# TensorFlow Examples

This tutorial was designed for easily diving into TensorFlow, through examples. For readability, it includes both notebooks and source codes with explanation, for both TF v1 & v2.

It is suitable for beginners who want to find clear and concise examples about TensorFlow. Besides the traditional 'raw' TensorFlow implementations, you can also find the latest TensorFlow API practices (such as `layers`

, `estimator`

, `dataset`

, ...).

**Update (04/03/2019):** Starting to add TensorFlow v2 examples! (more coming soon).

*If you are using older TensorFlow version (0.11 and under), please take a look here.*

## Tutorial index

#### 0 - Prerequisite

#### 1 - Introduction

**Hello World**(notebook) (code). Very simple example to learn how to print "hello world" using TensorFlow.**Basic Operations**(notebook) (code). A simple example that cover TensorFlow basic operations.**TensorFlow Eager API basics**(notebook) (code). Get started with TensorFlow's Eager API.

#### 2 - Basic Models

**Linear Regression**(notebook) (code). Implement a Linear Regression with TensorFlow.**Linear Regression (eager api)**(notebook) (code). Implement a Linear Regression using TensorFlow's Eager API.**Logistic Regression**(notebook) (code). Implement a Logistic Regression with TensorFlow.**Logistic Regression (eager api)**(notebook) (code). Implement a Logistic Regression using TensorFlow's Eager API.**Nearest Neighbor**(notebook) (code). Implement Nearest Neighbor algorithm with TensorFlow.**K-Means**(notebook) (code). Build a K-Means classifier with TensorFlow.**Random Forest**(notebook) (code). Build a Random Forest classifier with TensorFlow.**Gradient Boosted Decision Tree (GBDT)**(notebook) (code). Build a Gradient Boosted Decision Tree (GBDT) with TensorFlow.**Word2Vec (Word Embedding)**(notebook) (code). Build a Word Embedding Model (Word2Vec) from Wikipedia data, with TensorFlow.

#### 3 - Neural Networks

##### Supervised

**Simple Neural Network**(notebook) (code). Build a simple neural network (a.k.a Multi-layer Perceptron) to classify MNIST digits dataset. Raw TensorFlow implementation.**Simple Neural Network (tf.layers/estimator api)**(notebook) (code). Use TensorFlow 'layers' and 'estimator' API to build a simple neural network (a.k.a Multi-layer Perceptron) to classify MNIST digits dataset.**Simple Neural Network (eager api)**(notebook) (code). Use TensorFlow Eager API to build a simple neural network (a.k.a Multi-layer Perceptron) to classify MNIST digits dataset.**Convolutional Neural Network**(notebook) (code). Build a convolutional neural network to classify MNIST digits dataset. Raw TensorFlow implementation.**Convolutional Neural Network (tf.layers/estimator api)**(notebook) (code). Use TensorFlow 'layers' and 'estimator' API to build a convolutional neural network to classify MNIST digits dataset.**Recurrent Neural Network (LSTM)**(notebook) (code). Build a recurrent neural network (LSTM) to classify MNIST digits dataset.**Bi-directional Recurrent Neural Network (LSTM)**(notebook) (code). Build a bi-directional recurrent neural network (LSTM) to classify MNIST digits dataset.**Dynamic Recurrent Neural Network (LSTM)**(notebook) (code). Build a recurrent neural network (LSTM) that performs dynamic calculation to classify sequences of different length.

##### Unsupervised

**Auto-Encoder**(notebook) (code). Build an auto-encoder to encode an image to a lower dimension and re-construct it.**Variational Auto-Encoder**(notebook) (code). Build a variational auto-encoder (VAE), to encode and generate images from noise.**GAN (Generative Adversarial Networks)**(notebook) (code). Build a Generative Adversarial Network (GAN) to generate images from noise.**DCGAN (Deep Convolutional Generative Adversarial Networks)**(notebook) (code). Build a Deep Convolutional Generative Adversarial Network (DCGAN) to generate images from noise.

#### 4 - Utilities

**Save and Restore a model**(notebook) (code). Save and Restore a model with TensorFlow.**Tensorboard - Graph and loss visualization**(notebook) (code). Use Tensorboard to visualize the computation Graph and plot the loss.**Tensorboard - Advanced visualization**(notebook) (code). Going deeper into Tensorboard; visualize the variables, gradients, and more...

#### 5 - Data Management

**Build an image dataset**(notebook) (code). Build your own images dataset with TensorFlow data queues, from image folders or a dataset file.**TensorFlow Dataset API**(notebook) (code). Introducing TensorFlow Dataset API for optimizing the input data pipeline.

#### 6 - Multi GPU

**Basic Operations on multi-GPU**(notebook) (code). A simple example to introduce multi-GPU in TensorFlow.**Train a Neural Network on multi-GPU**(notebook) (code). A clear and simple TensorFlow implementation to train a convolutional neural network on multiple GPUs.

## TensorFlow 2.0

The tutorial index for TF v2 is available here: TensorFlow 2.0 Examples.

## Dataset

Some examples require MNIST dataset for training and testing. Don't worry, this dataset will automatically be downloaded when running examples. MNIST is a database of handwritten digits, for a quick description of that dataset, you can check this notebook.

Official Website: http://yann.lecun.com/exdb/mnist/.

## Installation

To download all the examples, simply clone this repository:

```
git clone https://github.com/aymericdamien/TensorFlow-Examples
```

To run them, you also need the latest version of TensorFlow. To install it:

```
pip install tensorflow
```

or (with GPU support):

```
pip install tensorflow_gpu
```

For more details about TensorFlow installation, you can check TensorFlow Installation Guide

## More Examples

The following examples are coming from TFLearn, a library that provides a simplified interface for TensorFlow. You can have a look, there are many examples and pre-built operations and layers.

### Tutorials

- TFLearn Quickstart. Learn the basics of TFLearn through a concrete machine learning task. Build and train a deep neural network classifier.

### Examples

- TFLearn Examples. A large collection of examples using TFLearn.