Strip pruning wrappers from the model.
tfmot.sparsity.keras.strip_pruning(
model
)
Used in the notebooks
Once a model has been pruned to required sparsity, this method can be used
to restore the original model with the sparse weights.
Only sequential and functional models are supported for now.
Returns |
A keras model with pruning wrappers removed.
|
Raises |
ValueError
|
if the model is not a tf.keras.Model instance.
|
NotImplementedError
|
if the model is a subclass model.
|
Usage:
orig_model = tf.keras.Model(inputs, outputs)
pruned_model = prune_low_magnitude(orig_model)
exported_model = strip_pruning(pruned_model)
The exported_model and the orig_model share the same structure.