Metadata-Version: 2.1
Name: shinnosuke-gpu
Version: 0.4.6
Summary: A keras-like API deep learning framework,realized by cupy
Home-page: https://github.com/eLeVeNnN/shinnosuke-gpu
Author: Eleven
Author-email: eleven_1111@outlook.com
Maintainer: Eleven
Maintainer-email: eleven_1111@outlook.com
License: MIT License
Platform: all
Classifier: Development Status :: 4 - Beta
Classifier: Operating System :: OS Independent
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: Implementation
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.4
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Classifier: Topic :: Software Development :: Libraries
Description-Content-Type: text/markdown
Requires-Dist: cupy
Requires-Dist: matplotlib

#Shinnosuke-GPU : Deep learning framework
##Descriptions
1. Based on Cupy(GPU version)

2. Completely realized by Python only
3. Keras-like API
4. For deep learning studying

##Features
1. Native to Python

2. Keras-like API
3. Easy to get start
4. Commonly used models are provided: Dense, Conv2D, MaxPooling2D, LSTM, SimpleRNN, etc
5. Several basic networks Examples
6. Sequential model and Functional model are implemented
7. Autograd is supported 

##Installation
Using pip:

`$ pip install shinnosuke-gpu`

##Supports

### Two model types:
1.**Sequential**

```python
from shinnosuke.models import Sequential
from shinnosuke.layers.FC import Dense

m=Sequential()

m.add(Dense(500,activation='relu',n_in=784))

m.add(Dense(10,activation='softmax'))

m.compile(optimizer='sgd',loss='sparse_categorical_crossentropy',learning_rate=0.1)

m.fit(trainX,trainy,batch_size=512,epochs=1,validation_ratio=0.)

```
2.**Model**
```python
from shinnosuke.models import Model
from shinnosuke.layers.FC import Dense
from shinnosuke.layers.Base import Input

X_input=Input(shape=(None,784))

X=Dense(500,activation='relu')(X_input)

X=Dense(10,activation='softmax')(X)

model=Model(inputs=X_input,outputs=X)

model.compile(optimizer='sgd',loss='sparse_categorical_crossentropy',learning_rate=0.1)

model.fit(trainX,trainy,batch_size=512,epochs=1,validation_ratio=0.)
```
### Two basic class:
#### - Layer:

- Dense

- Conv2D

- MaxPooling2D
- MeanPooling2D
- Activation
- Input
- Dropout
- BatchNormalization
- TimeDistributed
- SimpleRNN
- LSTM
- GRU (waiting for implemented)
- ZeroPadding2D
- Operations( includes Add, Minus, Multiply, Matmul, and so on basic operations for Layer and Node)

####- Node:

- Variable
- Constant

###Optimizers
- StochasticGradientDescent

- Momentum

- RMSprop
- AdaGrad
- AdaDelta
- Adam

Waiting for implemented more

###Objectives

- MeanSquaredError

- MeanAbsoluteError

- BinaryCrossEntropy

- SparseCategoricalCrossEntropy

- CategoricalCrossEntropy

###Activations
- Relu

- Linear

- Sigmoid
- Tanh
- Softmax

###Initializations
- Zeros

- Ones

- Uniform

- LecunUniform
- GlorotUniform
- HeUniform
- Normal
- LecunNormal
- GlorotNormal
- HeNormal
- Orthogonal

###Regularizes
waiting for implement.

###Utils
- get_batches (generate mini-batch)

- to_categorical (convert inputs to one-hot vector/matrix)
- concatenate (concatenate Nodes that have the same shape in specify axis)

- pad_sequences (pad sequences to the same length)








