52

I'm trying to change the learning rate of my model after it has been trained with a different learning rate.

I read here, here, here and some other places i can't even find anymore.

I tried:

model.optimizer.learning_rate.set_value(0.1)
model.optimizer.lr = 0.1
model.optimizer.learning_rate = 0.1
K.set_value(model.optimizer.learning_rate, 0.1)
K.set_value(model.optimizer.lr, 0.1)
model.optimizer.lr.assign(0.1)

... but none of them worked! I don't understand how there could be such confusion around such a simple thing. Am I missing something?

EDIT: Working example

Here is a working example of what I'd like to do:

from keras.models import Sequential
from keras.layers import Dense
import keras
import numpy as np

model = Sequential()

model.add(Dense(1, input_shape=(10,)))

optimizer = keras.optimizers.Adam(lr=0.01)
model.compile(loss='mse',
              optimizer=optimizer)

model.fit(np.random.randn(50,10), np.random.randn(50), epochs=50)

# Change learning rate to 0.001 and train for 50 more epochs

model.fit(np.random.randn(50,10), np.random.randn(50), initial_epoch=50, epochs=50)
4
  • 2
    model.compile(loss='binary_crossentropy', optimizer=Adam(LEARNING_RATE), metrics=['accuracy'])
    – Kenan
    Jan 14, 2020 at 16:28
  • 2
    Sorry. I explained better in the body: I want to change it AFTER it has already been partially trained.
    – Luca
    Jan 14, 2020 at 16:30
  • 2
    I think it could be usefull to add complet model code and describe at least for one of your link, what is the problem/error message
    – akhetos
    Jan 14, 2020 at 16:32
  • 1
    You can extend LearningRateSchedule to implement your own LR Decay method. See my comment here: stackoverflow.com/a/64731634/3010217
    – Begoodpy
    Nov 7, 2020 at 19:38

6 Answers 6

62

You can change the learning rate as follows:

from keras import backend as K
K.set_value(model.optimizer.learning_rate, 0.001)

Included into your complete example it looks as follows:

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

model = Sequential()

model.add(Dense(1, input_shape=(10,)))

optimizer = keras.optimizers.Adam(lr=0.01)
model.compile(loss='mse', optimizer=optimizer)

print("Learning rate before first fit:", model.optimizer.learning_rate.numpy())

model.fit(np.random.randn(50,10), np.random.randn(50), epochs=50, verbose=0)

# Change learning rate to 0.001 and train for 50 more epochs
K.set_value(model.optimizer.learning_rate, 0.001)
print("Learning rate before second fit:", model.optimizer.learning_rate.numpy())

model.fit(np.random.randn(50,10), 
          np.random.randn(50), 
          initial_epoch=50, 
          epochs=50,
          verbose=0)

I've just tested this with keras 2.3.1. Not sure why the approach didn't seem to work for you.

41

There is another way, you have to find the variable that holds the learning rate and assign it another value.

optimizer = tf.keras.optimizers.Adam(0.001)
optimizer.learning_rate.assign(0.01)
print(optimizer.learning_rate)

output:

<tf.Variable 'learning_rate:0' shape=() dtype=float32, numpy=0.01>
2
  • 6
    This should be the accepted answer; no need for extra imports and much more elegant
    – alan.elkin
    Mar 3, 2021 at 16:33
  • 2
    This does not seem to work in graph mode
    – mafu
    Sep 26, 2021 at 21:48
19

You can change lr during training with

from keras.callbacks import LearningRateScheduler

# This is a sample of a scheduler I used in the past
def lr_scheduler(epoch, lr):
    decay_rate = 0.85
    decay_step = 1
    if epoch % decay_step == 0 and epoch:
        return lr * pow(decay_rate, np.floor(epoch / decay_step))
    return lr

Apply scheduler to your model

callbacks = [LearningRateScheduler(lr_scheduler, verbose=1)]

model = build_model(pretrained_model=ka.InceptionV3, input_shape=(224, 224, 3))
history = model.fit(train, callbacks=callbacks, epochs=EPOCHS, verbose=1)
4
  • 2
    Is the callback the only strategy? I understand that it is a POSSIBLE strategy, but is it the only one? Does a manual way of changing it exist?
    – Luca
    Jan 14, 2020 at 16:51
  • 1
    the callback is the manual way, you can change lr on each epoch. The most manual way would be a for loop but im not sure what the gain is there
    – Kenan
    Jan 14, 2020 at 17:07
  • 1
    if that's all you need please don't forget to accept_the_answer
    – Kenan
    Jan 14, 2020 at 21:49
  • 1
    Maybe your code to update lr is incorrect.You may want to decay lr with 'decay_rate' every 'decay_step' epoch, so the updating code should be: return lr * decay_rate May 17, 2023 at 8:55
10

You should define it in the compile function :

optimizer = keras.optimizers.Adam(lr=0.01)
model.compile(loss='mse',
              optimizer=optimizer,
              metrics=['categorical_accuracy'])

Looking at your comment, if you want to change the learning rate after the beginning you need to use a scheduler : link

Edit with your code and scheduler:

from keras.models import Sequential
from keras.layers import Dense
import keras
import numpy as np

def lr_scheduler(epoch, lr):
    if epoch > 50:
        lr = 0.001
        return lr
    return lr

model = Sequential()

model.add(Dense(1, input_shape=(10,)))

optimizer = keras.optimizers.Adam(lr=0.01)
model.compile(loss='mse',
              optimizer=optimizer)

callbacks = [keras.callbacks.LearningRateScheduler(lr_scheduler, verbose=1)]

model.fit(np.random.randn(50,10), np.random.randn(50), epochs=100, callbacks=callbacks)

3

Suppose that you use Adam optimizer in keras, you'd want to define your optimizer before you compile your model with it.

For example, you can define

myadam = keras.optimizers.Adam(learning_rate=0.1)

Then, you compile your model with this optimizer.

I case you want to change your optimizer (with different type of optimizer or with different learning rate), you can define a new optimizer and compile your existing model with the new optimizer.

Hope this helps!

1
  • If I understand correctly, recompiling the network will loss the partially trained weights.
    – User 10482
    Nov 15, 2021 at 5:05
0

Some time ago I had a project for which I needed something similar. My idea to change the learning rate was to compile a new model with the new rate, then load the parameter weights from de old model to the new one.

For your example:

from keras.models import Sequential
from keras.layers import Dense
import keras
import numpy as np


# Initial model

model = Sequential()
model.add(Dense(1, input_shape=(10,)))

optimizer = keras.optimizers.Adam(lr=0.01)
model.compile(loss='mse', optimizer=optimizer)

model.fit(np.random.randn(50,10), np.random.randn(50), epochs=50)


# Change learning rate to 0.001 and train for 50 more epochs

new_model = Sequential()
new_model.add(Dense(1, input_shape=(10,)))

optimizer = keras.optimizers.Adam(lr=0.001)
new_model.compile(loss='mse', optimizer=optimizer)

new_model.set_weights(model.get_weights())
model = new_model

model.fit(np.random.randn(50,10), np.random.randn(50), initial_epoch=50, epochs=50)

With this you could see a worse fit of your model in the first epochs because ADAM uses previous steps to optimize and you will lose them.

Hope it helps someone!

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