
57_layer4.1.ReLU_relu - -
|
||||
58_avgpool - -
|
||||
59_fc 513 0.512
|
||||
----------------------------------------------------------------------------------------------------
|
||||
Params (K): 11689.511999999999
|
||||
Mult-Adds (M): 1814.0781440000007
|
||||
====================================================================================================
|
||||
Params Mult-Adds
|
||||
Layer
|
||||
0_conv1 9.408k 118.013952M
|
||||
1_bn1 128.0 64.0
|
||||
2_relu - -
|
||||
3_maxpool - -
|
||||
4_layer1.0.Conv2d_conv1 36.864k 115.605504M
|
||||
5_layer1.0.BatchNorm2d_bn1 128.0 64.0
|
||||
6_layer1.0.ReLU_relu - -
|
||||
7_layer1.0.Conv2d_conv2 36.864k 115.605504M
|
||||
8_layer1.0.BatchNorm2d_bn2 128.0 64.0
|
||||
9_layer1.0.ReLU_relu - -
|
||||
10_layer1.1.Conv2d_conv1 36.864k 115.605504M
|
||||
11_layer1.1.BatchNorm2d_bn1 128.0 64.0
|
||||
12_layer1.1.ReLU_relu - -
|
||||
13_layer1.1.Conv2d_conv2 36.864k 115.605504M
|
||||
14_layer1.1.BatchNorm2d_bn2 128.0 64.0
|
||||
15_layer1.1.ReLU_relu - -
|
||||
16_layer2.0.Conv2d_conv1 73.728k 57.802752M
|
||||
17_layer2.0.BatchNorm2d_bn1 256.0 128.0
|
||||
18_layer2.0.ReLU_relu - -
|
||||
19_layer2.0.Conv2d_conv2 147.456k 115.605504M
|
||||
20_layer2.0.BatchNorm2d_bn2 256.0 128.0
|
||||
21_layer2.0.downsample.Conv2d_0 8.192k 6.422528M
|
||||
22_layer2.0.downsample.BatchNorm2d_1 256.0 128.0
|
||||
23_layer2.0.ReLU_relu - -
|
||||
24_layer2.1.Conv2d_conv1 147.456k 115.605504M
|
||||
25_layer2.1.BatchNorm2d_bn1 256.0 128.0
|
||||
26_layer2.1.ReLU_relu - -
|
||||
27_layer2.1.Conv2d_conv2 147.456k 115.605504M
|
||||
28_layer2.1.BatchNorm2d_bn2 256.0 128.0
|
||||
29_layer2.1.ReLU_relu - -
|
||||
30_layer3.0.Conv2d_conv1 294.912k 57.802752M
|
||||
31_layer3.0.BatchNorm2d_bn1 512.0 256.0
|
||||
32_layer3.0.ReLU_relu - -
|
||||
33_layer3.0.Conv2d_conv2 589.824k 115.605504M
|
||||
34_layer3.0.BatchNorm2d_bn2 512.0 256.0
|
||||
35_layer3.0.downsample.Conv2d_0 32.768k 6.422528M
|
||||
36_layer3.0.downsample.BatchNorm2d_1 512.0 256.0
|
||||
37_layer3.0.ReLU_relu - -
|
||||
38_layer3.1.Conv2d_conv1 589.824k 115.605504M
|
||||
39_layer3.1.BatchNorm2d_bn1 512.0 256.0
|
||||
40_layer3.1.ReLU_relu - -
|
||||
41_layer3.1.Conv2d_conv2 589.824k 115.605504M
|
||||
42_layer3.1.BatchNorm2d_bn2 512.0 256.0
|
||||
43_layer3.1.ReLU_relu - -
|
||||
44_layer4.0.Conv2d_conv1 1.179648M 57.802752M
|
||||
45_layer4.0.BatchNorm2d_bn1 1.024k 512.0
|
||||
46_layer4.0.ReLU_relu - -
|
||||
47_layer4.0.Conv2d_conv2 2.359296M 115.605504M
|
||||
48_layer4.0.BatchNorm2d_bn2 1.024k 512.0
|
||||
49_layer4.0.downsample.Conv2d_0 131.072k 6.422528M
|
||||
50_layer4.0.downsample.BatchNorm2d_1 1.024k 512.0
|
||||
51_layer4.0.ReLU_relu - -
|
||||
52_layer4.1.Conv2d_conv1 2.359296M 115.605504M
|
||||
53_layer4.1.BatchNorm2d_bn1 1.024k 512.0
|
||||
54_layer4.1.ReLU_relu - -
|
||||
55_layer4.1.Conv2d_conv2 2.359296M 115.605504M
|
||||
56_layer4.1.BatchNorm2d_bn2 1.024k 512.0
|
||||
57_layer4.1.ReLU_relu - -
|
||||
58_avgpool - -
|
||||
59_fc 513.0k 512.0k
|
||||
-------------------------------------------------------------------------------------------------
|
||||
Totals
|
||||
Total params 11.689512M
|
||||
Trainable params 11.689512M
|
||||
Non-trainable params 0.0
|
||||
Mult-Adds 1.814078144G
|
||||
=================================================================================================
|
||||
```
|
||||
|
||||
Reference in New Issue
Block a user