About Keras Models


There are two types of built-in models available in Keras: sequential models and models created with the functional API. In addition, you can also create custom models that define their own forward-pass logic.


Sequential models are created using the keras_model_sequential() function and are composed of a set of linear layers:

Note that Keras objects are modified in place which is why it’s not necessary for model to be assigned back to after the layers are added.

Learn more by reading the Guide to the Sequential Model.


The functional API enables you to define more complex models, such as multi-output models, directed acyclic graphs, or models with shared layers. To create a model with the functional API compose a set of input and output layers then pass them to the keras_model() function:

Learn more by reading the Guide to the Functional API.


Custom models enable you to implement custom forward-pass logic (e.g. to encapsulate the logic associated with constructuing various types of models). See the article on Writing Custom Keras Models for additional documentation, including an example that demonstrates creating a custom model that encapsulates a simple multi-layer-perceptron model with optional dropout and batch normalization layers.


All models share the following properties:


These functions enable you to create, train, evaluate, persist, and generate predictions with models:


Keras Model


Keras Model composed of a linear stack of layers


Configure a Keras model for training


Train a Keras model


Evaluate a Keras model


Predict Method for Keras Models


Print a summary of a model

save_model_hdf5() load_model_hdf5()

Save/Load models using HDF5 files


Retrieves a layer based on either its name (unique) or index.


Remove the last layer in a model

save_model_weights_hdf5() load_model_weights_hdf5()

Save/Load model weights using HDF5 files

get_weights() set_weights()

Layer/Model weights as R arrays

get_config() from_config()

Layer/Model configuration

model_to_json() model_from_json()

Model configuration as JSON

model_to_yaml() model_from_yaml()

Model configuration as YAML