tf.keras.legacy.saving.deserialize_keras_object | TensorFlow v2.16.1 (original) (raw)
tf.keras.legacy.saving.deserialize_keras_object
Stay organized with collections Save and categorize content based on your preferences.
Turns the serialized form of a Keras object back into an actual object.
View aliases
Main aliases
tf.keras.utils.legacy.deserialize_keras_object
tf.keras.legacy.saving.deserialize_keras_object(
identifier,
module_objects=None,
custom_objects=None,
printable_module_name='object'
)
This function is for mid-level library implementers rather than end users.
Importantly, this utility requires you to provide the dict ofmodule_objects
to use for looking up the object config; this is not populated by default. If you need a deserialization utility that has preexisting knowledge of built-in Keras objects, use e.g.keras.layers.deserialize(config), keras.metrics.deserialize(config), etc.
Calling deserialize_keras_object
while underneath theSharedObjectLoadingScope
context manager will cause any already-seen shared objects to be returned as-is rather than creating a new object.
Args | |
---|---|
identifier | the serialized form of the object. |
module_objects | A dictionary of built-in objects to look the name up in. Generally, module_objects is provided by midlevel library implementers. |
custom_objects | A dictionary of custom objects to look the name up in. Generally, custom_objects is provided by the end user. |
printable_module_name | A human-readable string representing the type of the object. Printed in case of exception. |
Returns |
---|
The deserialized object. |
Example:
A mid-level library implementer might want to implement a utility for retrieving an object from its config, as such:
def deserialize(config, custom_objects=None):
return deserialize_keras_object(
identifier,
module_objects=globals(),
custom_objects=custom_objects,
name="MyObjectType",
)
This is how e.g. keras.layers.deserialize() is implemented.