I added a callback to decay the learning rate:

 keras.callbacks.ReduceLROnPlateau(monitor='val_loss', factor=0.5, patience=100, 
                                   verbose=0, mode='auto',epsilon=0.00002, cooldown=20, min_lr=0)

Here is my tensorboard callback:

keras.callbacks.TensorBoard(log_dir='./graph/rank{}'.format(hvd.rank()), histogram_freq=10, batch_size=FLAGS.batch_size,
                            write_graph=True, write_grads=True, write_images=False)

I want to make sure the learning rate scheduler has kicked in during training, so I want to output the learning rate onto tensorboard. But I can not find where I can set it.

I also checked the optimizer api, but no luck.

keras.optimizers.Adam(lr=0.001, beta_1=0.9, beta_2=0.999, epsilon=None, decay=0.0, amsgrad=False)

How can I output the learning rate to tensorboad?


According to the author of Keras, the proper way is to subclass the TensorBoard callback:

from keras import backend as K
from keras.callbacks import TensorBoard

class LRTensorBoard(TensorBoard):
    # add other arguments to __init__ if you need
    def __init__(self, log_dir, **kwargs):
        super().__init__(log_dir=log_dir, **kwargs)

    def on_epoch_end(self, epoch, logs=None):
        logs = logs or {}
        logs.update({'lr': K.eval(self.model.optimizer.lr)})
        super().on_epoch_end(epoch, logs)

Then pass it as part of the callbacks argument to model.fit (credit Finncent Price):

model.fit(x=..., y=..., callbacks=[LRTensorBoard(log_dir="/tmp/tb_log")])
  • Note that @alkamid's answer is for python 3, if you are in python 2, you'll need to pass the CHILD class name and the current instance to super. For this particular example super() -> super(LRTensorBoard,self) works. Answer explaining this syntactic difference can be found here: stackoverflow.com/questions/30633889/… Feb 20 '19 at 14:43
  • 2
    Instructions for how to use this callback in Keras inside the fit method of your model are as follows. Supply a list of callbacks to the callbacks variable like so: model.fit(x=something,y=something,callbacks=[LRTensorboard(log_dir='path_to_log_dir')]) Feb 20 '19 at 14:47
  • logs = logs or {}; logs.update(lr=K.eval(self.model.optimizer.lr)) this is better, cause logs, could be None
    – Khan
    Aug 26 '19 at 16:43
  • 1
    I would add ` def init__(self, **kwargs): # add other arguments to __init if you need super().__init__(**kwargs) ` for the function not to block other arguments to tensorboard. Sep 24 '19 at 13:07
  • 1
    @Khan I'm not sure where the logs=None convention is coming from, but Keras/TensorFlow tutorials seem to be using it.
    – alkamid
    Sep 27 '19 at 14:09

Note that with the current nightly version of tf (2.5 - probably earlier) learning rates using LearningRateSchedule are automatically added to tensorboard's logs. The following solution is only necessary if you're adapting the learning rate some other way - e.g. via ReduceLROnPlateau or LearningRateScheduler (different to LearningRateSchedule) callbacks.

While extending tf.keras.callbacks.TensorBoard is a viable option, I prefer composition over subclassing.

class LearningRateLogger(tf.keras.callbacks.Callback):
    def __init__(self):
        self._supports_tf_logs = True

    def on_epoch_end(self, epoch, logs=None):
        if logs is None or "learning_rate" in logs:
        logs["learning_rate"] = self.model.optimizer.lr

This allows us to compose multiple similar callbacks, and use the logged learning rate in multiple other callbacks (e.g. if you add a CSVLogger it should also write the learning rate values to file).

Then in model.fit

        # other callbacks that update `logs`
        # other callbacks that use updated logs, e.g. CSVLogger

You gave the optimizer's code twice, instead of TensorBoard Callback. Anyway, I didn`t find the way to display the learning rate on TensorBoard. I am plotting it after the training finished, taking data from History object:

nb_epoch = len(history1.history['loss'])
plt.xlabel('num of Epochs')
plt.ylabel('learning rate')
plt.title('Learning rate')

The chart looks like this: LR plot

Sorry, that is not exactly what you are asking about, but perhaps could help.

  • sorry for the error. your solution is good, but don't work for me if I want monitor a training process that will take a long time. Mar 8 '18 at 1:57
class XTensorBoard(TensorBoard):
    def on_epoch_begin(self, epoch, logs=None):
        # get values
        lr = float(K.get_value(self.model.optimizer.lr))
        decay = float(K.get_value(self.model.optimizer.decay))
        # computer lr
        lr = lr * (1. / (1 + decay * epoch))
        K.set_value(self.model.optimizer.lr, lr)

    def on_epoch_end(self, epoch, logs=None):
        logs = logs or {}
        logs['lr'] = K.get_value(self.model.optimizer.lr)
        super().on_epoch_end(epoch, logs)

callbacks_list = [XTensorBoard('./logs')]
model.fit(X_train, y_train, validation_data=(X_test, y_test), epochs=20, batch_size=32, verbose=2, callbacks=callbacks_list)

lr curve in tensorboard

  • Code only answers are really discouraged. Please provide explanation what you are doing too! Nov 3 '18 at 3:21

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