66

Currently I use the following code:

callbacks = [
    EarlyStopping(monitor='val_loss', patience=2, verbose=0),
    ModelCheckpoint(kfold_weights_path, monitor='val_loss', save_best_only=True, verbose=0),
]
model.fit(X_train.astype('float32'), Y_train, batch_size=batch_size, nb_epoch=nb_epoch,
      shuffle=True, verbose=1, validation_data=(X_valid, Y_valid),
      callbacks=callbacks)

It tells Keras to stop training when loss didn't improve for 2 epochs. But I want to stop training after loss became smaller than some constant "THR":

if val_loss < THR:
    break

I've seen in documentation there are possibility to make your own callback: http://keras.io/callbacks/ But nothing found how to stop training process. I need an advice.

65

I found the answer. I looked into Keras sources and find out code for EarlyStopping. I made my own callback, based on it:

class EarlyStoppingByLossVal(Callback):
    def __init__(self, monitor='val_loss', value=0.00001, verbose=0):
        super(Callback, self).__init__()
        self.monitor = monitor
        self.value = value
        self.verbose = verbose

    def on_epoch_end(self, epoch, logs={}):
        current = logs.get(self.monitor)
        if current is None:
            warnings.warn("Early stopping requires %s available!" % self.monitor, RuntimeWarning)

        if current < self.value:
            if self.verbose > 0:
                print("Epoch %05d: early stopping THR" % epoch)
            self.model.stop_training = True

And usage:

callbacks = [
    EarlyStoppingByLossVal(monitor='val_loss', value=0.00001, verbose=1),
    # EarlyStopping(monitor='val_loss', patience=2, verbose=0),
    ModelCheckpoint(kfold_weights_path, monitor='val_loss', save_best_only=True, verbose=0),
]
model.fit(X_train.astype('float32'), Y_train, batch_size=batch_size, nb_epoch=nb_epoch,
      shuffle=True, verbose=1, validation_data=(X_valid, Y_valid),
      callbacks=callbacks)
  • Just if it will be useful for someone - in my case I used monitor='loss', it worked well. – QtRoS Feb 18 '17 at 9:24
  • 11
    It seems Keras has been updated. The EarlyStopping callback function has min_delta built into it now. No need to hack the source code anymore, yay! stackoverflow.com/a/41459368/3345375 – jkdev Jun 21 '17 at 4:22
  • 1
    Upon re-reading the question and answers, I need to correct myself: min_delta means "Stop early if there is not enough improvement per epoch (or per multiple epochs)." However, the OP asked how to "Stop early when the loss gets below a certain level." – jkdev Jun 22 '17 at 1:49
  • NameError: name 'Callback' is not defined... How will I fix it? – Eliyah Nov 26 '18 at 10:13
  • Eliyah try this: from keras.callbacks import Callback – ZFTurbo Nov 28 '18 at 20:39
23

The keras.callbacks.EarlyStopping callback does have a min_delta argument. From Keras documentation:

min_delta: minimum change in the monitored quantity to qualify as an improvement, i.e. an absolute change of less than min_delta, will count as no improvement.

  • 2
    For reference, here are the docs for an earlier version of Keras (1.1.0) in which the min_delta argument was not yet included: faroit.github.io/keras-docs/1.1.0/callbacks/#earlystopping – jkdev Jun 21 '17 at 4:35
  • how could I make it not stop until min_delta persists over multiple epochs? – zyxue Apr 18 '18 at 19:44
  • there's another parameter to EarlyStopping called patience: number of epochs with no improvement after which training will be stopped. – devin Apr 18 '18 at 21:39
11

One solution is to call model.fit(nb_epoch=1, ...) inside a for loop, then you can put a break statement inside the for loop and do whatever other custom control flow you want.

  • It'd be nice if they made a callback that takes in a single function that can do that. – Honesty Aug 26 '16 at 20:48
1

I am bit late to answer XD. But I solved the same problem using custom callback.

In the following custom callback code assign THR with the value at which you want to stop training and add the callback to your model.

from keras.callbacks import Callback

class stopAtLossValue(Callback):

        def on_batch_end(self, batch, logs={}):
            THR = 0.03 #Assign THR with the value at which you want to stop training.
            if logs.get('loss') <= THR:
                 self.model.stop_training = True

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