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tfa.callbacks.AverageModelCheckpoint
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The callback that saves average model weights.
tfa.callbacks.AverageModelCheckpoint(
update_weights: bool,
filepath: str,
monitor: str = 'val_loss',
verbose: int = 0,
save_best_only: bool = False,
save_weights_only: bool = False,
mode: str = 'auto',
save_freq: str = 'epoch',
**kwargs
)
Used in the notebooks
The callback that should be used with optimizers that extend
tfa.optimizers.AveragedOptimizerWrapper
, i.e.,
tfa.optimizers.MovingAverage
and
tfa.optimizers.StochasticAverage
optimizers.
It saves and, optionally, assigns the averaged weights.
Args |
update_weights
|
If True , assign the moving average weights
to the model, and save them. If False, keep the old
non-averaged weights, but the saved model uses the
average weights.
See tf.keras.callbacks.ModelCheckpoint for the other args.
|
Methods
set_model
View source
set_model(
model
)
set_params
set_params(
params
)
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Last updated 2023-05-25 UTC.
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