I cannot seem to get the value of learning rate. What I get is below.

I've tried the model for 200 epochs and want to see/change the learning rate. Is this not the correct way?

>>> print(ig_cnn_model.optimizer.lr)
<tf.Variable 'lr_6:0' shape=() dtype=float32_ref>
  • See this.
    – Autonomous
    Apr 11, 2018 at 22:59
  • 1
    @ParagS.Chandakkar Already saw that before I posted here. For them it returns a values, AFIK.
    – user14492
    Apr 11, 2018 at 23:03

7 Answers 7


Use eval() from keras.backend:

import keras.backend as K
from keras.models import Sequential
from keras.layers import Dense

model = Sequential()
model.add(Dense(1, input_shape=(1,)))
model.compile(loss='mse', optimizer='adam')



  • 2
    What if I want to reset the learning rate? e.g. something like model.optimizer.lr=10?
    – Zach
    Sep 18, 2018 at 21:32
  • Or model.optimizer.lr.numpy() in recent tensorflow versions. lr is just a variable, so assigning it works as usual: model.optimizer.lr.assign(0.1)
    – hoefling
    Nov 26, 2020 at 14:04

The best way to get all information related to the optimizer would be with .get_config().




>>> {'name': 'Adam', 'learning_rate': 0.001, 'decay': 0.0, 'beta_1': 0.9, 'beta_2': 0.999, 'epsilon': 1e-07, 'amsgrad': False}

It returns a dict with all information.


You can change your learning rate by

from keras.optimizers import Adam

  • 14
    Op was asking how to GET the learning rate. Not set. Note that Keras allow dynamical changing of lr, so it's possible that you want to know the lr at a later stage after a few epochs of training
    – Danny Wang
    Jan 24, 2019 at 19:44

With Tensorflow >=2.0:

In [1]: import tensorflow as tf

In [2]: opt = tf.keras.optimizers.Adam()

In [3]: opt.lr.numpy()
Out[3]: 0.001

lr is just a tf.Variable, so its value can be changed via assign() method:

In [4]: opt.lr.assign(0.1)
Out[4]: <tf.Variable 'UnreadVariable' shape=() dtype=float32, numpy=0.1>

In [5]: opt.lr.numpy()
Out[5]: 0.1

Same goes with the rest of hyperparameters:

In [6]: opt.decay.numpy()
Out[6]: 0.0

In [7]: opt.beta_1.numpy()
Out[7]: 0.9

In [8]: opt.beta_2.numpy()
Out[8]: 0.999

An alternate way:

  1. create an optimizer instance

opt = keras.optimizers.SGD()

  1. get the learning rate from the instance

print('learning rate={}'.format(opt.lr.numpy()))

  1. use the optimizer in the model

model.compile(optimizer = opt, ...)


Some of the optimizers don't include their names in the configs.

Here is a complete example on how to get the configs and how to reconstruct (i.e. clone) the optimizer from their configs (which includes the learning rate as well).

import keras.optimizers as opt

def get_opt_config(optimizer):
    Extract Optimizer Configs from an instance of
    keras Optimizer
    :param optimizer: instance of keras Optimizer.
    :return: dict of optimizer configs.
    if not isinstance(optimizer, opt.Optimizer):
        raise TypeError('optimizer should be instance of '
                        'keras.optimizers.Optimizer '
                        'Got {}.'.format(type(optimizer)))
    opt_config = optimizer.get_config()
    if 'name' not in opt_config.keys():
        _name = str(optimizer.__class__).split('.')[-1] \
            .replace('\'', '').replace('>', '')
        opt_config.update({'name': _name})
    return opt_config

def clone_opt(opt_config):
    Clone keras optimizer from its configurations.
    :param opt_config: dict, keras optimizer configs.
    :return: instance of keras optimizer.
    if not isinstance(opt_config, dict):
        raise TypeError('opt_config must be a dict. '
                        'Got {}'.format(type(opt_config)))
    if 'name' not in opt_config.keys():
        raise ValueError('could not find the name of optimizer in opt_config')
    name = opt_config.get('name')
    params = {k: opt_config[k] for k in opt_config.keys() if k != 'name'}
    if name.upper() == 'ADAM':
        return opt.Adam(**params)
    if name.upper() == 'NADAM':
        return opt.Nadam(**params)
    if name.upper() == 'ADAMAX':
        return opt.Adamax(**params)
    if name.upper() == 'ADADELTA':
        return opt.Adadelta(**params)
    if name.upper() == 'ADAGRAD':
        return opt.Adagrad(**params)
    if name.upper() == 'RMSPROP':
        return opt.RMSprop()
    if name.upper() == 'SGD':
        return opt.SGD(**params)
    raise ValueError('Unknown optimizer name. Available are: '
                     '(\'adam\',\'sgd\', \'rmsprop\', \'adagrad\', '
                     '\'adadelta\', \'adamax\', \'nadam\'). '
                     'Got {}.'.format(name))


if __name__ == '__main__':
    rmsprop = opt.RMSprop()
    configs = get_opt_config(rmsprop)
    cloned_rmsprop = clone_opt(configs)


{'lr': 0.0010000000474974513, 'rho': 0.8999999761581421, 'decay': 0.0, 'epsilon': 1e-07, 'name': 'RMSprop'}
<keras.optimizers.RMSprop object at 0x7f96370a9358>
{'lr': 0.0010000000474974513, 'rho': 0.8999999761581421, 'decay': 0.0, 'epsilon': 1e-07}
  • 1
    str(optimizer.__class__).split(..)... -> optimizer.__class__.__name__
    – hoefling
    Nov 26, 2020 at 13:58

If you're using a learning rate schedule in tf2 and want to access the learning rate while the model is training, you can define a custom callback. This is an example for a callback which prints the learning rate at every epoch:

from tensorflow.keras.callbacks import Callback

class PrintLearningRate(Callback):
    def __init__(self):

    def on_epoch_begin(self, epoch, logs=None):
        lr = K.eval(self.model.optimizer._decayed_lr(tf.float64)
        print("\nLearning rate at epoch {} is {}".format(epoch, lr)))

Notice how for learning rate schedulers, in tf2 the learning rate can be accessed via _decayed_lr().

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