# Getting the current learning rate from a tf.train.AdamOptimizer

I'd like print out the learning rate for each training step of my nn.

I know that Adam has an adaptive learning rate, but is there a way i can see this (for visualization in tensorboard)

• By quickly reading the code, you can get tr: print sess.run(adam_op._lr_t), after having adam_op = tf.train.AdamOptimizer(0.1, beta1=0.5, beta2=0.5) , train_op = adam_op.minimize(cost). However, it's not sure its working in your code. Can you qickly test? – Sung Kim May 2 '16 at 22:19
• Side note: The right way to think about adam is not as learning rate (scaling the gradients), but as a step size. The `learning_rate` you pass in is the maximum step size (per parameter), Adam takes steps up to that size, depending on how consistent the gradient is. – mdaoust Apr 23 '17 at 20:56
• OK @mdaoust, but then how can I obtain the learning rate at each step? I tried Sung Kim suggestion but does not work, as it returns a flat line. Thanks. – Escachator Apr 29 '17 at 15:13

All the optimizers have a private variable that holds the value of a learning rate.

In adagrad and gradient descent it is called `self._learning_rate`. In adam it is `self._lr`.

So you will just need to print `sess.run(optimizer._lr)` to get this value. Sess.run is needed because they are tensors.

• Note in tf2.x, with a learning rate schedule in use, you should use: (for ADAM) `lr = optimizer._decayed_lr(tf.float32)` – Gouda Nov 4 '19 at 6:19

Sung Kim suggestion worked for me, my exact steps were:

``````lr = 0.1
step_rate = 1000
decay = 0.95

global_step = tf.Variable(0, trainable=False)
increment_global_step = tf.assign(global_step, global_step + 1)
learning_rate = tf.train.exponential_decay(lr, global_step, step_rate, decay, staircase=True)

trainer = optimizer.minimize(loss_function)

# Some code here

print('Learning rate: %f' % (sess.run(trainer ._lr)))
``````
• I use `GradientDescentOptimizer` and use `self._learning_rate`. It does not work for me. I get error `AttributeError: 'Operation' object has no attribute '_learning_rate'` – ARAT May 27 '18 at 4:01

I think the easiest thing you can do is subclass the optimizer.

It has several methods, that I guess get dispatched to based on variable type. Regular Dense variables seem to go through `_apply_dense`. This solution won't work for sparse or other things.

If you look at the implementation you can see that it's storing the `m` and `t` EMAs in these "slots". So something like this seems do it:

``````class MyAdam(tf.train.AdamOptimizer):
m = self.get_slot(var, "m")
v = self.get_slot(var, "v")

m_hat = m/(1-self._beta1_power)
v_hat = v/(1-self._beta2_power)

step = m_hat/(v_hat**0.5 + self._epsilon_t)

# Use a histogram summary to monitor it during training.
tf.summary.histogram("hist", step)

``````

`step` here will be in the interval [-1,1], that's what gets multiplied by the learning rate, to determines the actual step applied to the parameters.

There's often no node in the graph for it because there is one big `training_ops.apply_adam` that does everything.

Here I'm just creating a histogram summary from it. But you could stick it in a dictionary attached to the object and read it later or do whatever you want with it.

Droping that into `mnist_deep.py`, and adding some summaries to the training loop:

``````all_summaries = tf.summary.merge_all()
with tf.Session() as sess:
sess.run(tf.global_variables_initializer())
for i in range(20000):
batch = mnist.train.next_batch(50)
if i % 100 == 0:
train_accuracy,summaries = sess.run(
[accuracy,all_summaries],
feed_dict={x: batch, y_: batch,
keep_prob: 1.0})
print('step %d, training accuracy %g' % (i, train_accuracy))
train_step.run(feed_dict={x: batch, y_: batch, keep_prob: 0.5})
``````

Produces the following figure in TensorBoard: • Due to resource constraint I have to explicitly place my network onto different GPUs, and this subclassing hack gives me an error: `Could not satisfy explicit device specification '/device:GPU:1' because no supported kernel for GPU devices is available`. Removing the `tf.summary.histogram` line will remove the complaint. – ziyuang Jan 24 '18 at 15:04
• Later versions of Tensorflow have a slightly different way of accessing the beta variables. – Kevin Jan 28 '20 at 23:35

In TensorFlow sources current lr for Adam optimizer calculates like:

``````    lr = (lr_t * math_ops.sqrt(1 - beta2_power) / (1 - beta1_power))
``````

So, try it:

``````    current_lr = (optimizer._lr_t * tf.sqrt(1 -
optimizer._beta2_power) / (1 - optimizer._beta1_power))

eval_current_lr = sess.run(current_lr)
``````
• in the code your beta2_power and beta1_power seems to be switched , compared to the tf sources you wrote above – omer schleifer May 22 '19 at 8:03

In `Tensorflow 2`:

``````optimizer = tf.keras.optimizers.Adagrad(learning_rate=0.1)  # or any other optimizer
print(optimizer.learning_rate.numpy())  # or print(optimizer.lr.numpy())
``````

Note: This gives you the base learning rate. Refer to this answer for more details on adaptive learning rates.