If you want to set specific learning rates for intervals of epochs like `0 < a < b < c < ...`

. Then you can define your learning rate as a conditional tensor, conditional on the global step, and feed this as normal to the optimiser.

You could achieve this with a bunch of nested `tf.cond`

statements, but its easier to build the tensor recursively:

```
def make_learning_rate_tensor(reduction_steps, learning_rates, global_step):
assert len(reduction_steps) + 1 == len(learning_rates)
if len(reduction_steps) == 1:
return tf.cond(
global_step < reduction_steps[0],
lambda: learning_rates[0],
lambda: learning_rates[1]
)
else:
return tf.cond(
global_step < reduction_steps[0],
lambda: learning_rates[0],
lambda: make_learning_rate_tensor(
reduction_steps[1:],
learning_rates[1:],
global_step,)
)
```

Then to use it you need to know how many training steps there are in a single epoch, so that we can use the global step to switch at the right time, and finally define the epochs and learning rates you want. So if I want the learning rates `[0.1, 0.01, 0.001, 0.0001]`

during the epoch intervals of `[0, 19], [20, 59], [60, 99], [100, \infty]`

respectively, I would do:

```
global_step = tf.train.get_or_create_global_step()
learning_rates = [0.1, 0.01, 0.001, 0.0001]
steps_per_epoch = 225
epochs_to_switch_at = [20, 60, 100]
epochs_to_switch_at = [x*steps_per_epoch for x in epochs_to_switch_at ]
learning_rate = make_learning_rate_tensor(epochs_to_switch_at , learning_rates, global_step)
```

afteryou specify your optimizer because some optimizers like AdamOptimizer uses its own variables that also need to be initialized. Otherwise you may get an error that looks like this:`FailedPreconditionError (see above for traceback): Attempting to use uninitialized value beta2_power`

`tf.train.GradientDescentOptimizer(new_lr).minimize(loss)`

. It seems, setting a new learning rate requires initializing the model with the already trained variables. But can't figure out how to do that.