tf.keras.models.save_model

Saves a model as a TensorFlow SavedModel or HDF5 file.

See the Serialization and Saving guide for details.

Usage:

model = tf.keras.Sequential([
    tf.keras.layers.Dense(5, input_shape=(3,)),
    tf.keras.layers.Softmax()])
model.save('/tmp/model')
loaded_model = tf.keras.models.load_model('/tmp/model')
x = tf.random.uniform((10, 3))
assert np.allclose(model.predict(x), loaded_model.predict(x))

The SavedModel and HDF5 file contains:

  • the model's configuration (topology)
  • the model's weights
  • the model's optimizer's state (if any)

Thus models can be reinstantiated in the exact same state, without any of the code used for model definition or training.

Note that the model weights may have different scoped names after being loaded. Scoped names include the model/layer names, such as "dense_1/kernel:0". It is recommended that you use the layer properties to access specific variables, e.g. model.get_layer("dense_1").kernel.

SavedModel serialization format

Keras SavedModel uses tf.saved_model.save to save the model and all trackable objects attached to the model (e.g. layers and variables). The model config, weights, and optimizer are saved in the SavedModel. Additionally, for every Keras layer attached to the model, the SavedModel stores:

  • the config and metadata -- e.g. name, dtype, trainable status
  • traced call and loss functions, which are stored as TensorFlow subgraphs.

The traced functions allow the SavedModel format to save and load custom layers without the original class definition.

You can choose to not save the traced functions by disabling the save_traces option. This will decrease the time it takes to save the model and the amount of disk space occupied by the output SavedModel. If you enable this option, then you must provide all custom class definitions when loading the model. See the custom_objects argument in tf.keras.models.load_model.

model Keras model instance to be saved.
filepath One of the following:

  • String or pathlib.Path object, path where to save the model
  • h5py.File object where to save the model
overwrite Whether we should overwrite any existing model at the target location, or instead ask the user with a manual prompt.
include_optimizer If True, save optimizer's state together.
save_format Either 'tf' or 'h5', indicating whether to save the model to Tensorflow SavedModel or HDF5. Defaults to 'tf' in TF 2.X, and 'h5' in TF 1.X.
signatures Signatures to save with the SavedModel. Applicable to the 'tf' format only. Please see the signatures argument in tf.saved_model.save for details.
options (only applies to SavedModel format) tf.saved_model.SaveOptions object that specifies options for saving to SavedModel.
save_traces (only applies to SavedModel format) When enabled, the SavedModel will store the function traces for each layer. This can be disabled, so that only the configs of each layer are stored. Defaults to True. Disabling this will decrease serialization time and reduce file size, but it requires that all custom layers/models implement a get_config() method.

ImportError If save format is hdf5, and h5py is not available.