ModelCheckpoint classtf_keras.callbacks.ModelCheckpoint(
filepath,
monitor: str = "val_loss",
verbose: int = 0,
save_best_only: bool = False,
save_weights_only: bool = False,
mode: str = "auto",
save_freq="epoch",
options=None,
initial_value_threshold=None,
**kwargs
)
Callback to save the TF-Keras model or model weights at some frequency.
ModelCheckpoint callback is used in conjunction with training using
model.fit() to save a model or weights (in a checkpoint file) at some
interval, so the model or weights can be loaded later to continue the
training from the state saved.
A few options this callback provides include:
Note: If you get WARNING:tensorflow:Can save best model only with <name>
available, skipping see the description of the monitor argument for
details on how to get this right.
Example
model.compile(loss=..., optimizer=...,
metrics=['accuracy'])
EPOCHS = 10
checkpoint_filepath = '/tmp/checkpoint'
model_checkpoint_callback = tf.keras.callbacks.ModelCheckpoint(
filepath=checkpoint_filepath,
save_weights_only=True,
monitor='val_accuracy',
mode='max',
save_best_only=True)
# Model weights are saved at the end of every epoch, if it's the best seen
# so far.
model.fit(epochs=EPOCHS, callbacks=[model_checkpoint_callback])
# The model weights (that are considered the best) are loaded into the
# model.
model.load_weights(checkpoint_filepath)
Arguments
PathLike, path to save the model file. e.g.
filepath = os.path.join(working_dir, 'ckpt', file_name). filepath
can contain named formatting options, which will be filled the value
of epoch and keys in logs (passed in on_epoch_end). For example:
if filepath is weights.{epoch:02d}-{val_loss:.2f}.hdf5, then the
model checkpoints will be saved with the epoch number and the
validation loss in the filename. The directory of the filepath should
not be reused by any other callbacks to avoid conflicts.monitor: The metric name to monitor. Typically the metrics are set by
the Model.compile method. Note:
"val_" to monitor validation metrics."loss" or "val_loss" to monitor the model's total loss."accuracy", pass the same
string (with or without the "val_" prefix).metrics.Metric objects, monitor should be set to
metric.namehistory.history dictionary returned by
history = model.fit()save_best_only=True, it only saves when the model
is considered the "best" and the latest best model according to the
quantity monitored will not be overwritten. If filepath doesn't
contain formatting options like {epoch} then filepath will be
overwritten by each new better model.save_best_only=True, the
decision to overwrite the current save file is made based on either
the maximization or the minimization of the monitored quantity.
For val_acc, this should be max, for val_loss this should be
min, etc. In auto mode, the mode is set to max if the quantities
monitored are 'acc' or start with 'fmeasure' and are set to min for
the rest of the quantities.model.save_weights(filepath)), else the full model is saved
(model.save(filepath)).'epoch' or integer. When using 'epoch', the callback
saves the model after each epoch. When using integer, the callback
saves the model at end of this many batches. If the Model is
compiled with steps_per_execution=N, then the saving criteria will
be checked every Nth batch. Note that if the saving isn't aligned to
epochs, the monitored metric may potentially be less reliable (it
could reflect as little as 1 batch, since the metrics get reset every
epoch). Defaults to 'epoch'.tf.train.CheckpointOptions object if
save_weights_only is true or optional tf.saved_model.SaveOptions
object if save_weights_only is false.save_best_value=True. Only
overwrites the model weights already saved if the performance of
current model is better than this value.period.