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<div> <h1 style="text-align: center;">Deep Learning with Keras and Tensorflow</h1> <img style="text-align: left" src="https://blog.keras.io/img/keras-tensorflow-logo.jpg" width="15%" /> <div> <br>Author: Valerio Maggio
Contacts:
<table style="border: 0px; display: inline-table"> <tbody> <tr style="border: 0px;"> <td style="border: 0px;"> <img src="imgs/twitter_small.png" style="display: inline-block;" /> <a href="http://twitter.com/leriomaggio" target="_blank">@leriomaggio</a> </td> <td style="border: 0px;"> <img src="imgs/linkedin_small.png" style="display: inline-block;" /> <a href="it.linkedin.com/in/valeriomaggio" target="_blank">valeriomaggio</a> </td> <td style="border: 0px;"> <img src="imgs/gmail_small.png" style="display: inline-block;" /> valeriomaggio_at_gmail </td> </tr> </tbody> </table>
git clone https://github.com/leriomaggio/deep-learning-keras-tensorflow.git
Table of Contents
-
Part I: Introduction
- Intro to Artificial Neural Networks
- Perceptron and MLP
- naive pure-Python implementation
- fast forward, sgd, backprop
- Introduction to Deep Learning Frameworks
- Intro to Theano
- Intro to Tensorflow
- Intro to Keras
- Overview and main features
- Overview of the
core
layers - Multi-Layer Perceptron and Fully Connected
- Examples with
keras.models.Sequential
andDense
- Examples with
- Keras Backend
- Intro to Artificial Neural Networks
-
Part II: Supervised Learning
- Fully Connected Networks and Embeddings
- Intro to MNIST Dataset
- Hidden Leayer Representation and Embeddings
- Convolutional Neural Networks
-
meaning of convolutional filters
- examples from ImageNet
-
Visualising ConvNets
-
Advanced CNN
- Dropout
- MaxPooling
- Batch Normalisation
-
HandsOn: MNIST Dataset
- FC and MNIST
- CNN and MNIST
-
Deep Convolutional Neural Networks with Keras (ref:
keras.applications
)- VGG16
- VGG19
- ResNet50
-
- Transfer Learning and FineTuning
- Hyperparameters Optimisation
- Fully Connected Networks and Embeddings
-
Part III: Unsupervised Learning
- AutoEncoders and Embeddings
- AutoEncoders and MNIST
- word2vec and doc2vec (gensim) with
keras.datasets
- word2vec and CNN
- word2vec and doc2vec (gensim) with
-
Part IV: Recurrent Neural Networks
- Recurrent Neural Network in Keras
SimpleRNN
,LSTM
,GRU
- LSTM for Sentence Generation
- Recurrent Neural Network in Keras
-
PartV: Additional Materials:
- Custom Layers in Keras
- Multi modal Network Topologies with Keras
Requirements
This tutorial requires the following packages:
- Python version 3.5
- Python 3.4 should be fine as well
- likely Python 2.7 would be also fine, but who knows? :P
numpy
version 1.10 or later: http://www.numpy.org/scipy
version 0.16 or later: http://www.scipy.org/matplotlib
version 1.4 or later: http://matplotlib.org/pandas
version 0.16 or later: http://pandas.pydata.orgscikit-learn
version 0.15 or later: http://scikit-learn.orgkeras
version 2.0 or later: http://keras.iotensorflow
version 1.0 or later: https://www.tensorflow.orgipython
/jupyter
version 4.0 or later, with notebook support
(Optional but recommended):
pyyaml
hdf5
andh5py
(required if you use model saving/loading functions in keras)- NVIDIA cuDNN if you have NVIDIA GPUs on your machines. https://developer.nvidia.com/rdp/cudnn-download
The easiest way to get (most) these is to use an all-in-one installer such as Anaconda from Continuum. These are available for multiple architectures.
Python Version
I'm currently running this tutorial with Python 3 on Anaconda
!python --version
Python 3.5.2
Setting the Environment
In this repository, files to re-create virtual env with conda
are provided for Linux and OSX systems,
namely deep-learning.yml
and deep-learning-osx.yml
, respectively.
To re-create the virtual environments (on Linux, for example):
conda env create -f deep-learning.yml
For OSX, just change the filename, accordingly.
Notes about Installing Theano with GPU support
NOTE: Read this section only if after pip installing theano
, it raises error in enabling the GPU support!
Since version 0.9
Theano introduced the libgpuarray
in the stable release (it was previously only available in the development version).
The goal of libgpuarray
is (from the documentation) make a common GPU ndarray (n dimensions array) that can be reused by all projects that is as future proof as possible, while keeping it easy to use for simple need/quick test.
Here are some useful tips (hopefully) I came up with to properly install and configure theano
on (Ubuntu) Linux with GPU support:
- [If you're using Anaconda]
conda install theano pygpu
should be just fine!
Sometimes it is suggested to install pygpu
using the conda-forge
channel:
conda install -c conda-forge pygpu
- [Works with both Anaconda Python or Official CPython]
-
Install
libgpuarray
from source: Step-by-step install libgpuarray user library -
Then, install
pygpu
from source: (in the same source folder)python setup.py build && python setup.py install
-
pip install theano
.
After Theano is installed:
echo "[global]
device = cuda
floatX = float32
[lib]
cnmem = 1.0" > ~/.theanorc
Installing Tensorflow
To date tensorflow
comes in two different packages, namely tensorflow
and tensorflow-gpu
, whether you want to install
the framework with CPU-only or GPU support, respectively.
For this reason, tensorflow
has not been included in the conda envs and has to be installed separately.
Tensorflow for CPU only:
pip install tensorflow
Tensorflow with GPU support:
pip install tensorflow-gpu
Note: NVIDIA Drivers and CuDNN must be installed and configured before hand. Please refer to the official Tensorflow documentation for further details.
Important Note:
All the code provided+ in this tutorial can run even if tensorflow
is not installed, and so using theano
as the (default) backend!
This is exactly the power of Keras!
Therefore, installing tensorflow
is not stricly required!
+: Apart from the 1.2 Introduction to Tensorflow tutorial, of course.
Configure Keras with tensorflow
By default, Keras is configured with theano
as backend.
If you want to use tensorflow
instead, these are the simple steps to follow:
- Create the
keras.json
(if it does not exist):
touch $HOME/.keras/keras.json
- Copy the following content into the file:
{
"epsilon": 1e-07,
"backend": "tensorflow",
"floatx": "float32",
"image_data_format": "channels_last"
}
- Verify it is properly configured:
!cat ~/.keras/keras.json
{
"epsilon": 1e-07,
"backend": "tensorflow",
"floatx": "float32",
"image_data_format": "channels_last"
}
Test if everything is up&running
1. Check import
import numpy as np
import scipy as sp
import pandas as pd
import matplotlib.pyplot as plt
import sklearn
import keras
Using TensorFlow backend.
2. Check installed Versions
import numpy
print('numpy:', numpy.__version__)
import scipy
print('scipy:', scipy.__version__)
import matplotlib
print('matplotlib:', matplotlib.__version__)
import IPython
print('iPython:', IPython.__version__)
import sklearn
print('scikit-learn:', sklearn.__version__)
numpy: 1.11.1
scipy: 0.18.0
matplotlib: 1.5.2
iPython: 5.1.0
scikit-learn: 0.18
import keras
print('keras: ', keras.__version__)
# optional
import theano
print('Theano: ', theano.__version__)
import tensorflow as tf
print('Tensorflow: ', tf.__version__)
keras: 2.0.2
Theano: 0.9.0
Tensorflow: 1.0.1
<br>
<h1 style="text-align: center;">If everything worked till down here, you're ready to start!</h1>