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Shashank Suhas
seminar-breakout
Commits
0fe3f52b
Commit
0fe3f52b
authored
Dec 18, 2016
by
Yuxin Wu
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README.md
README.md
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examples/README.md
examples/README.md
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tensorpack/dataflow/dataset/ilsvrc.py
tensorpack/dataflow/dataset/ilsvrc.py
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README.md
View file @
0fe3f52b
# tensorpack
Neural Network Toolbox on TensorFlow
See some
[
examples
](
examples
)
to learn about the framework.
They're not only for demonstration of the framework -- you can train them and reproduce the results in papers.
+
[
DoReFa-Net: training binary / low bitwidth CNN on ImageNet
](
examples/DoReFa-Net
)
+
[
ResNet for ImageNet/Cifar10/SVHN classification
](
examples/ResNet
)
+
[
InceptionV3 on ImageNet
](
examples/Inception/inceptionv3.py
)
+
[
Fully-convolutional Network for Holistically-Nested Edge Detection(HED)
](
examples/HED
)
+
[
Spatial Transformer Network on MNIST addition
](
examples/SpatialTransformer
)
+
[
Generative Adversarial Network(GAN) variants, including DCGAN, Image2Image, InfoGAN
](
examples/GAN
)
+
[
Deep Q-Network(DQN) variants on Atari games
](
examples/Atari2600
)
+
[
Asynchronous Advantage Actor-Critic(A3C) with demos on OpenAI Gym
](
examples/OpenAIGym
)
+
[
LSTM-CTC for speech recognition
](
examples/TIMIT
)
+
[
char-RNN language model
](
examples/char-rnn
)
See some
[
examples
](
examples
)
to learn about the framework:
### Vision:
+
[
DoReFa-Net: training binary / low-bitwidth CNN on ImageNet
](
DoReFa-Net
)
+
[
ResNet for ImageNet/Cifar10/SVHN
](
ResNet
)
+
[
InceptionV3 on ImageNet
](
Inception/inceptionv3.py
)
+
[
Fully-convolutional Network for Holistically-Nested Edge Detection(HED)
](
HED
)
+
[
Spatial Transformer Networks on MNIST addition
](
SpatialTransformer
)
### Reinforcement Learning:
+
[
Deep Q-Network(DQN) variants on Atari games
](
Atari2600
)
+
[
Asynchronous Advantage Actor-Critic(A3C) with demos on OpenAI Gym
](
OpenAIGym
)
### Unsupervised Learning:
+
[
Several Generative Adversarial Network(GAN) variants, including DCGAN, Image2Image, InfoGAN
](
examples/GAN
)
### Speech / NLP:
+
[
LSTM-CTC for speech recognition
](
TIMIT
)
+
[
char-rnn for fun
](
char-rnn
)
The examples are not only for demonstration of the framework -- you can train them and reproduce the results in papers.
## Features:
...
...
examples/README.md
View file @
0fe3f52b
...
...
@@ -6,7 +6,7 @@ Training examples with __reproducible__ and meaningful performance.
## Vision:
+
[
An illustrative mnist example with explanation of the framework
](
mnist-convnet.py
)
+
[
A tiny SVHN ConvNet with 97.8% accuracy
](
svhn-digit-convnet.py
)
+
[
DoReFa-Net: binary / low-bitwidth CNN on ImageNet
](
DoReFa-Net
)
+
[
DoReFa-Net:
training
binary / low-bitwidth CNN on ImageNet
](
DoReFa-Net
)
+
[
ResNet for ImageNet/Cifar10/SVHN
](
ResNet
)
+
[
Inception-BN with 71% accuracy
](
Inception/inception-bn.py
)
+
[
InceptionV3 with 74% accuracy (similar to the official code)
](
Inception/inceptionv3.py
)
...
...
@@ -24,3 +24,11 @@ Training examples with __reproducible__ and meaningful performance.
## Speech / NLP:
+
[
LSTM-CTC for speech recognition
](
TIMIT
)
+
[
char-rnn for fun
](
char-rnn
)
Note to contributors:
We have a high bar for examples. It needs to satisfy one of the following:
+
Reproduce performance of a published or well-known paper.
+
Get state-of-the-art performance on some task.
+
Illustrate a new way of using the library that are currently not covered.
tensorpack/dataflow/dataset/ilsvrc.py
View file @
0fe3f52b
...
...
@@ -68,6 +68,7 @@ class ILSVRCMeta(object):
for
line
in
f
.
readlines
():
name
,
cls
=
line
.
strip
()
.
split
()
ret
.
append
((
name
,
int
(
cls
)))
assert
len
(
ret
)
return
ret
def
get_per_pixel_mean
(
self
,
size
=
None
):
...
...
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