TensorFlow is a powerful library for doing large-scale numerical computation. One of the tasks at which it excels is implementing and training deep neural networks. In this tutorial we will learn the basic building blocks of a TensorFlow model while constructing a deep convolutional MNIST classifier.
This introduction assumes familiarity with neural networks and the MNIST dataset. If you don't have a background with them, check out the introduction for beginners.
Before we create our model, we will first load the MNIST dataset, and start a TensorFlow session.
For your convenience, we've included
a script
which automatically downloads and imports the MNIST dataset. It will create a
directory 'MNIST_data'
in which to store the data files.
import input_data
mnist = input_data.read_data_sets('MNIST_data', one_hot=True)
Here mnist
is a lightweight class which stores the training, validation, and
testing sets as NumPy arrays.
It also provides a function for iterating through data minibatches, which we
will use below.
Tensorflow relies on a highly efficient C++ backend to do its computation. The connection to this backend is called a session. The common usage for TensorFlow programs is to first create a graph and then launch it in a session.
Here we instead use the convenience InteractiveSession
class, which
makes TensorFlow more flexible about how you
structure your code.
It allows you to interleave operations which build a
computation graph
with ones that run the graph.
This is particularly convenient when working in interactive contexts like
iPython.
If you are not using an InteractiveSession
, then you should build
the entire computation graph before starting a session and launching the
graph.
import tensorflow as tf
sess = tf.InteractiveSession()
To do efficient numerical computing in Python, we typically use libraries like NumPy that do expensive operations such as matrix multiplication outside Python, using highly efficient code implemented in another language. Unfortunately, there can still be a lot of overhead from switching back to Python every operation. This overhead is especially bad if you want to run computations on GPUs or in a distributed manner, where there can be a high cost to transferring data.
TensorFlow also does its heavy lifting outside Python, but it takes things a step further to avoid this overhead. Instead of running a single expensive operation independently from Python, TensorFlow lets us describe a graph of interacting operations that run entirely outside Python. This approach is similar to that used in Theano or Torch.
The role of the Python code is therefore to build this external computation graph, and to dictate which parts of the computation graph should be run. See the Computation Graph section of Basic Usage for more detail.
In this section we will build a softmax regression model with a single linear layer. In the next section, we will extend this to the case of softmax regression with a multilayer convolutional network.
We start building the computation graph by creating nodes for the input images and target output classes.
x = tf.placeholder("float", shape=[None, 784])
y_ = tf.placeholder("float", shape=[None, 10])
Here x
and y_
aren't specific values. Rather, they are each a placeholder
-- a value that we'll input when we ask TensorFlow to run a computation.
The input images x
will consist of a 2d tensor of floating point numbers.
Here we assign it a shape
of [None, 784]
, where 784
is the dimensionality of
a single flattened MNIST image, and None
indicates that the first dimension,
corresponding to the batch size, can be of any size.
The target output classes y_
will also consist of a 2d tensor,
where each row is a one-hot 10-dimensional vector indicating
which digit class the corresponding MNIST image belongs to.
The shape
argument to placeholder
is optional, but it allows TensorFlow
to automatically catch bugs stemming from inconsistent tensor shapes.
We now define the weights W
and biases b
for our model. We could imagine treating
these like additional inputs, but TensorFlow has an even better way to handle
them: Variable
.
A Variable
is a value that lives in TensorFlow's computation graph.
It can be used and even modified by the computation. In machine
learning applications, one generally has the model paramaters be Variable
s.
W = tf.Variable(tf.zeros([784,10]))
b = tf.Variable(tf.zeros([10]))
We pass the initial value for each parameter in the call to tf.Variable
.
In this case, we initialize both W
and b
as tensors full of
zeros. W
is a 784x10 matrix (because we have 784 input features
and 10 outputs) and b
is a 10-dimensional vector (because we have 10 classes).
Before Variable
s can be used within a session, they must be initialized using
that session.
This step takes the initial values (in this case tensors full of zeros) that
have already been specified, and assigns them to each Variable
. This can be
done for all Variables
at once.
sess.run(tf.initialize_all_variables())
We can now implement our regression model. It only takes one line!
We multiply the vectorized input images x
by the weight matrix W
, add
the bias b
, and compute the softmax probabilities that are assigned to each
class.
y = tf.nn.softmax(tf.matmul(x,W) + b)
The cost function to be minimized during training can be specified just as easily. Our cost function will be the cross-entropy between the target and the model's prediction.
cross_entropy = -tf.reduce_sum(y_*tf.log(y))
Note that tf.reduce_sum
sums across all images in the minibatch, as well as
all classes. We are computing the cross entropy for the entire minibatch.
Now that we have defined our model and training cost function, it is straightforward to train using TensorFlow. Because TensorFlow knows the entire computation graph, it can use automatic differentiation to find the gradients of the cost with respect to each of the variables. TensorFlow has a variety of [builtin optimization algorithms] (../../../api_docs/python/train.md#optimizers). For this example, we will use steepest gradient descent, with a step length of 0.01, to descend the cross entropy.
train_step = tf.train.GradientDescentOptimizer(0.01).minimize(cross_entropy)
What TensorFlow actually did in that single line was to add new operations to the computation graph. These operations included ones to compute gradients, compute parameter update steps, and apply update steps to the parameters.
The returned operation train_step
, when run, will apply the gradient
descent updates to the parameters. Training the model can therefore be
accomplished by repeatedly running train_step
.
for i in range(1000):
batch = mnist.train.next_batch(50)
train_step.run(feed_dict={x: batch[0], y_: batch[1]})
Each training iteration we load 50 training examples. We then run the
train_step
operation, using feed_dict
to replace the placeholder
tensors
x
and y_
with the training examples.
Note that you can replace any tensor in your computation graph using feed_dict
-- it's not restricted to just placeholder
s.
How well did our model do?
First we'll figure out where we predicted the correct label. tf.argmax
is an extremely useful function which gives you the index of the highest entry
in a tensor along some axis. For example, tf.argmax(y,1)
is the label our
model thinks is most likely for each input, while tf.argmax(y_,1)
is the
true label. We can use tf.equal
to check if our prediction matches the
truth.
correct_prediction = tf.equal(tf.argmax(y,1), tf.argmax(y_,1))
That gives us a list of booleans. To determine what fraction are correct, we
cast to floating point numbers and then take the mean. For example,
[True, False, True, True]
would become [1,0,1,1]
which would become 0.75
.
accuracy = tf.reduce_mean(tf.cast(correct_prediction, "float"))
Finally, we can evaluate our accuracy on the test data. This should be about 91% correct.
print accuracy.eval(feed_dict={x: mnist.test.images, y_: mnist.test.labels})
Getting 91% accuracy on MNIST is bad. It's almost embarrassingly bad. In this section, we'll fix that, jumping from a very simple model to something moderatly sophisticated: a small convolutional neural network. This will get us to around 99.2% accuracy -- not state of the art, but respectable.
To create this model, we're going to need to create a lot of weights and biases. One should generally initialize weights with a small amount of noise for symmetry breaking, and to prevent 0 gradients. Since we're using ReLU neurons, it is also good practice to initialize them with a slightly positive initial bias to avoid "dead neurons." Instead of doing this repeatedly while we build the model, let's create two handy functions to do it for us.
def weight_variable(shape):
initial = tf.truncated_normal(shape, stddev=0.1)
return tf.Variable(initial)
def bias_variable(shape):
initial = tf.constant(0.1, shape=shape)
return tf.Variable(initial)
TensorFlow also gives us a lot of flexibility in convolution and pooling operations. How do we handle the boundaries? What is our stride size? In this example, we're always going to choose the vanilla version. Our convolutions uses a stride of one and are zero padded so that the output is the same size as the input. Our pooling is plain old max pooling over 2x2 blocks. To keep our code cleaner, let's also abstract those operations into functions.
def conv2d(x, W):
return tf.nn.conv2d(x, W, strides=[1, 1, 1, 1], padding='SAME')
def max_pool_2x2(x):
return tf.nn.max_pool(x, ksize=[1, 2, 2, 1],
strides=[1, 2, 2, 1], padding='SAME')
We can now implement our first layer. It will consist of convolution, followed
by max pooling. The convolutional will compute 32 features for each 5x5 patch.
Its weight tensor will have a shape of [5, 5, 1, 32]
. The first two
dimensions are the patch size, the next is the number of input channels, and
the last is the number of output channels. We will also have a bias vector with
a component for each output channel.
W_conv1 = weight_variable([5, 5, 1, 32])
b_conv1 = bias_variable([32])
To apply the layer, we first reshape x
to a 4d tensor, with the second and
third dimensions corresponding to image width and height, and the final
dimension corresponding to the number of color channels.
x_image = tf.reshape(x, [-1,28,28,1])
We then convolve x_image
with the weight tensor, add the
bias, apply the ReLU function, and finally max pool.
h_conv1 = tf.nn.relu(conv2d(x_image, W_conv1) + b_conv1)
h_pool1 = max_pool_2x2(h_conv1)
In order to build a deep network, we stack several layers of this type. The second layer will have 64 features for each 5x5 patch.
W_conv2 = weight_variable([5, 5, 32, 64])
b_conv2 = bias_variable([64])
h_conv2 = tf.nn.relu(conv2d(h_pool1, W_conv2) + b_conv2)
h_pool2 = max_pool_2x2(h_conv2)
Now that the image size has been reduced to 7x7, we add a fully-connected layer with 1024 neurons to allow processing on the entire image. We reshape the tensor from the pooling layer into a batch of vectors, multiply by a weight matrix, add a bias, and apply a ReLU.
W_fc1 = weight_variable([7 * 7 * 64, 1024])
b_fc1 = bias_variable([1024])
h_pool2_flat = tf.reshape(h_pool2, [-1, 7*7*64])
h_fc1 = tf.nn.relu(tf.matmul(h_pool2_flat, W_fc1) + b_fc1)
To reduce overfitting, we will apply dropout before the readout layer.
We create a placeholder
for the probability that a neuron's output is kept
during dropout. This allows us to turn dropout on during training, and turn it
off during testing.
TensorFlow's tf.nn.dropout
op automatically handles scaling neuron outputs in
addition to masking them, so dropout just works without any additional scaling.
keep_prob = tf.placeholder("float")
h_fc1_drop = tf.nn.dropout(h_fc1, keep_prob)
Finally, we add a softmax layer, just like for the one layer softmax regression above.
W_fc2 = weight_variable([1024, 10])
b_fc2 = bias_variable([10])
y_conv=tf.nn.softmax(tf.matmul(h_fc1_drop, W_fc2) + b_fc2)
How well does this model do?
To train and evaluate it we will use code that is nearly identical to that for
the simple one layer SoftMax network above.
The differences are that: we will replace the steepest gradient descent
optimizer with the more sophisticated ADAM optimizer; we will include the
additional parameter keep_prob
in feed_dict
to control the dropout rate;
and we will add logging to every 100th iteration in the training process.
cross_entropy = -tf.reduce_sum(y_*tf.log(y_conv))
train_step = tf.train.AdamOptimizer(1e-4).minimize(cross_entropy)
correct_prediction = tf.equal(tf.argmax(y_conv,1), tf.argmax(y_,1))
accuracy = tf.reduce_mean(tf.cast(correct_prediction, "float"))
sess.run(tf.initialize_all_variables())
for i in range(20000):
batch = mnist.train.next_batch(50)
if i%100 == 0:
train_accuracy = accuracy.eval(feed_dict={
x:batch[0], y_: batch[1], keep_prob: 1.0})
print "step %d, training accuracy %g"%(i, train_accuracy)
train_step.run(feed_dict={x: batch[0], y_: batch[1], keep_prob: 0.5})
print "test accuracy %g"%accuracy.eval(feed_dict={
x: mnist.test.images, y_: mnist.test.labels, keep_prob: 1.0})
The final test set accuracy after running this code should be approximately 99.2%.
We have learned how to quickly and easily build, train, and evaluate a fairly sophisticated deep learning model using TensorFlow.