Author: fchollet
Date created: 2020/04/12
Last modified: 2020/04/12
Description: Complete guide to the Sequential model.
import tensorflow as tf
from tensorflow import keras
from tensorflow.keras import layers
A Sequential
model is appropriate for a plain stack of layers
where each layer has exactly one input tensor and one output tensor.
Schematically, the following Sequential
model:
# Define Sequential model with 3 layers
model = keras.Sequential(
[
layers.Dense(2, activation="relu", name="layer1"),
layers.Dense(3, activation="relu", name="layer2"),
layers.Dense(4, name="layer3"),
]
)
# Call model on a test input
x = tf.ones((3, 3))
y = model(x)
is equivalent to this function:
# Create 3 layers
layer1 = layers.Dense(2, activation="relu", name="layer1")
layer2 = layers.Dense(3, activation="relu", name="layer2")
layer3 = layers.Dense(4, name="layer3")
# Call layers on a test input
x = tf.ones((3, 3))
y = layer3(layer2(layer1(x)))
A Sequential model is not appropriate when:
- Your model has multiple inputs or multiple outputs
- Any of your layers has multiple inputs or multiple outputs
- You need to do layer sharing
- You want non-linear topology (e.g. a residual connection, a multi-branch model)
You can create a Sequential model by passing a list of layers to the Sequential constructor:
model = keras.Sequential(
[
layers.Dense(2, activation="relu"),
layers.Dense(3, activation="relu"),
layers.Dense(4),
]
)
Its layers are accessible via the layers
attribute:
model.layers
</div>
You can also create a Sequential model incrementally via the `add()` method:
```python
model = keras.Sequential()
model.add(layers.Dense(2, activation="relu"))
model.add(layers.Dense(3, activation="relu"))
model.add(layers.Dense(4))
Note that there's also a corresponding pop()
method to remove layers:
a Sequential model behaves very much like a list of layers.
model.pop()
print(len(model.layers)) # 2
</div>
Also note that the Sequential constructor accepts a `name` argument, just like
any layer or model in Keras. This is useful to annotate TensorBoard graphs
with semantically meaningful names.
```python
model = keras.Sequential(name="my_sequential")
model.add(layers.Dense(2, activation="relu", name="layer1"))
model.add(layers.Dense(3, activation="relu", name="layer2"))
model.add(layers.Dense(4, name="layer3"))
Generally, all layers in Keras need to know the shape of their inputs in order to be able to create their weights. So when you create a layer like this, initially, it has no weights:
layer = layers.Dense(3)
layer.weights # Empty
</div>
It creates its weights the first time it is called on an input, since the shape
of the weights depends on the shape of the inputs:
```python
# Call layer on a test input
x = tf.ones((1, 4))
y = layer(x)
layer.weights # Now it has weights, of shape (4, 3) and (3,)
</div>
Naturally, this also applies to Sequential models. When you instantiate a
Sequential model without an input shape, it isn't "built": it has no weights
(and calling
`model.weights` results in an error stating just this). The weights are created
when the model first sees some input data:
```python
model = keras.Sequential(
[
layers.Dense(2, activation="relu"),
layers.Dense(3, activation="relu"),
layers.Dense(4),
]
) # No weights at this stage!
# At this point, you can't do this:
# model.weights
# You also can't do this:
# model.summary()
# Call the model on a test input
x = tf.ones((1, 4))
y = model(x)
print("Number of weights after calling the model:", len(model.weights)) # 6
</div>
Once a model is "built", you can call its `summary()` method to display its
contents:
```python
model.summary()
</div>
However, it can be very useful when building a Sequential model incrementally
to be able to display the summary of the model so far, including the current
output shape. In this case, you should start your model by passing an `Input`
object to your model, so that it knows its input shape from the start:
```python
model = keras.Sequential()
model.add(keras.Input(shape=(4,)))
model.add(layers.Dense(2, activation="relu"))
model.summary()
</div>
Note that the `Input` object is not displayed as part of `model.layers`, since
it isn't a layer:
```python
model.layers
</div>
A simple alternative is to just pass an `input_shape` argument to your first
layer:
```python
model = keras.Sequential()
model.add(layers.Dense(2, activation="relu", input_shape=(4,)))
model.summary()
</div>
Models built with a predefined input shape like this always have weights (even
before seeing any data) and always have a defined output shape.
In general, it's a recommended best practice to always specify the input shape
of a Sequential model in advance if you know what it is.
---
## A common debugging workflow: `add()` + `summary()`
When building a new Sequential architecture, it's useful to incrementally stack
layers with `add()` and frequently print model summaries. For instance, this
enables you to monitor how a stack of `Conv2D` and `MaxPooling2D` layers is
downsampling image feature maps:
```python
model = keras.Sequential()
model.add(keras.Input(shape=(250, 250, 3))) # 250x250 RGB images
model.add(layers.Conv2D(32, 5, strides=2, activation="relu"))
model.add(layers.Conv2D(32, 3, activation="relu"))
model.add(layers.MaxPooling2D(3))
# Can you guess what the current output shape is at this point? Probably not.
# Let's just print it:
model.summary()
# The answer was: (40, 40, 32), so we can keep downsampling...
model.add(layers.Conv2D(32, 3, activation="relu"))
model.add(layers.Conv2D(32, 3, activation="relu"))
model.add(layers.MaxPooling2D(3))
model.add(layers.Conv2D(32, 3, activation="relu"))
model.add(layers.Conv2D(32, 3, activation="relu"))
model.add(layers.MaxPooling2D(2))
# And now?
model.summary()
# Now that we have 4x4 feature maps, time to apply global max pooling.
model.add(layers.GlobalMaxPooling2D())
# Finally, we add a classification layer.
model.add(layers.Dense(10))
</div>
Very practical, right?
---
## What to do once you have a model
Once your model architecture is ready, you will want to:
- Train your model, evaluate it, and run inference. See our
[guide to training & evaluation with the built-in loops](
/guides/training_with_built_in_methods/)
- Save your model to disk and restore it. See our
[guide to serialization & saving](/guides/serialization_and_saving/).
- Speed up model training by leveraging multiple GPUs. See our
[guide to multi-GPU and distributed training](https://keras.io/guides/distributed_training/).
---
## Feature extraction with a Sequential model
Once a Sequential model has been built, it behaves like a [Functional API
model](/guides/functional_api/). This means that every layer has an `input`
and `output` attribute. These attributes can be used to do neat things, like
quickly
creating a model that extracts the outputs of all intermediate layers in a
Sequential model:
```python
initial_model = keras.Sequential(
[
keras.Input(shape=(250, 250, 3)),
layers.Conv2D(32, 5, strides=2, activation="relu"),
layers.Conv2D(32, 3, activation="relu"),
layers.Conv2D(32, 3, activation="relu"),
]
)
feature_extractor = keras.Model(
inputs=initial_model.inputs,
outputs=[layer.output for layer in initial_model.layers],
)
# Call feature extractor on test input.
x = tf.ones((1, 250, 250, 3))
features = feature_extractor(x)
Here's a similar example that only extract features from one layer:
initial_model = keras.Sequential(
[
keras.Input(shape=(250, 250, 3)),
layers.Conv2D(32, 5, strides=2, activation="relu"),
layers.Conv2D(32, 3, activation="relu", name="my_intermediate_layer"),
layers.Conv2D(32, 3, activation="relu"),
]
)
feature_extractor = keras.Model(
inputs=initial_model.inputs,
outputs=initial_model.get_layer(name="my_intermediate_layer").output,
)
# Call feature extractor on test input.
x = tf.ones((1, 250, 250, 3))
features = feature_extractor(x)
Transfer learning consists of freezing the bottom layers in a model and only training the top layers. If you aren't familiar with it, make sure to read our guide to transfer learning.
Here are two common transfer learning blueprint involving Sequential models.
First, let's say that you have a Sequential model, and you want to freeze all
layers except the last one. In this case, you would simply iterate over
model.layers
and set layer.trainable = False
on each layer, except the
last one. Like this:
model = keras.Sequential([
keras.Input(shape=(784)),
layers.Dense(32, activation='relu'),
layers.Dense(32, activation='relu'),
layers.Dense(32, activation='relu'),
layers.Dense(10),
])
# Presumably you would want to first load pre-trained weights.
model.load_weights(...)
# Freeze all layers except the last one.
for layer in model.layers[:-1]:
layer.trainable = False
# Recompile and train (this will only update the weights of the last layer).
model.compile(...)
model.fit(...)
Another common blueprint is to use a Sequential model to stack a pre-trained model and some freshly initialized classification layers. Like this:
# Load a convolutional base with pre-trained weights
base_model = keras.applications.Xception(
weights='imagenet',
include_top=False,
pooling='avg')
# Freeze the base model
base_model.trainable = False
# Use a Sequential model to add a trainable classifier on top
model = keras.Sequential([
base_model,
layers.Dense(1000),
])
# Compile & train
model.compile(...)
model.fit(...)
If you do transfer learning, you will probably find yourself frequently using these two patterns.
That's about all you need to know about Sequential models!
To find out more about building models in Keras, see: