## Introduction to TensorFlow Variables: Creation, Initialization

This tutorial deals with defining and initializing TensorFlow variables.

## Introduction

Definign `variables`

is necessary because the hold the parameter. Without having parameters, training, updating, saving, restoring and any other operations cannot be performed. The defined variables in TensorFlow are just tensors with certain shapes and types. The tensors must be initialized with values to become valid. In this tutorial, we are going to explain how to `define`

and `initialize`

variables. The source code is available on the dedicated GitHub repository.

## Creating variables

For variable generation, the class of tf.Variable() will be used. When we define a variable, we basically pass a `tensor`

and its `value`

to the graph. Basically the following will happen:

- A
`variable`

tensor that holds a value will be pass to the graph.- By using tf.assign, an initializer set initial variable value.

Some arbitrary variables can be defined as follows:

import tensorflow as tf from tensorflow.python.framework import ops ####################################### ######## Defining Variables ########### ####################################### # Create three variables with some default values. weights = tf.Variable(tf.random_normal([2, 3], stddev=0.1), name="weights") biases = tf.Variable(tf.zeros([3]), name="biases") custom_variable = tf.Variable(tf.zeros([3]), name="custom") # Get all the variables' tensors and store them in a list. all_variables_list = ops.get_collection(ops.GraphKeys.GLOBAL_VARIABLES)

In the above script, **line 15** gets the list of all defined variables from the defined graph. The "name" key, define a specific name for each variable on the graph

## Initialization

`Initializers`

of the variables must be run before all other operations in the model. For an analogy, we can consider the starter of the car. Instead of running an initializer, variables can be `restored`

too from saved models such as a checkpoint file. Variables can be initialized globally, specifically, or from other variables. We investigate different choices in the subsequent sections.

### Initializing Specific Variables

By using tf.variables_initializer, we can explicitly command the TensorFlow to only initialize certain variable. The script is as follows

:# "variable_list_custom" is the list of variables that we want to initialize. variable_list_custom = [weights, custom_variable] # The initializer init_custom_op = tf.variables_initializer(var_list=all_variables_list)

Noted that custom initialization does not mean that we don't need to initialize other variables! All variables that some operations will be done upon them over the graph, must be initialized or restored from saved variables. This only let's us to realize how we can initialize specific variables by hand.

### Golobal variable initialization

All variables can be initialized at once using the tf.global_variables_initializer(). This op must be run after the model being fully constructed. The script is as below:

# Method-1 # Add an op to initialize the variables. init_all_op = tf.global_variables_initializer() # Method-2 init_all_op = tf.variables_initializer(var_list=all_variables_list)

Both the above methods are identical. We only provide the second one to demonstrate that the `tf.global_variables_initializer()`

is nothing but `tf.variables_initializer`

when you yield all the variables as the its input argument.

### Initilization of a variables using other existing variables

New variables can be initialized using other existing variables' initial values by taking the values using initialized_value().

# Create another variable with the same value as 'weights'. WeightsNew = tf.Variable(weights.initialized_value(), name="WeightsNew") # Now, the variable must be initialized. init_WeightsNew_op = tf.variables_initializer(var_list=[WeightsNew])

As it can be seen from the above script, the `WeightsNew`

variable is initialized with the values of the `weights`

predefined value.

## Running the session

All we did so far was to define the initilizers' ops and put them on the graph. In order to truly initialize variables, the defined initializers' ops must be run in the session. The script is as follows:

with tf.Session() as sess: # Run the initializer operation. sess.run(init_all_op) sess.run(init_custom_op) sess.run(init_WeightsNew_op)

Each of the initializers has been run separated using a session.

## Summary

In this tutorial, we walked through the variable creation and initialization. The global, custom and inherited variable initialization have been investigated. In the future posts, we investigate how to save and restore the variables. Restoring a variable eliminate the necessity of its initialization.