I would like to use batch normalization in TensorFlow. I found the related C++ source code in core/ops/nn_ops.cc. However, I did not find it documented on tensorflow.org.

BN has different semantics in MLP and CNN, so I am not sure what exactly this BN does.

I did not find a method called MovingMoments either.


Update July 2016 The easiest way to use batch normalization in TensorFlow is through the higher-level interfaces provided in either contrib/layers, tflearn, or slim.

Previous answer if you want to DIY: The documentation string for this has improved since the release - see the docs comment in the master branch instead of the one you found. It clarifies, in particular, that it's the output from tf.nn.moments.

You can see a very simple example of its use in the batch_norm test code. For a more real-world use example, I've included below the helper class and use notes that I scribbled up for my own use (no warranty provided!):

"""A helper class for managing batch normalization state.                   

This class is designed to simplify adding batch normalization               
(http://arxiv.org/pdf/1502.03167v3.pdf) to your model by                    
managing the state variables associated with it.                            

Important use note:  The function get_assigner() returns                    
an op that must be executed to save the updated state.                      
A suggested way to do this is to make execution of the                      
model optimizer force it, e.g., by:                                         

  update_assignments = tf.group(bn1.get_assigner(),                         
  with tf.control_dependencies([optimizer]):                                
    optimizer = tf.group(update_assignments)                                


import tensorflow as tf

class ConvolutionalBatchNormalizer(object):
  """Helper class that groups the normalization logic and variables.        

      ewma = tf.train.ExponentialMovingAverage(decay=0.99)                  
      bn = ConvolutionalBatchNormalizer(depth, 0.001, ewma, True)           
      update_assignments = bn.get_assigner()                                
      x = bn.normalize(y, train=training?)                                  
      (the output x will be batch-normalized).                              

  def __init__(self, depth, epsilon, ewma_trainer, scale_after_norm):
    self.mean = tf.Variable(tf.constant(0.0, shape=[depth]),
    self.variance = tf.Variable(tf.constant(1.0, shape=[depth]),
    self.beta = tf.Variable(tf.constant(0.0, shape=[depth]))
    self.gamma = tf.Variable(tf.constant(1.0, shape=[depth]))
    self.ewma_trainer = ewma_trainer
    self.epsilon = epsilon
    self.scale_after_norm = scale_after_norm

  def get_assigner(self):
    """Returns an EWMA apply op that must be invoked after optimization."""
    return self.ewma_trainer.apply([self.mean, self.variance])

  def normalize(self, x, train=True):
    """Returns a batch-normalized version of x."""
    if train:
      mean, variance = tf.nn.moments(x, [0, 1, 2])
      assign_mean = self.mean.assign(mean)
      assign_variance = self.variance.assign(variance)
      with tf.control_dependencies([assign_mean, assign_variance]):
        return tf.nn.batch_norm_with_global_normalization(
            x, mean, variance, self.beta, self.gamma,
            self.epsilon, self.scale_after_norm)
      mean = self.ewma_trainer.average(self.mean)
      variance = self.ewma_trainer.average(self.variance)
      local_beta = tf.identity(self.beta)
      local_gamma = tf.identity(self.gamma)
      return tf.nn.batch_norm_with_global_normalization(
          x, mean, variance, local_beta, local_gamma,
          self.epsilon, self.scale_after_norm)

Note that I called it a ConvolutionalBatchNormalizer because it pins the use of tf.nn.moments to sum across axes 0, 1, and 2, whereas for non-convolutional use you might only want axis 0.

Feedback appreciated if you use it.

  • I'm having a hard time applying this to a convnet subgraph that I'm reusing in my LSTM network. By default it's creating a different normalizer for every timestep the subgraph is applied. Any ideas to make it normalize over all applications of the subgraph? – Joren Van Severen Nov 30 '15 at 14:50
  • 1
    Did you try creating the bn outside the subgraph and passing it in to the subgraph constructor? bn = Conv...er(args); ... createSubgraph(bn, args); and then just invoke bn.normalize inside the subgraph. – dga Nov 30 '15 at 19:20
  • 1
    I don't understand why in this example do you compute the moving average during the test phase ? – jrabary Dec 1 '15 at 7:30
  • The opposite - during training (if train:), it computes the mean and stddev of the input batch (tf.nn.moments(x, [0, 1, 2])). During evaluation/testing, it extracts the saved moving average (self.ewma_trainer.average(self.mean)). The confusing thing may be that calling the ewma's average method returns the stored average, it doesn't update it. The update is done by the self.mean.assign(mean) line, which stores the current batch mean into 'self.mean', and then the ewma_trainer.apply, which updates the EWMA based upon self.mean – dga Dec 1 '15 at 19:04
  • 1
    @dga: yes I did and it ran (caused an error before), but I was seeing weird behavior. I'm building graph twice as in github.com/tensorflow/tensorflow/blob/master/tensorflow/models/… and use the second one for testing on bigger train & valid batches. With batch normalization I'm getting increasing/random loss & acc. for the second graph, while the first one, used for the training op, shows a nice decreasing loss. – Joren Van Severen Dec 5 '15 at 20:14

As of TensorFlow 1.0 (February 2017) there's also the high-level tf.layers.batch_normalization API included in TensorFlow itself.

It's super simple to use:

# Set this to True for training and False for testing
training = tf.placeholder(tf.bool)

x = tf.layers.dense(input_x, units=100)
x = tf.layers.batch_normalization(x, training=training)
x = tf.nn.relu(x)

...except that it adds extra ops to the graph (for updating its mean and variance variables) in such a way that they won't be dependencies of your training op. You can either just run the ops separately:

extra_update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS)
sess.run([train_op, extra_update_ops], ...)

or add the update ops as dependencies of your training op manually, then just run your training op as normal:

extra_update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS)
with tf.control_dependencies(extra_update_ops):
    train_op = optimizer.minimize(loss)
sess.run([train_op], ...)
  • 1
    @MiniQuark can you please elaborate on the dependencies? I don't quite understand that part. – mamafoku Aug 10 '17 at 21:12
  • 5
    @mamafoku The Batch Norm algorithm needs to compute the mean and standard deviation of your whole training set. These are computed during training, but they are not used during training, only during inference. This computation is done using exponential averages. It is independent from the rest of the training, so you must run the exponential average computation step (i.e. extra_update_ops) "manually" at each training iteration, along with the regular training op, or you can make the training op depend on extra_update_ops (using a control_dependencies() block). Hope this helps. – MiniQuark Aug 11 '17 at 9:53
  • So considering that update_ups serves for the purpose of updating the moving mean and moving variance it would make no sense to include it at all if we are just testing a pre-trained network, is it correct? – Andres Felipe Nov 21 '17 at 13:06
  • What value for axis should be used in convolutional networks? – Jonas Adler Feb 28 '18 at 10:26
  • 1
    @gantzer89 That's right. If you load a pretrained network, the checkpoint will include the values for the mean and variance calculated during training. The mean and variance shouldn't be updated during testing. – Matthew Rahtz Mar 2 '18 at 8:57

The following works fine for me, it does not require invoking EMA-apply outside.

import numpy as np
import tensorflow as tf
from tensorflow.python import control_flow_ops

def batch_norm(x, n_out, phase_train, scope='bn'):
    Batch normalization on convolutional maps.
        x:           Tensor, 4D BHWD input maps
        n_out:       integer, depth of input maps
        phase_train: boolean tf.Varialbe, true indicates training phase
        scope:       string, variable scope
        normed:      batch-normalized maps
    with tf.variable_scope(scope):
        beta = tf.Variable(tf.constant(0.0, shape=[n_out]),
                                     name='beta', trainable=True)
        gamma = tf.Variable(tf.constant(1.0, shape=[n_out]),
                                      name='gamma', trainable=True)
        batch_mean, batch_var = tf.nn.moments(x, [0,1,2], name='moments')
        ema = tf.train.ExponentialMovingAverage(decay=0.5)

        def mean_var_with_update():
            ema_apply_op = ema.apply([batch_mean, batch_var])
            with tf.control_dependencies([ema_apply_op]):
                return tf.identity(batch_mean), tf.identity(batch_var)

        mean, var = tf.cond(phase_train,
                            lambda: (ema.average(batch_mean), ema.average(batch_var)))
        normed = tf.nn.batch_normalization(x, mean, var, beta, gamma, 1e-3)
    return normed


import math

n_in, n_out = 3, 16
ksize = 3
stride = 1
phase_train = tf.placeholder(tf.bool, name='phase_train')
input_image = tf.placeholder(tf.float32, name='input_image')
kernel = tf.Variable(tf.truncated_normal([ksize, ksize, n_in, n_out],
conv = tf.nn.conv2d(input_image, kernel, [1,stride,stride,1], padding='SAME')
conv_bn = batch_norm(conv, n_out, phase_train)
relu = tf.nn.relu(conv_bn)

with tf.Session() as session:
    for i in range(20):
        test_image = np.random.rand(4,32,32,3)
        sess_outputs = session.run([relu],
          {input_image.name: test_image, phase_train.name: True})
  • Thanks for another answer :). What is your control_flow_ops.cond? Is it tf.control_flow_ops.cond? I did not find it in tensorflow. Have you considered the performance difference? Since if the control dependency is applied in layer, then maybe the computation has to wait for every layer instead of wait for every iteration, and could it be too much waiting? I actually use your version, the in layer one, since it is simpler, but I will try the global one later. – Shawn Lee Jan 10 '16 at 2:36
  • I have updated the answer. It is tensorflow.python.control_flow_ops, which is not documented yet. I guess the EMA-apply would not cost much time, since it is an element-wise operation on a vector whose length is typically a few hundred. But I have not verified this yet. – bgshi Jan 10 '16 at 13:56
  • I've confirmed what @jrocks said in his answer, your code is kind of buggy. Please notice. – myme5261314 May 4 '16 at 8:19
  • @myme5261314 @jrock You are right, looks like ema_apply_op is also called during testing. I have edited my answer, changing phase_train from a tf.Variable to a python boolean. However, now you have to create separate graphs for training and testing. Thanks for your feedback and sorry for my late response. – bgshi May 6 '16 at 3:00
  • 3
    is your code really necessary considering there is an official BN layer? code: github.com/tensorflow/tensorflow/blob/… – Charlie Parker Jul 11 '16 at 19:57

There is also an "official" batch normalization layer coded by the developers. They don't have very good docs on how to use it but here is how to use it (according to me):

from tensorflow.contrib.layers.python.layers import batch_norm as batch_norm

def batch_norm_layer(x,train_phase,scope_bn):
    bn_train = batch_norm(x, decay=0.999, center=True, scale=True,
    reuse=None, # is this right?
    bn_inference = batch_norm(x, decay=0.999, center=True, scale=True,
    reuse=True, # is this right?
    z = tf.cond(train_phase, lambda: bn_train, lambda: bn_inference)
    return z

to actually use it you need to create a placeholder for train_phase that indicates if you are in training or inference phase (as in train_phase = tf.placeholder(tf.bool, name='phase_train')). Its value can be filled during inference or training with a tf.session as in:

test_error = sess.run(fetches=cross_entropy, feed_dict={x: batch_xtest, y_:batch_ytest, train_phase: False})

or during training:

sess.run(fetches=train_step, feed_dict={x: batch_xs, y_:batch_ys, train_phase: True})

I'm pretty sure this is correct according to the discussion in github.

Seems there is another useful link:


  • notice that updates_collections=None is important. I don't understand why but it is. The best explanation that I know is But what it is important is that either you pass updates_collections=None so the moving_mean and moving_variance are updated in-place, otherwise you will need gather the update_ops and make sure they are run. but I don't quite understand why that is an explanation but empirically I've observed MNIST perform well when its None and terrible when its not. – Charlie Parker Jul 28 '16 at 17:12

You can simply use the build-in batch_norm layer:

batch_norm = tf.cond(is_train, 
    lambda: tf.contrib.layers.batch_norm(prev, activation_fn=tf.nn.relu, is_training=True, reuse=None),
    lambda: tf.contrib.layers.batch_norm(prev, activation_fn =tf.nn.relu, is_training=False, reuse=True))

where prev is the output of your previous layer (can be both fully-connected or a convolutional layer) and is_train is a boolean placeholder. Just use batch_norm as the input to the next layer, then.

  • 1
    Do you have an example, where you don't pass is_train as a placeholder? I can't do that, passing python boolean don't work with tf.cond and defining two batch norms in if branches gives me "reuse=True cannot be used without a name_or_scope" (even when I specify a variable scope for them)... – sygi Sep 15 '16 at 19:17
  • @sygi, you can use tf.cast(True/False, tf.bool) operation. – I. A Aug 9 '17 at 0:37
  • @sygi, Yea I know, you can say for example: var1 = True or False, and then say: tf.cast(var1, tf.bool). This should work just fine – I. A Aug 9 '17 at 19:42
  • why do you set reuse=True in and only in test stage? – JenkinsY Nov 6 '18 at 7:49

Since someone recently edited this, I'd like to clarify that this is no longer an issue.

This answer does not seem correct When phase_train is set to false, it still updates the ema mean and variance. This can be verified with the following code snippet.

x = tf.placeholder(tf.float32, [None, 20, 20, 10], name='input')
phase_train = tf.placeholder(tf.bool, name='phase_train')

# generate random noise to pass into batch norm
x_gen = tf.random_normal([50,20,20,10])
pt_false = tf.Variable(tf.constant(True))

#generate a constant variable to pass into batch norm
y = x_gen.eval()

[bn, bn_vars] = batch_norm(x, 10, phase_train)

train_step = lambda: bn.eval({x:x_gen.eval(), phase_train:True})
test_step = lambda: bn.eval({x:y, phase_train:False})
test_step_c = lambda: bn.eval({x:y, phase_train:True})

# Verify that this is different as expected, two different x's have different norms

# Verify that this is same as expected, same x's (y) have same norm

# THIS IS DIFFERENT but should be they same, should only be reading from the ema.
  • 1
    I have updated my answer. There was a bug in the original version that causes ema_apply_op being called even when phase_train=False. – bgshi May 6 '16 at 15:05
  • 2
    Thanks for the update, still can't comment on your thread (hurray for rep), but that looks like it should work now. Thanks to @myme5261314 as well. – jrock May 11 '16 at 23:48

Using TensorFlow built-in batch_norm layer, below is the code to load data, build a network with one hidden ReLU layer and L2 normalization and introduce batch normalization for both hidden and out layer. This runs fine and trains fine. Just FYI this example is mostly built upon the data and code from Udacity DeepLearning course. P.S. Yes, parts of it were discussed one way or another in answers earlier but I decided to gather in one code snippet everything so that you have example of whole network training process with Batch Normalization and its evaluation

# These are all the modules we'll be using later. Make sure you can import them
# before proceeding further.
from __future__ import print_function
import numpy as np
import tensorflow as tf
from six.moves import cPickle as pickle

pickle_file = '/home/maxkhk/Documents/Udacity/DeepLearningCourse/SourceCode/tensorflow/examples/udacity/notMNIST.pickle'

with open(pickle_file, 'rb') as f:
  save = pickle.load(f)
  train_dataset = save['train_dataset']
  train_labels = save['train_labels']
  valid_dataset = save['valid_dataset']
  valid_labels = save['valid_labels']
  test_dataset = save['test_dataset']
  test_labels = save['test_labels']
  del save  # hint to help gc free up memory
  print('Training set', train_dataset.shape, train_labels.shape)
  print('Validation set', valid_dataset.shape, valid_labels.shape)
  print('Test set', test_dataset.shape, test_labels.shape)

image_size = 28
num_labels = 10

def reformat(dataset, labels):
  dataset = dataset.reshape((-1, image_size * image_size)).astype(np.float32)
  # Map 2 to [0.0, 1.0, 0.0 ...], 3 to [0.0, 0.0, 1.0 ...]
  labels = (np.arange(num_labels) == labels[:,None]).astype(np.float32)
  return dataset, labels
train_dataset, train_labels = reformat(train_dataset, train_labels)
valid_dataset, valid_labels = reformat(valid_dataset, valid_labels)
test_dataset, test_labels = reformat(test_dataset, test_labels)
print('Training set', train_dataset.shape, train_labels.shape)
print('Validation set', valid_dataset.shape, valid_labels.shape)
print('Test set', test_dataset.shape, test_labels.shape)

def accuracy(predictions, labels):
  return (100.0 * np.sum(np.argmax(predictions, 1) == np.argmax(labels, 1))
          / predictions.shape[0])

#for NeuralNetwork model code is below
#We will use SGD for training to save our time. Code is from Assignment 2
#beta is the new parameter - controls level of regularization.
#Feel free to play with it - the best one I found is 0.001
#notice, we introduce L2 for both biases and weights of all layers

batch_size = 128
beta = 0.001

#building tensorflow graph
graph = tf.Graph()
with graph.as_default():
      # Input data. For the training data, we use a placeholder that will be fed
  # at run time with a training minibatch.
  tf_train_dataset = tf.placeholder(tf.float32,
                                    shape=(batch_size, image_size * image_size))
  tf_train_labels = tf.placeholder(tf.float32, shape=(batch_size, num_labels))
  tf_valid_dataset = tf.constant(valid_dataset)
  tf_test_dataset = tf.constant(test_dataset)

  #introduce batchnorm
  tf_train_dataset_bn = tf.contrib.layers.batch_norm(tf_train_dataset)

  #now let's build our new hidden layer
  #that's how many hidden neurons we want
  num_hidden_neurons = 1024
  #its weights
  hidden_weights = tf.Variable(
    tf.truncated_normal([image_size * image_size, num_hidden_neurons]))
  hidden_biases = tf.Variable(tf.zeros([num_hidden_neurons]))

  #now the layer itself. It multiplies data by weights, adds biases
  #and takes ReLU over result
  hidden_layer = tf.nn.relu(tf.matmul(tf_train_dataset_bn, hidden_weights) + hidden_biases)

  #adding the batch normalization layerhi()
  hidden_layer_bn = tf.contrib.layers.batch_norm(hidden_layer)

  #time to go for output linear layer
  #out weights connect hidden neurons to output labels
  #biases are added to output labels  
  out_weights = tf.Variable(
    tf.truncated_normal([num_hidden_neurons, num_labels]))  

  out_biases = tf.Variable(tf.zeros([num_labels]))  

  #compute output  
  out_layer = tf.matmul(hidden_layer_bn,out_weights) + out_biases
  #our real output is a softmax of prior result
  #and we also compute its cross-entropy to get our loss
  #Notice - we introduce our L2 here
  loss = (tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits(
    out_layer, tf_train_labels) +
    beta*tf.nn.l2_loss(hidden_weights) +
    beta*tf.nn.l2_loss(hidden_biases) +
    beta*tf.nn.l2_loss(out_weights) +

  #now we just minimize this loss to actually train the network
  optimizer = tf.train.GradientDescentOptimizer(0.5).minimize(loss)

  #nice, now let's calculate the predictions on each dataset for evaluating the
  #performance so far
  # Predictions for the training, validation, and test data.
  train_prediction = tf.nn.softmax(out_layer)
  valid_relu = tf.nn.relu(  tf.matmul(tf_valid_dataset, hidden_weights) + hidden_biases)
  valid_prediction = tf.nn.softmax( tf.matmul(valid_relu, out_weights) + out_biases) 

  test_relu = tf.nn.relu( tf.matmul( tf_test_dataset, hidden_weights) + hidden_biases)
  test_prediction = tf.nn.softmax(tf.matmul(test_relu, out_weights) + out_biases)

#now is the actual training on the ANN we built
#we will run it for some number of steps and evaluate the progress after 
#every 500 steps

#number of steps we will train our ANN
num_steps = 3001

#actual training
with tf.Session(graph=graph) as session:
  for step in range(num_steps):
    # Pick an offset within the training data, which has been randomized.
    # Note: we could use better randomization across epochs.
    offset = (step * batch_size) % (train_labels.shape[0] - batch_size)
    # Generate a minibatch.
    batch_data = train_dataset[offset:(offset + batch_size), :]
    batch_labels = train_labels[offset:(offset + batch_size), :]
    # Prepare a dictionary telling the session where to feed the minibatch.
    # The key of the dictionary is the placeholder node of the graph to be fed,
    # and the value is the numpy array to feed to it.
    feed_dict = {tf_train_dataset : batch_data, tf_train_labels : batch_labels}
    _, l, predictions = session.run(
      [optimizer, loss, train_prediction], feed_dict=feed_dict)
    if (step % 500 == 0):
      print("Minibatch loss at step %d: %f" % (step, l))
      print("Minibatch accuracy: %.1f%%" % accuracy(predictions, batch_labels))
      print("Validation accuracy: %.1f%%" % accuracy(
        valid_prediction.eval(), valid_labels))
      print("Test accuracy: %.1f%%" % accuracy(test_prediction.eval(), test_labels))
  • how does one get the data set to try and run ur example? i.e. ` '/home/maxkhk/Documents/Udacity/DeepLearningCourse/SourceCode/tensorflow/examples/udacity/notMNIST.pickle' ` – Charlie Parker Jul 28 '16 at 6:02
  • @Pinocchio it is Udacity's course for Deep Learning and it is done in first assignment there, you could check my code for this here: github.com/MaxKHK/Udacity_DeepLearningAssignments/blob/master/… – Maksim Khaitovich Jul 28 '16 at 21:52
  • Seems like you don't update the moving averages of the batch_norm layer during training – Temak Nov 3 '16 at 0:36

So a simple example of the use of this batchnorm class:

from bn_class import *

with tf.name_scope('Batch_norm_conv1') as scope:
    ewma = tf.train.ExponentialMovingAverage(decay=0.99)                  
    bn_conv1 = ConvolutionalBatchNormalizer(num_filt_1, 0.001, ewma, True)           
    update_assignments = bn_conv1.get_assigner() 
    a_conv1 = bn_conv1.normalize(a_conv1, train=bn_train) 
    h_conv1 = tf.nn.relu(a_conv1)

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