View on TensorFlow.org | Run in Google Colab | View source on GitHub | Download notebook |

## Introduction

A callback is a powerful tool to customize the behavior of a Keras model during
training, evaluation, or inference. Examples include `tf.keras.callbacks.TensorBoard`

to visualize training progress and results with TensorBoard, or
`tf.keras.callbacks.ModelCheckpoint`

to periodically save your model during training.

In this guide, you will learn what a Keras callback is, what it can do, and how you can build your own. We provide a few demos of simple callback applications to get you started.

## Setup

```
import tensorflow as tf
from tensorflow import keras
```

## Keras callbacks overview

All callbacks subclass the `keras.callbacks.Callback`

class, and
override a set of methods called at various stages of training, testing, and
predicting. Callbacks are useful to get a view on internal states and statistics of
the model during training.

You can pass a list of callbacks (as the keyword argument `callbacks`

) to the following
model methods:

## An overview of callback methods

### Global methods

`on_(train|test|predict)_begin(self, logs=None)`

Called at the beginning of `fit`

/`evaluate`

/`predict`

.

`on_(train|test|predict)_end(self, logs=None)`

Called at the end of `fit`

/`evaluate`

/`predict`

.

### Batch-level methods for training/testing/predicting

`on_(train|test|predict)_batch_begin(self, batch, logs=None)`

Called right before processing a batch during training/testing/predicting.

`on_(train|test|predict)_batch_end(self, batch, logs=None)`

Called at the end of training/testing/predicting a batch. Within this method, `logs`

is
a dict containing the metrics results.

### Epoch-level methods (training only)

`on_epoch_begin(self, epoch, logs=None)`

Called at the beginning of an epoch during training.

`on_epoch_end(self, epoch, logs=None)`

Called at the end of an epoch during training.

## A basic example

Let's take a look at a concrete example. To get started, let's import tensorflow and define a simple Sequential Keras model:

```
# Define the Keras model to add callbacks to
def get_model():
model = keras.Sequential()
model.add(keras.layers.Dense(1, input_dim=784))
model.compile(
optimizer=keras.optimizers.RMSprop(learning_rate=0.1),
loss="mean_squared_error",
metrics=["mean_absolute_error"],
)
return model
```

Then, load the MNIST data for training and testing from Keras datasets API:

```
# Load example MNIST data and pre-process it
(x_train, y_train), (x_test, y_test) = tf.keras.datasets.mnist.load_data()
x_train = x_train.reshape(-1, 784).astype("float32") / 255.0
x_test = x_test.reshape(-1, 784).astype("float32") / 255.0
# Limit the data to 1000 samples
x_train = x_train[:1000]
y_train = y_train[:1000]
x_test = x_test[:1000]
y_test = y_test[:1000]
```

Now, define a simple custom callback that logs:

- When
`fit`

/`evaluate`

/`predict`

starts & ends - When each epoch starts & ends
- When each training batch starts & ends
- When each evaluation (test) batch starts & ends
- When each inference (prediction) batch starts & ends

```
class CustomCallback(keras.callbacks.Callback):
def on_train_begin(self, logs=None):
keys = list(logs.keys())
print("Starting training; got log keys: {}".format(keys))
def on_train_end(self, logs=None):
keys = list(logs.keys())
print("Stop training; got log keys: {}".format(keys))
def on_epoch_begin(self, epoch, logs=None):
keys = list(logs.keys())
print("Start epoch {} of training; got log keys: {}".format(epoch, keys))
def on_epoch_end(self, epoch, logs=None):
keys = list(logs.keys())
print("End epoch {} of training; got log keys: {}".format(epoch, keys))
def on_test_begin(self, logs=None):
keys = list(logs.keys())
print("Start testing; got log keys: {}".format(keys))
def on_test_end(self, logs=None):
keys = list(logs.keys())
print("Stop testing; got log keys: {}".format(keys))
def on_predict_begin(self, logs=None):
keys = list(logs.keys())
print("Start predicting; got log keys: {}".format(keys))
def on_predict_end(self, logs=None):
keys = list(logs.keys())
print("Stop predicting; got log keys: {}".format(keys))
def on_train_batch_begin(self, batch, logs=None):
keys = list(logs.keys())
print("...Training: start of batch {}; got log keys: {}".format(batch, keys))
def on_train_batch_end(self, batch, logs=None):
keys = list(logs.keys())
print("...Training: end of batch {}; got log keys: {}".format(batch, keys))
def on_test_batch_begin(self, batch, logs=None):
keys = list(logs.keys())
print("...Evaluating: start of batch {}; got log keys: {}".format(batch, keys))
def on_test_batch_end(self, batch, logs=None):
keys = list(logs.keys())
print("...Evaluating: end of batch {}; got log keys: {}".format(batch, keys))
def on_predict_batch_begin(self, batch, logs=None):
keys = list(logs.keys())
print("...Predicting: start of batch {}; got log keys: {}".format(batch, keys))
def on_predict_batch_end(self, batch, logs=None):
keys = list(logs.keys())
print("...Predicting: end of batch {}; got log keys: {}".format(batch, keys))
```

Let's try it out:

```
model = get_model()
model.fit(
x_train,
y_train,
batch_size=128,
epochs=1,
verbose=0,
validation_split=0.5,
callbacks=[CustomCallback()],
)
res = model.evaluate(
x_test, y_test, batch_size=128, verbose=0, callbacks=[CustomCallback()]
)
res = model.predict(x_test, batch_size=128, callbacks=[CustomCallback()])
```

Starting training; got log keys: [] Start epoch 0 of training; got log keys: [] ...Training: start of batch 0; got log keys: [] ...Training: end of batch 0; got log keys: ['loss', 'mean_absolute_error'] ...Training: start of batch 1; got log keys: [] ...Training: end of batch 1; got log keys: ['loss', 'mean_absolute_error'] ...Training: start of batch 2; got log keys: [] ...Training: end of batch 2; got log keys: ['loss', 'mean_absolute_error'] ...Training: start of batch 3; got log keys: [] ...Training: end of batch 3; got log keys: ['loss', 'mean_absolute_error'] Start testing; got log keys: [] ...Evaluating: start of batch 0; got log keys: [] ...Evaluating: end of batch 0; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 1; got log keys: [] ...Evaluating: end of batch 1; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 2; got log keys: [] ...Evaluating: end of batch 2; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 3; got log keys: [] ...Evaluating: end of batch 3; got log keys: ['loss', 'mean_absolute_error'] Stop testing; got log keys: ['loss', 'mean_absolute_error'] End epoch 0 of training; got log keys: ['loss', 'mean_absolute_error', 'val_loss', 'val_mean_absolute_error'] Stop training; got log keys: ['loss', 'mean_absolute_error', 'val_loss', 'val_mean_absolute_error'] Start testing; got log keys: [] ...Evaluating: start of batch 0; got log keys: [] ...Evaluating: end of batch 0; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 1; got log keys: [] ...Evaluating: end of batch 1; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 2; got log keys: [] ...Evaluating: end of batch 2; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 3; got log keys: [] ...Evaluating: end of batch 3; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 4; got log keys: [] ...Evaluating: end of batch 4; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 5; got log keys: [] ...Evaluating: end of batch 5; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 6; got log keys: [] ...Evaluating: end of batch 6; got log keys: ['loss', 'mean_absolute_error'] ...Evaluating: start of batch 7; got log keys: [] ...Evaluating: end of batch 7; got log keys: ['loss', 'mean_absolute_error'] Stop testing; got log keys: ['loss', 'mean_absolute_error'] Start predicting; got log keys: [] ...Predicting: start of batch 0; got log keys: [] ...Predicting: end of batch 0; got log keys: ['outputs'] ...Predicting: start of batch 1; got log keys: [] ...Predicting: end of batch 1; got log keys: ['outputs'] ...Predicting: start of batch 2; got log keys: [] ...Predicting: end of batch 2; got log keys: ['outputs'] ...Predicting: start of batch 3; got log keys: [] ...Predicting: end of batch 3; got log keys: ['outputs'] ...Predicting: start of batch 4; got log keys: [] ...Predicting: end of batch 4; got log keys: ['outputs'] ...Predicting: start of batch 5; got log keys: [] ...Predicting: end of batch 5; got log keys: ['outputs'] ...Predicting: start of batch 6; got log keys: [] ...Predicting: end of batch 6; got log keys: ['outputs'] ...Predicting: start of batch 7; got log keys: [] ...Predicting: end of batch 7; got log keys: ['outputs'] Stop predicting; got log keys: []

### Usage of `logs`

dict

The `logs`

dict contains the loss value, and all the metrics at the end of a batch or
epoch. Example includes the loss and mean absolute error.

```
class LossAndErrorPrintingCallback(keras.callbacks.Callback):
def on_train_batch_end(self, batch, logs=None):
print("For batch {}, loss is {:7.2f}.".format(batch, logs["loss"]))
def on_test_batch_end(self, batch, logs=None):
print("For batch {}, loss is {:7.2f}.".format(batch, logs["loss"]))
def on_epoch_end(self, epoch, logs=None):
print(
"The average loss for epoch {} is {:7.2f} "
"and mean absolute error is {:7.2f}.".format(
epoch, logs["loss"], logs["mean_absolute_error"]
)
)
model = get_model()
model.fit(
x_train,
y_train,
batch_size=128,
epochs=2,
verbose=0,
callbacks=[LossAndErrorPrintingCallback()],
)
res = model.evaluate(
x_test,
y_test,
batch_size=128,
verbose=0,
callbacks=[LossAndErrorPrintingCallback()],
)
```

For batch 0, loss is 25.20. For batch 1, loss is 433.41. For batch 2, loss is 296.65. For batch 3, loss is 225.30. For batch 4, loss is 181.68. For batch 5, loss is 152.45. For batch 6, loss is 131.45. For batch 7, loss is 118.27. The average loss for epoch 0 is 118.27 and mean absolute error is 5.86. For batch 0, loss is 4.57. For batch 1, loss is 4.56. For batch 2, loss is 4.62. For batch 3, loss is 4.57. For batch 4, loss is 4.56. For batch 5, loss is 4.63. For batch 6, loss is 4.52. For batch 7, loss is 4.44. The average loss for epoch 1 is 4.44 and mean absolute error is 1.70. For batch 0, loss is 5.00. For batch 1, loss is 4.46. For batch 2, loss is 4.60. For batch 3, loss is 4.53. For batch 4, loss is 4.64. For batch 5, loss is 4.60. For batch 6, loss is 4.52. For batch 7, loss is 4.45.

## Usage of `self.model`

attribute

In addition to receiving log information when one of their methods is called,
callbacks have access to the model associated with the current round of
training/evaluation/inference: `self.model`

.

Here are of few of the things you can do with `self.model`

in a callback:

- Set
`self.model.stop_training = True`

to immediately interrupt training. - Mutate hyperparameters of the optimizer (available as
`self.model.optimizer`

), such as`self.model.optimizer.learning_rate`

. - Save the model at period intervals.
- Record the output of
`model.predict()`

on a few test samples at the end of each epoch, to use as a sanity check during training. - Extract visualizations of intermediate features at the end of each epoch, to monitor what the model is learning over time.
- etc.

Let's see this in action in a couple of examples.

## Examples of Keras callback applications

### Early stopping at minimum loss

This first example shows the creation of a `Callback`

that stops training when the
minimum of loss has been reached, by setting the attribute `self.model.stop_training`

(boolean). Optionally, you can provide an argument `patience`

to specify how many
epochs we should wait before stopping after having reached a local minimum.

`tf.keras.callbacks.EarlyStopping`

provides a more complete and general implementation.

```
import numpy as np
class EarlyStoppingAtMinLoss(keras.callbacks.Callback):
"""Stop training when the loss is at its min, i.e. the loss stops decreasing.
Arguments:
patience: Number of epochs to wait after min has been hit. After this
number of no improvement, training stops.
"""
def __init__(self, patience=0):
super(EarlyStoppingAtMinLoss, self).__init__()
self.patience = patience
# best_weights to store the weights at which the minimum loss occurs.
self.best_weights = None
def on_train_begin(self, logs=None):
# The number of epoch it has waited when loss is no longer minimum.
self.wait = 0
# The epoch the training stops at.
self.stopped_epoch = 0
# Initialize the best as infinity.
self.best = np.Inf
def on_epoch_end(self, epoch, logs=None):
current = logs.get("loss")
if np.less(current, self.best):
self.best = current
self.wait = 0
# Record the best weights if current results is better (less).
self.best_weights = self.model.get_weights()
else:
self.wait += 1
if self.wait >= self.patience:
self.stopped_epoch = epoch
self.model.stop_training = True
print("Restoring model weights from the end of the best epoch.")
self.model.set_weights(self.best_weights)
def on_train_end(self, logs=None):
if self.stopped_epoch > 0:
print("Epoch %05d: early stopping" % (self.stopped_epoch + 1))
model = get_model()
model.fit(
x_train,
y_train,
batch_size=64,
steps_per_epoch=5,
epochs=30,
verbose=0,
callbacks=[LossAndErrorPrintingCallback(), EarlyStoppingAtMinLoss()],
)
```

For batch 0, loss is 23.44. For batch 1, loss is 406.69. For batch 2, loss is 279.72. For batch 3, loss is 212.43. For batch 4, loss is 171.98. The average loss for epoch 0 is 171.98 and mean absolute error is 7.90. For batch 0, loss is 4.90. For batch 1, loss is 5.80. For batch 2, loss is 6.08. For batch 3, loss is 5.92. For batch 4, loss is 5.71. The average loss for epoch 1 is 5.71 and mean absolute error is 1.94. For batch 0, loss is 5.28. For batch 1, loss is 4.79. For batch 2, loss is 4.87. For batch 3, loss is 5.29. For batch 4, loss is 5.65. The average loss for epoch 2 is 5.65 and mean absolute error is 1.95. For batch 0, loss is 8.66. For batch 1, loss is 12.04. For batch 2, loss is 15.36. For batch 3, loss is 23.19. For batch 4, loss is 37.54. The average loss for epoch 3 is 37.54 and mean absolute error is 5.09. Restoring model weights from the end of the best epoch. Epoch 00004: early stopping <tensorflow.python.keras.callbacks.History at 0x7fa82a016ac8>

### Learning rate scheduling

In this example, we show how a custom Callback can be used to dynamically change the learning rate of the optimizer during the course of training.

See `callbacks.LearningRateScheduler`

for a more general implementations.

```
class CustomLearningRateScheduler(keras.callbacks.Callback):
"""Learning rate scheduler which sets the learning rate according to schedule.
Arguments:
schedule: a function that takes an epoch index
(integer, indexed from 0) and current learning rate
as inputs and returns a new learning rate as output (float).
"""
def __init__(self, schedule):
super(CustomLearningRateScheduler, self).__init__()
self.schedule = schedule
def on_epoch_begin(self, epoch, logs=None):
if not hasattr(self.model.optimizer, "lr"):
raise ValueError('Optimizer must have a "lr" attribute.')
# Get the current learning rate from model's optimizer.
lr = float(tf.keras.backend.get_value(self.model.optimizer.learning_rate))
# Call schedule function to get the scheduled learning rate.
scheduled_lr = self.schedule(epoch, lr)
# Set the value back to the optimizer before this epoch starts
tf.keras.backend.set_value(self.model.optimizer.lr, scheduled_lr)
print("\nEpoch %05d: Learning rate is %6.4f." % (epoch, scheduled_lr))
LR_SCHEDULE = [
# (epoch to start, learning rate) tuples
(3, 0.05),
(6, 0.01),
(9, 0.005),
(12, 0.001),
]
def lr_schedule(epoch, lr):
"""Helper function to retrieve the scheduled learning rate based on epoch."""
if epoch < LR_SCHEDULE[0][0] or epoch > LR_SCHEDULE[-1][0]:
return lr
for i in range(len(LR_SCHEDULE)):
if epoch == LR_SCHEDULE[i][0]:
return LR_SCHEDULE[i][1]
return lr
model = get_model()
model.fit(
x_train,
y_train,
batch_size=64,
steps_per_epoch=5,
epochs=15,
verbose=0,
callbacks=[
LossAndErrorPrintingCallback(),
CustomLearningRateScheduler(lr_schedule),
],
)
```

Epoch 00000: Learning rate is 0.1000. For batch 0, loss is 28.12. For batch 1, loss is 486.39. For batch 2, loss is 333.25. For batch 3, loss is 251.94. For batch 4, loss is 202.90. The average loss for epoch 0 is 202.90 and mean absolute error is 8.33. Epoch 00001: Learning rate is 0.1000. For batch 0, loss is 6.74. For batch 1, loss is 5.65. For batch 2, loss is 5.89. For batch 3, loss is 5.58. For batch 4, loss is 5.61. The average loss for epoch 1 is 5.61 and mean absolute error is 1.93. Epoch 00002: Learning rate is 0.1000. For batch 0, loss is 4.10. For batch 1, loss is 3.94. For batch 2, loss is 4.34. For batch 3, loss is 4.33. For batch 4, loss is 4.79. The average loss for epoch 2 is 4.79 and mean absolute error is 1.74. Epoch 00003: Learning rate is 0.0500. For batch 0, loss is 6.13. For batch 1, loss is 4.77. For batch 2, loss is 5.06. For batch 3, loss is 4.60. For batch 4, loss is 4.41. The average loss for epoch 3 is 4.41 and mean absolute error is 1.67. Epoch 00004: Learning rate is 0.0500. For batch 0, loss is 4.81. For batch 1, loss is 4.73. For batch 2, loss is 4.55. For batch 3, loss is 4.63. For batch 4, loss is 4.58. The average loss for epoch 4 is 4.58 and mean absolute error is 1.70. Epoch 00005: Learning rate is 0.0500. For batch 0, loss is 4.45. For batch 1, loss is 4.62. For batch 2, loss is 4.30. For batch 3, loss is 4.67. For batch 4, loss is 5.11. The average loss for epoch 5 is 5.11 and mean absolute error is 1.85. Epoch 00006: Learning rate is 0.0100. For batch 0, loss is 11.94. For batch 1, loss is 9.66. For batch 2, loss is 7.27. For batch 3, loss is 5.80. For batch 4, loss is 5.47. The average loss for epoch 6 is 5.47 and mean absolute error is 1.85. Epoch 00007: Learning rate is 0.0100. For batch 0, loss is 4.25. For batch 1, loss is 3.60. For batch 2, loss is 4.19. For batch 3, loss is 3.94. For batch 4, loss is 3.74. The average loss for epoch 7 is 3.74 and mean absolute error is 1.46. Epoch 00008: Learning rate is 0.0100. For batch 0, loss is 3.72. For batch 1, loss is 3.55. For batch 2, loss is 3.54. For batch 3, loss is 3.60. For batch 4, loss is 3.57. The average loss for epoch 8 is 3.57 and mean absolute error is 1.49. Epoch 00009: Learning rate is 0.0050. For batch 0, loss is 3.55. For batch 1, loss is 3.74. For batch 2, loss is 3.68. For batch 3, loss is 3.76. For batch 4, loss is 3.57. The average loss for epoch 9 is 3.57 and mean absolute error is 1.46. Epoch 00010: Learning rate is 0.0050. For batch 0, loss is 4.07. For batch 1, loss is 3.84. For batch 2, loss is 3.73. For batch 3, loss is 3.46. For batch 4, loss is 3.53. The average loss for epoch 10 is 3.53 and mean absolute error is 1.43. Epoch 00011: Learning rate is 0.0050. For batch 0, loss is 3.49. For batch 1, loss is 2.75. For batch 2, loss is 2.67. For batch 3, loss is 3.18. For batch 4, loss is 3.47. The average loss for epoch 11 is 3.47 and mean absolute error is 1.41. Epoch 00012: Learning rate is 0.0010. For batch 0, loss is 2.99. For batch 1, loss is 3.01. For batch 2, loss is 3.12. For batch 3, loss is 3.07. For batch 4, loss is 2.87. The average loss for epoch 12 is 2.87 and mean absolute error is 1.35. Epoch 00013: Learning rate is 0.0010. For batch 0, loss is 2.93. For batch 1, loss is 3.15. For batch 2, loss is 3.41. For batch 3, loss is 3.44. For batch 4, loss is 3.44. The average loss for epoch 13 is 3.44 and mean absolute error is 1.44. Epoch 00014: Learning rate is 0.0010. For batch 0, loss is 3.07. For batch 1, loss is 3.00. For batch 2, loss is 2.68. For batch 3, loss is 3.21. For batch 4, loss is 3.16. The average loss for epoch 14 is 3.16 and mean absolute error is 1.36. <tensorflow.python.keras.callbacks.History at 0x7fa829f018d0>

### Built-in Keras callbacks

Be sure to check out the existing Keras callbacks by reading the API docs. Applications include logging to CSV, saving the model, visualizing metrics in TensorBoard, and a lot more!